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Combined petroleum system modeling and GCxGC to improve understanding of the crude oil chemistry in the Llanos Basin, Colombia Attila Bartha, Nelly De Nicolais, Vinod Sharma, S.K. Roy, Rajiv Srivastava, Andrew E Pomerantz, Milton Sanclemente, Wilmar Perez, Robert K. Nelson, Christopher M. Reddy, Jonas Gros, J. Samuel Arey, Jaron Lelijveld, Sharad Dubey, Diego Tortella, Thomas Hantschel, Kenneth E. Peters, and Oliver C. Mullins Energy Fuels, Just Accepted Manuscript • DOI: 10.1021/acs.energyfuels.5b00529 • Publication Date (Web): 15 Jun 2015 Downloaded from http://pubs.acs.org on June 16, 2015
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Combined petroleum system modeling and GCxGC to improve
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understanding of the crude oil chemistry in the Llanos Basin, Colombia
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Attila Bartha , Nelly De Nicolais , Vinod Sharma , S.K. Roy , Rajiv Srivastava ,
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Andrew E. Pomerantz , Milton Sanclemente , Wilmar Perez , Robert K. Nelson ,
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Christopher M. Reddy , Jonas Gros , J. Samuel Arey , Jaron Lelijveld , Sharad
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Dubey , Diego Tortella , Thomas Hantschel , Kenneth E. Peters , Oliver C.
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Mullins*,4
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1. Schlumberger, Mexico City, Mexico, Distrito Federal 11570
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2. Schlumberger, Colombia, Bogota, D.C., Colombia,
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3. ONGC Videsh, Colombia, Bogota, D.C., Colombia
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4. Schlumberger-Doll Research, Boston, MA, USA, 02139
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5. Woods Hole Oceanographic Institution, Woods Hole, MA, 02543
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6. Swiss Federal Institute of Technology at Lausanne, (EPFL), Lausanne,
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Switzerland
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7. Schlumberger, IES, Aachen, Germany
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8. Schlumberger, SIS, CA, USA, 94941
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Abstract
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Important properties of a crude oil such as viscosity are determined by the crude oil
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chemical constituents. In particular, viscosity is highly dependent on the asphaltene
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content. Various processes that act on reservoir crude oils can alter chemical
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composition such as aspahltene content and therefore impact important crude oil
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properties. In many basins, such as the Llanos basin, Colombia, processes such as
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biodegradation, water washing and multiple charging can contribute to asphaltene
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and viscosity variations. The considerable complexity of the problem requires a
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multidisciplinary workflow to understand the main factors that influence the
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quality of reservoir crude oils and their gradients. Here, we perform comprehensive
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two-dimensional gas chromatography with flame ionization detection (GCxGC-FID)
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and with mass spectrometry (GCxGC-MS) performed on samples of known
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provenance combined with petroleum system modeling to develop an understanding
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of the primary factors controlling asphaltene content and viscosity in a reservoir.
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The crude oils in our study show the impact of biodegradation, water washing and
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multiple charging. Some variation of composition is observed laterally in the
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subsurface formation. These observations help constrain the petroleum system
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model (PSM); the timing of paleo-pasteurization appears to be key in establishing
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the quality of the oils.
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1. Introduction
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Renewed interest in the characterization of reservoir fluids is being driven by
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decreasing risk tolerance in important markets, such as deepwater (Elshahawi et
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al., 2014). In addition, the technology of downhole fluid analysis (DFA) in wireline
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has facilitated acquisition of representative samples of formation crude oil with 2 ACS Paragon Plus Environment
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known provenance (Mullins, 2008a). Moreover, DFA has enabled the accurate
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measurement of reservoir fluid properties and gradients to become routine (Mullins,
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2008a). For example, within a well, all systematic errors of the DFA measurement
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of fluid properties cancel allowing accurate determination of fluid gradients
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(Mullins, 2008a). These DFA measurements are being coupled with the cubic
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equation of state (EoS) to evaluate gas-liquid equilibria (Peng and Robinson, 1976)
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and the Flory-Huggins-Zuo (FHZ) EoS, to evaluate liquid-solid (asphaltene)
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equilibria (Freed et al., 2010; Zuo et al., 2013; Freed et al., 2014). The FHZ EoS is
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the first EoS to model asphaltene gradients and, because the gravity term and other
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terms depend on asphaltene size, the FHZ EoS relies on the resolution of the
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asphaltene molecular and colloidal sizes as given in the Yen-Mullins model (Mullins
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et al, 2007, Mullins, 2010). With the asphaltene size resolved, the gravity and other
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terms are resolved enabling the thermodynamic treatment of asphaltene gradients
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in reservoir crude oils.
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The combination of the DFA measurement technology and new asphaltene science
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has led to many new applications. For example, reservoir connectivity has been
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successfully predicted when the asphaltenes are determined to be equilibrated
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(Betancourt et al, 2009; Mullins et al, 2008b; Dong et al, 2014). Nevertheless, one
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study showed that in adjacent compartmentalized reservoirs, there was no chemical
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difference in either the liquid phase as shown by GCxGC-FID (Mullins, et al, 2008b)
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nor in heavy end analysis as determined by high resolution mass spectrometry
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(Mullins et al, 2006). In these adjacent compartmentalized reservoirs, the
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concentration of asphaltenes varied between compartments, but not the chemical
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identity of the liquid components nor the heavy ends. Along similar lines, many
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asphaltenes samples were analyzed from heavy oils around a 100 kilometer long
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rim of an anticline reservoir. The heavy oils were shown to be in thermodynamic
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equilibrium as asphaltene clusters (Mullins et al, 2013). The sulfur chemistry
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(Pomerantz et al, 2013) and the asphaltene molecular and nanoaggregate weights
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(Wu et al, 2014) were shown to be uniform along this heavy oil rim.
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In one case study, the vertical connectivity of a sand was indicated by the
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equilibration of asphaltenes using the FHZ EoS with nanoaggregates over the
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interval of concern in a single well (Pomerantz et al, 2010). In addition, the liquid
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phase components and the heavy end components were also largely homogeneous
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over this same vertical interval (Pomerantz et al, 2010) in spite of the complexities
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of biodegradation and multiple charging (Peters et al, 2005; Larter et al, 2006).
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Nevertheless, in that study, comprehensive two-dimensional, comprehensive gas
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chromatography (GCxGCxFID) was used to delineate the occurrence of
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biodegradation and multiple reservoir charging (Pomerantz et al, 2010).
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In a recent study, the compositional variation vertically and laterally in an oil
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reservoir was shown to be controlled by diffusion of alkane and other components to
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the oil-water contact followed by relatively rapid removal of these components by
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biodegradation (Zuo et al, 2015). In this case, the large compositional variation is
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linked to ongoing diffusion and biodegradation that has been going on for 50 million
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years as corroborated by petroleum system modeling (Zuo et al, 2015). Moreover,
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this process gave rise to large gradients in asphaltene concentration and viscosity.
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In a more general sense, it is desirable to predict or forward model reservoir fluid
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distributions at early stages of reservoir evaluation. Basin modeling is a well-
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developed discipline. Understanding in-reservoir fluid processes has recently been
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improved due to 1) improvements of thermodynamic understanding of crude oils
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embodied in the FHZ EoS and the Yen-Mullins model of asphaltenes and 2) DFA
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reservoir case studies. These two developments have revealed the existence of
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various chemistry and physics processes of reservoir fluids. For example, a recent
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paper has confirmed the formation of heavy oil and tar mats by asphaltene-enriched
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convective currents within the oil column.(Forsythe, et al, 2015) These various
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processes are being subsumed under the title, ‘reservoir fluid geodynamics’. Recent
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forward modeling within precepts of reservoir fluid geodynamics includes an
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examination of thermodynamic equilibration of reservoir fluids.(Mullins, et al,
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2015) Specifically, different rates of equilibration of different components of crude 5 ACS Paragon Plus Environment
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oil are shown. Forward modeling will become increasingly important with improved
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understanding of these in-reservoir fluid dynamics.
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For complex reservoir fluids subjected to various processes that change the chemical
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composition of crude oil, it is highly desirable to perform chemical separation that
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resolves individual chemical constituents. Some studies rely on ultra-high
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resolution mass spectroscopy for this purpose (Pomerantz et al, 2010, Vaz et al,
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2014, see also Marshall and Rodgers, 2008). GCxGCxFID has proven to be very
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useful for the purpose of chemical differentiation of liquid phase components (Reddy
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et al., 2007; Dong et al., 2014; Pomerantz et al., 2010; Ventura et al., 2010).
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GCxGCxFID uses two GC columns to perform sequential separations. The first
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column can separate chemical constituents of a complex mixture based on volatility.
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The second column can perform separation based on polarizability by virtue of a
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different stationary phase. In this manner, many individual chemical constituents
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can be resolved that would normally overlap in traditional single-dimension GC.
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Coupling GCxGCxFID with mass spectroscopy (GCxGC-MS) often yields
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unambiguous peak assignments in the chromatogram. Characterization of the
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individual chemical constituents of a crude oil and understanding of the
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relationships between structure and function is the vision embodied in the new field
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petroleomics (Marshall and Rodgers, 2008; Mullins et al., 2007).
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GCxGCxFID can differentiate reservoir crude oil from oil-based mud drilling fluids
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that have an olefin base (so-called synthetic base muds), a task that can be difficult
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with conventional GC (Reddy et al., 2007). GCxGCxFID provides excellent
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resolution in the biomarker region, enabling robust and accurate determinations of
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the extent of biodegradation and determination of the biodegradation rank on the
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Peters and Moldowan scale (Peters and Moldowan, 1993). In addition, GCxGCxFID
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can readily separate light alkanes from light aromatics. Since loss of the light
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aromatics occurs during water washing, GCxGCxFID is well suited to examine this
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effect of water on reservoir crude oil.
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In addition, during normal subsidence with source rock heating, reservoirs can
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receive petroleum even at temperatures less than 80oC where biodegradation can
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take place. Further subsidence can lead to reservoir sterilization (pasteurization)
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and with further charging, a fraction of the crude oil may not be biodegraded.
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GCxGCxFID is well suited to address multiple charge scenarios (Pomerantz et al.,
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2010) as well as the extent of biodegradation and water washing in the oil. All of
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these factors can impact oil viscosity and viscosity gradients in the reservoir and are
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thus a significant production concerns. For example, biodegradation can result in
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the reduction of crude oil volume by 50% to 70% (Head et al., 2003), thereby
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concentrating the asphaltenes and increasing the viscosity. With this extent of
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biodegradation, the asphaltene concentration has been observed to triple (Zuo et al,
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2015).
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Determination of the factors that influence crude oil physical properties is very
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important. Understanding the petroleum system context of these parameters
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enables a much more fundamental view of the reservoir and basin. A petroleum
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system model includes the source rock and all of the geological elements and
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processes for oil and gas to accumulate (Maggon and Dow, 1994). The essential
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elements are source rock, migration path, reservoir, seal and overburden for
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requisite burial. Computerized petroleum system modeling attempts to account for
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the dynamic processes that control the type and distribution of petroleum fluids.
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Based on this perspective, the petroleum system model can be matched with
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detailed chemical analysis of the reservoir crude oils to understand the primary
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factors that control crude oil properties.
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The combination of GCxGCxFID on samples of known provenance (using wireline
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formation sampling), and petroleum system modeling is particularly well suited to
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address complexities in the Llanos basin. The Llanos basin is in the eastern
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forelands of the Andes Mountains in Colombia, located between the Eastern
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Cordillera and the Guyana Precambrian shield. The growth of the Eastern
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Cordillera of the Andes in the Late Miocene gave rise to the Amazon River (Hoorn
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et al., 1995). Thus, the drainage and paleogeography of northern South America in
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the Miocene were strongly controlled by tectonic movements in the northeastern
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Andes. Figure 1 depicts the Llanos basin; note the significant subsidence of the
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basin in the west associated with the overburden produced by erosion from the
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Andes (Person et al., 2012).
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Figure 1. Llanos basin, Colombia in the eastern forelands of the Andes. Note the
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significant subsidence in the west associated with deposition from overburden
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eroding from the Andes (Person et al., 2012). The formations as indicated in Persons
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et al, 2012, are listed in the figure; the Gacheta is the main source rock.
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Many of the major producing fields in Colombia are in the Llanos basin. These
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fields are greatly impacted by the unusual hydrology of the region. Since the
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orogeny in the Miocene, the Andes Cordillera have strongly influenced weather
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patterns. The prevailing easterly winds at these latitudes in northern South
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America intersect the young and high Andes yielding heavy rainfall that feeds the
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Amazon River, by far the largest river on the planet in volumetric flow. This strong
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water influx into aquifers in the Llanos basin has replaced much salt water with
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fresh water, significantly hindering oil identification by standard electrical
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petrophysical methods. In addition, the water influx yields strong aquifer support so
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water injection into wells for pressure maintenance is not needed. Water
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breakthrough in the Llanos basin is an ever present problem for oil production.
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Moreover, the unique Llanos basin aquifers can result in hydrodynamic traps of oil.
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The Rubiales field in the Llanos basin has no structural trap; the oil is held in a
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hydrodynamic trap by the flow of water in the adjacent aquifer.(Person et al., 2012)
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Figure 2 shows the Rubiales field with its contour lines that are parallel (thus no
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structural or stratigraphic trap).
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Figure 2. The Rubiales field and its oil-water contact (OWC) in the Llanos basin
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shows nearly parallel depth contours. This oil field is in a hydrodynamic stagnation
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trap caused by flowing water at the oil-water contact.(Person et al., 2012)
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As implied in Fig. 1, there is significant influx of water into the aquifers of the
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Llanos basin leading to downward flow in the aquifers. This downward flow in the
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Rubiales field arrests the upward buoyancy of the oil, such that the oil accumulates
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on the slope in a hydrodynamic stagnation point as depicted in Fig. 2 (Person et al.,
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2012). The relative high density of the heavy oil (12oAPI) reduces the buoyancy
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force. Fig. 2 shows that this hydrodynamic situation gives rise to a difference in the
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height of the oil-water contact of 60 m across the field (Person et al., 2012). This is
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very important to know for field development, particularly to avoid well placement
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that results in water production in horizontal wells.
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Note that other descriptions of the aquifer have been argued in the literature. For
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example, Selley (1998) argued that basal reservoirs in the Llanos Basin are
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underpressured with flow back into the basin. Gonzalez et al (2014) argued that the
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Llanos Basin was a tight, low-permeability system with very little fluid flow (and
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thus no water washing). However, the explanation of Person et al, 2012, is
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consistent with a substantial tilt to the oil-water contact in the Rubiales reservoir.
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This observation is difficult to explain by any other reservoir description. In
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addition, oil reservoirs in the Llanos basin have two widely acknowledged
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properties; 1) they are low salinity (Bachu et al, 1994) and even fresh water pay, 2)
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they have very strong aquifer support, water injection is almost never performed in
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the Llanos basin, while it is much more common elsewhere. Both of these important
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field concerns that have significant implications for formation evaluation and field
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development planning are consistent with explanations as given by Person, et al
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2012. Moreover, the extent of water washing of Llanos basins crude oils can be
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tested to determine consistency with Persons et al, 2012.
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In this paper, we examine crude oils in a reservoir in the Llanos basin to
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understand the primary factors that control crude oil properties. The effect of water-
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related processes on the crude oil is emphasized. We use a combination of petroleum
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system modeling, GCxGCxFID coupled with flame ionization detector (FID) and
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GCxGC-MS along with wireline sampling optimization to understand factors that
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control crude oil composition in a reservoir. Crude oils in this reservoir are shown to
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be subject to water washing, biodegradation and multiple charging. Petroleum
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systems analysis is performed with constraints provided by the chemical analysis of
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the crude oils. Even though some detailed data that is useful for PSM was lacking,
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the analysis showed that the timing of paleo-pasteurization appears to be a key
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determinant of oil properties. This study integrates different types of data to enable
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a more robust understanding of reservoirs and their contained fluids.
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2. Methods
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2.1 Wireline Sampling Acquisition and Analysis
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In this project, samples of crude oils were acquired in two wells. In each well, two
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samples at closely spaced depths were acquired. Little variation was observed for
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samples acquired within each well. These samples were acquired using the
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openhole wireline formation sampling tool the MDT [Mullins, 2008a] Wireline
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sample acquisition in the Llanos basin can be challenging due to the viscous nature
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of the oils and the active aquifer. In addition, in open-hole sample acquisition, it is
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filtrate that penetrates into the oil-bearing formations. Fig. 3 depicts the wireline
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sampling tool, the MDT (Modular Formation Dynamics Tester). The MDT is a
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complex instrument package that is lowered into the well on a cable or “wireline”
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(cf. Mullins, 2008a). The MDT consists of many components or modules such as
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pumps, fluid analyzers, and sample bottles. The MDT is configured to have one or
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more probe modules which establish hydraulic communication with permeable
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formations for example using a stout, steel tube (cf. Figure 3). This tube along with
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a surrounding packer is pressed against the formation wall with great force creating
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a seal. The MDT has onboard pumps which can lower the pressure in the flow line
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enabling extraction of fluids from the (permeable) formation.
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Figure 3. Schematic diagram of a wireline sampling tool, the “MDT” which acquires
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crude oil samples from wells. Modules on the MDT perform optical spectroscopy and
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other measurements on samples for in-situ chemical analysis. This tool is used in so-
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in the well. A photograph of a “probe” or stout tube is shown which is pressed firmly
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against the borehole wall along with a packer to make hydraulic communication
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with permeable zones. With the MDT pump, the pressure is reduced in the flowline,
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and fluids flow from the formation into the tool. DFA enables characterization of the
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fluid contents of the flowline; when clean formation fluids are flowing, high pressure
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sample bottles on the MDT can be opened to acquire formation fluid samples for
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subsequent study.
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The MDT tool enables acquisition of representative samples of formation fluids
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(Mullins, 2008a). The provenance of the crude oil sample in the reservoir is recorded
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with great accuracy within the well, an essential component for evaluation of the
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crude oil within a thermodynamic context where fluid gradient analysis is key.
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Downhole fluid analysis (DFA) allows minimization of contamination of the crude
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oil by filtrate of the drilling fluid that penetrates into the oil-bearing formations.
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Phase transitions, such as gas evolution, that would destroy the validity of the
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crude oil sample, can be avoided by measurement of flow line contents. In addition,
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DFA allows determination of the crude oil and water fractions in the flow line, so
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that optimal pumping times for sample acquisition are employed. The fluorescence
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measurement of the Insitu Fluid Analysis (IFA) is sensitive to crude oil early in the
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pumping period when the MDT flow line contains mostly water from both mud
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filtrate and the formation. The near infra-red measurements of the IFA enable
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quantification of the oil, water and gas fractions in the MDT flow line (Mullins, 15 ACS Paragon Plus Environment
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2008a). With trace oil detected, pumping continues to “clean up” or reduce the
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filtrate contamination in the flow line. Even trace oil is of interest to understand the
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formation fluids. The data is shown in Fig. 4 corresponding to the acquisition of oil
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samples used herein; the IFA fluorescence signal identifies trace oil in the presence
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of mostly water indicating the pumping should continue to obtain a crude oil.
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Figure 4. Fluorescence measurement on the IFA tool is used to identify trace amounts
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of oil in the MDT. A sample recovered at surface confirmed trace amounts of oil.
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Pumping then continues to obtain bulk crude oil.
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In order to maximize the oil content in MDT samples of oil-water flows, downhole
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segregation is used as depicted in Fig. 5. The oil-water mixed phase flow is pumped
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into a sample chamber and allowed to separate for approximately one hour. The
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sample is then pumped out of the segregation bottle into a sample acquisition
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bottle. The timing of bottle opening is adjusted to acquire a pure oil slug. Optical
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light scattering in the oil establishes that this segregation procedure separates free
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water from the oil, but tends not to break oil-water emulsions. This segregation
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method was used for all samples used herein.
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Figure 5. Oil and water segregate in the pumpout module while pumping (left). To
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aid in sampling, the oil and water are placed in a sample bottle for one hour
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downhole. The oil and free water segregate (right), allowing collection of oil without
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free water.
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2.2 GC×GC-FID and GC×GC-MS.
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Gas chromatography (GC) is a powerful tool that facilitates the separation of
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complex molecular mixtures for compound identification and quantitation. GC uses
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a single capillary column coated with a stationary phase. Compounds can be
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separated based on a variety of factors including molecular weight, volatility,
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polarity, and polarizability, all of which affect the partitioning of each component
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between the stationary and mobile phases. GC has been particularly useful for
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analyzing the molecular composition of crude oils. Using two GC columns in
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sequence (thus, GCxGCxFID), where the separations in the first and second column 17 ACS Paragon Plus Environment
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emphasize different chemical attributes, vastly enhances the number of compounds
320
that can be individually observed and identified (Nelson et al., 2006; Gaines et al.,
321
2006; Reddy et al., 2007). The first column often is configured to perform separation
322
primarily based on volatility. The second dimension column is typically configured
323
to separate compounds eluting from the first column by the polarity and
324
polarizability of the compounds. The GC×GC system links the first and second-
325
dimension columns by temporally freezing the effluent as it is leaving the first
326
dimension column and then re-injects the effluent into the second dimension
327
column using a thermal modulator. The modulator separates the mixture into small
328
packets of analyte that are sequentially injected into the second dimension column.
329
Using a short second dimension column, thus with fast elution, sharpens peaks and
330
increases the signal-to-noise ratio by a factor of 10 to 100 compared to traditional
331
gas chromatography. Coupling the GC×GC to a flame ionization detector (GC×GC-
332
FID), one can approximate that all hydrocarbons have the same response factor
333
(Tong et al., 1984) in order to estimate the concentration of each hydrocarbon in an
334
oil sample. When using GC×GC-MS (time-of-flight mass spectroscopy), the
335
increased chromatographic resolution allows for little or no background and much
336
cleaner mass spectra of unknown compounds, which, in turn, can be used to identify
337
specific chemical structures. Within the second dimension of a GC×GC-FID
338
chromatogram, saturated hydrocarbons elute earliest and multi-ring aromatic
339
hydrocarbons elute the latest. The added separation capacity provides three
340
powerful tools for geochemical analysis of petroleum hydrocarbons. First, saturated 18 ACS Paragon Plus Environment
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341
and aromatic hydrocarbons can be simultaneously analyzed without an initial liquid
342
chromatographic separation. This simplification not only reduces processing time
343
and cost, but also ensures more accurate analysis of hydrocarbon mixtures under
344
identical GC conditions. Second, such separations allow the calculation of the
345
saturate to aromatic ratio for the whole sample or as a function of an n-alkane
346
window (such as nC16 to nC17). Third, compounds in the same class will have a
347
similar elution pattern, which results in a predictable elution order for a compound
348
class. This provides a powerful predictive tool to identify new compounds and to
349
determine whether multiple compounds belong to one or more compound classes.
350 351
Each extract was analyzed by GC×GC-FID that employed a loop-jet modulator
352
(Gaines et al, 2004), from the Zoex Corporation (Lincoln, NE). The complete system
353
included an Agilent 6890 gas chromatograph configured with a 7683 series
354
split/splitless auto-sampler, two capillary gas chromatography columns and a flame
355
ionization detector. Each extract was injected in split-less mode and the purge vent
356
was opened at 0.5 min. The inlet temperature was 295oC. The first dimension
357
column and the loop jet modulator reside in the main. The second dimension column
358
is housed in a separate oven installed within the main GC oven. With this
359
configuration, the temperature profiles of the first dimension column, thermal
360
modulator and the second dimension column can be independently programmed.
361
The FID signal was sampled at 100 Hz. The carrier gas was H2 at a constant flow
362
rate of 0.7 ml/min. Peaks were identified with commercially available standards 19 ACS Paragon Plus Environment
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363
from Aldrich, US National Institute of Standards and Technology (NIST), and
364
Chiron (Trondheim, Norway). The first dimension column was a nonpolar 100%
365
dimethylpolysiloxane phase (Restek Rtx-1 Crossbond, 7.5 m length, 0.10 mm inner
366
diameter, 0.1 micron film thickness) that was programmed to remain isothermal at
367
33 C for 5 min and then ramped from 33 to 285 C at 1.5 C/min. The modulation loop
368
was deactivated fused silica (1.5 m length, 0.10 mm inner diameter). The modulator
369
cold jet gas was dry N2, chilled with liquid Ar, with a constant flow rate of 2.2
370
liter/min. The modulator hot jet air was heated to 105oC above the temperature of
371
the first oven. The hot jet was pulsed for 350 ms every 10 s (0.10 Hz). The
372
modulation period, therefore, was 10 s. Second dimension separations were
373
performed on a 50% phenyl polysilphenylenesiloxane column (SGE BPX50, 2.0 m
374
length, 0.10 mm inner diameter, 0.1 micron film thickness) that was programmed to
375
remain isothermal at 46oC for 5 min and then ramped from 46o to 298oC at 1.5o
376
C/min.
o
o
o
o
377
378
Samples were also analyzed by GCxGC-MS using a Hewlett-Packard Agilent 6890
379
Series gas chromatograph with a cooled injection system (CIS) and interfaced to
380
both a Hewlett-Packard 5973 quadrupole mass spectrometer and flame ionization
381
detector. A 1 microliter sample was injected into the CIS, which was temperature
382
programmed from 50 oC (0.1 min hold) to 350 oC at 720 oC/min (8 min hold).
383
Compounds were separated on a fused silica capillary column (J&W DB-5 ms, 60 m
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length, 0.32 mm inner diameter, 0.25 micron film thickness) with He as the carrier
385
gas at a constant flow of 1.5 ml/min. The GC oven temperature initially was held at
386
50 C for 1 min, then ramped at 20 C/min to 115 C (10 min hold), and then ramped
387
5 C/min to 320 C (10 min hold). A commercially available glass-lined fixed outlet
388
splitter (SGE) was used to split the column effluent to the MS and FID (flame
389
ionization detector) at a ratio of approximately 2:1. The MS was run in full scan
390
mode from 50 to 800 amu. The MS transfer line was held at 325 C. The FID was
391
held at 325 oC and sampled at 10 Hz.
392
2.3 Petroleum System Modeling with PetroMod®
393
Scope of the Project. Many of the producing fields in the Sub-Andean foreland
394
basin located between the Eastern Cordillera and the Guyana Precambrian Shield
395
experienced changes in the accumulated hydrocarbon quality due to the impact of
396
the unique aquifer system, which developed mainly after extensive uplift that
397
occurred in Miocene. The purpose of this basin and petroleum systems modeling
398
study was to model the impact of water influx and the effect of biodegradation on
399
the quality of the accumulated hydrocarbons using the tools and options available
400
in the latest version of PetroMod, version v2014.1 alpha. Classical petroleum
401
system analysis performed for this basin indicates Cretaceous Source rock and
402
principally Oligocene reservoirs. The main reservoir is the Mirador Formation,
403
when it exists, but reserves have been also reported in Une (Upper Cretaceous),
404
Barco (Paleocene) and Carbonera formations (Oligocene) (Moretti et al., 2009a,
o
o
o
o
o
o
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Moretti et al, 2009b). Several processes were considered and modeled in the study:
406
biodegradation, paleopasteurization (when reservoir heating halted further
407
biodegradation), water washing (diffusion and dissolution of methane in formation
408
water as a proxy for dissolution for light aromatics), and the transport and cooling
409
effect of aquifers. The intent of this modeling is to provide guidance and
410
understanding of the primary influences on crude oil quality especially as revealed
411
by detailed chemical analysis of these oils. The modeling is not meant to be highly
412
detailed for the large Llanos Basin.
413
2.4 Model Input. The area of the study is shown schematically in Fig. 6. The model
414
geometry and part of the input and calibration data were provided by ONGC Videsh
415
company active in the Llanos basin. The additional information for model building
416
was taken from published articles as discussed below.
417
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Figure 6. The PetroMod model employed for the Llanos basin. The model includes 10
420
layers, 15 events and 3 unconformities.
421
422
The model includes 10 layers, 15 events and 3 unconformities (Fig. 6). The timing
423
and duration of erosion intervals and the amounts of eroded sediments were
424
changed during the simulation runs to analyze the impact of erosion on the source
425
rock maturation, hydrocarbon generation and charge, and biodegradation. The
426
model incorporates only uniform facies (mixtures of sandstone, shale and siltstone)
23 ACS Paragon Plus Environment
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427
to keep the scenarios as simple as possible. The Carbonera Formation was divided
428
into 8 sub-layers according to Bachu et al. (1995).
429
The upper boundary condition (sediment-water interface temperature) was defined
430
using the automated tool in PetroMod (Wygrala, 1989). Heat flow values at the base
431
of sediment pile were assigned based on the heat flow history recommended by
432
Bachu et al. (1995).
433
The Gacheta Formation was considered to be the main effective source rock, and the
434
Mirador Formation was the main reservoir. The Une Formation was treated as
435
reservoir as well, but the study focused mainly on Mirador Formation. Pressure and
436
temperature information from well data was used to calibrate the model to analyze
437
the impact of biodegradation, water washing, and variations in temperature due to
438
active aquifers in different scenarios. The total organic carbon (TOC) and hydrogen
439
index (HI) values defining the richness of the Gacheta Formation were based on
440
published data (Moretti et al., 2009).
441
442
A standard 14-component kinetic model (IES_TII_Brown_Limestone) was modified
443
to better reflect biodegradation and water washing. Its default methane component
444
was replaced with user defined methane prepared for diffusion and dissolution. The
445
fractions of biodegradable components were defined to get more realistic API
446
gravity values near 23°API. The crude oils from the Valdivia field in the general
447
area have API gravity values of roughly 23°. 24 ACS Paragon Plus Environment
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449
The calculated temperature and pressure trends were well calibrated to the
450
measured temperature and pore pressure data in the Well 1 and Well 2 wells. The
451
present day maturity and the maturation history of the effective source rock are in
452
good agreement with the published data (Moretti et al., 2009) in the study area. In
453
the hydrocarbon balance of the 3D model only the hydrocarbons generated within
454
the study area were taken into account. The hydrocarbons generated outside of the
455
area of interest and thus the long distance migration were not considered in this
456
model. The effective source rock entered in oil window around 10 mybp (million
457
years before present) and now it is in the early and peak oil window in the modelled
458
area.
459
460
461
Sensitivity analysis was performed on several parameters in the simulation runs:
462
timing/duration of unconformities, eroded amounts, threshold and paleo-
463
pasteurization temperatures related to biodegradation, fractions of biodegradable
464
components, the diffusion coefficients of the user defined methane component, and
465
the additional or excess pressure values added to hydrostatic to treat the main
466
reservoir as an aquifer. The PSM results presented are the most consistent with
467
literature data and fluid data presented herein. The parameters assigned to this
468
model are as follows: 25 ACS Paragon Plus Environment
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469
•
Eroded amount assigned to “unconformity 16.5 Ma”: 1,250 m
470
•
Eocene unconformity defined at the end of the deposition of the Mirador Formation.
471
472
•
Biodegradation parameters: threshold temperature=55°C, paleo-pasteurization temperature=95°C.
473
474
•
Degradation fractions: default values scaled by 0.3
475
•
Diffusion coefficient and activation energy of methane: D0: 4.64x10-11m2/s, EA: 220 kcal/mole
476
477
•
Hydrocarbon solubility table: PetroMod default values
478
479
The heat and pore pressure calculations, the migration modeling and the impact of
480
water influx on the reservoir quality were performed in full 3D. In the thermal
481
evolution of the basin the heat transport caused by water flow (convection) was also
482
considered (Person and Graven, 1992; Person et al., 1995). Water velocities were
483
calculated during the pressure–compaction equations, and the convection term of
484
the three dimensional heat flow equation coupled the heat and fluid flow
485
calculations. Topographically driven aquifer flows could have higher flow velocities
486
in the Llanos basin and therefore they were considered in the simulation runs as
487
well (Hantschel and Kauerauf, 2009). During migration modeling and accumulation
488
analysis the PetroMod’s proprietary hybrid fluid flow approach was used. This
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489
method uses domain decomposition to solve the Darcy flow equations in areas with
490
low permeabilities, and flowpath methods in areas with high permeabilities
491
(Hantschel and Kauerauf, 2009). In the simulation runs both the dissolution and
492
diffusion of the methane in the pore water were taken into account. The transport
493
via diffusion was considered as a two-step process including the dissolution of
494
methane in water and diffusion within the water phase. Once the methane was
495
dissolved in water, the transport via water flow also became important, especially
496
when high rates of aquifer flow existed (Hantschel and Kauerauf, 2009; Grathwohl,
497
1998). The saturation of the dissolved methane in water (in percentages) and the
498
bulk hydrocarbon mass (in megatons) were calculated as overlays through geologic
499
time to represent the dissolution, water washing and fluid flow in the model.
500
501
2.5 Biodegradation. Biodegradation can be modeled with PetroMod incorporating
502
all effects of biodegradation into the petroleum systems model. It can be used with
503
the hybrid and flowpath migration methods. Biodegradation occurs mainly at the
504
oil-water contact (OWC) and depends on the size of the OWC area, temperature,
505
composition of the oil, filling history and supply of nutrients for the microbes.
506
The crude oil component groups affected in the model are grouped into five
507
components, PK_P10, PK_P20, PK_P30, PK_P40, and PK_P50. In order to achieve
508
temperatures suitable for biodegradation in the reservoirs of the Mirador
509
Formation, the paleo-pasteurization temperature was set to 95°C which is similar to 27 ACS Paragon Plus Environment
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510
upper limits of 90oC recently discussed by Head, et al, 2014. The threshold
511
temperature where biodegradation efficiency first starts to diminish was set to
512
55°C. The default degradation fractions were scaled by 0.3 to get an acceptable API
513
gravity during the events prior to present day. Many crude oils from the Llanos
514
basin exhibit biodegradation (Vaz et al, 2014). Characterization of organic acids by
515
ultra-high resolution mass spectrometry is a valuable means of characterizing
516
biodegradation (Vaz et al, 2014). Evaluating the extent of biodegradation is critical
517
to understanding these crude oils. In this study, we used the Peters and Moldowan
518
(1993) rank of biodegradation, which is shown schematically in Fig. 7. The n-
519
alkanes are preferentially consumed by the microbes while appreciable consumption
520
of the hopanes yielding in part 25-norhopanes occurs only after extensive
521
biodegradation of other chemical components.
522
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523 524
Figure 7. The Peters and Moldowan scale of biodegradation (Peters and Moldowan,
525
1993). The reservoir microbes preferentially consume specific chemical classes
526
sequentially. For example, the n-alkanes are the first chemical class to be consumed
527
in the biodegradation process.
528
529
530
2.6 Aquifer. In our model, the additional pressure of 0.02 MPa was defined in the
531
Mirador Formation to mimic water flow from east to west between 4.2 and 0.0 Ma.
532
The velocities in the defined aquifer increase with pressure differences. Higher
533
pressure differences initiate higher velocities which cool the reservoir more rapidly.
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534
In the case of the best scenario, the pressure differences were defined to achieve a
535
realistic temperature difference of ∼1°C in the analyzed well locations.
536 537
3.0 Results and Discussion
538 539
GCxGCxFID data for one of the crude oil samples are shown in Fig. 8. As expected,
540
there is excellent separation of different chemical groups with some separation of
541
individual chemical components. In particular, the three regions of interest are well
542
separated: 1) the n-alkanes, 2) the biomarker region (hopanes, 25-norhopanes, etc.),
543
and 3) light aromatics. These regions are particularly useful to analyze water
544
washing, biodegradation, and multiple charging.
545 546
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547 548 549
Figure 8. GCxGCxFID chromatogram of a Llanos basin crude oil clearly
550
distinguishes n-alkanes, 25-norhopanes, and light aromatic compounds. These
551
chemical classes are key to unraveling complexities of the oil reservoirs in the Llanos
552
basin.
553 554 555
The n-alkanes are evident and very pronounced. This ease of detection, coupled
556
with the fact that the n-alkanes are the first chemical class to be removed by 31 ACS Paragon Plus Environment
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557
biodegradation makes this class particularly useful for indicating whether any
558
unbiodegraded oil remains in the reservoir. The presence of the n-alkanes indicates
559
biodegradation rank of 0 to 1 on the Peters and Moldowan scale. The current
560
reservoir temperature is over 100oC; too hot to support biodegradation. Figure 9
561
shows an expanded scale of the biomarker region, which is particularly useful for
562
analysis of biodegradation.
563
564 565 566
Figure 9. Biomarker region of the chromatogram in Fig. 8. The 25-norhopane series,
567
which results in part from biodegradation of the hopanes, is much more abundant
568
than the hopanes, indicating extensive biodegradation.
569 570 32 ACS Paragon Plus Environment
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571 572
Fig. 7 shows that hopanes are consumed at the rank of approximately 6 on the
573
Peters and Moldowan scale. It is important to verify the assignments given in Figs.
574
8 and 9, especially given that the current reservoir temperature precludes recent
575
biodegradation. Figure 10 shows the results of GCxGC-MS data for a 25-norhopane
576
and for a hopane and confirm the general assignments shown in Figs. 8 and 9. In
577
particular, in the mass spectrum, the methyl substitution at C-25 yields a fragment
578
at 191 amu as shown in Fig. 10b, while a 25-norhopane compound yields a
579
molecular fragment at 177 amu as shown in Fig. 10a. Thus, GCxGC-MS analysis is
580
used here to confirm the GCxGC-FID peak assignments.
581
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582
583
Figure 10a. GCxGC-MS traces confirming the assignment of 17•(H),21•(H)-25,30-
584
bisnorhopane designated as 25-nor-NH. Likewise other assignments were confirmed
585
in a similar manner. 10b. GCxGC-MS traces confirming the assignment of
586
17•(H),21•(H)-30-norhopane designated as NH. The 25-norhopanes are clearly more
587
intense than the hopanes in this and other data sets confirming the determination of
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588
biodegradation rank 6 on the Peters and Moldowan scale. This figure represents an
589
extracted-ion chromatogram from the GCxGC-MS.
590
591
592
The conclusion is that a fraction of the reservoir oil underwent biodegradation with
593
a Peters and Moldowan rank of 6, and that another fraction did not undergo
594
biodegradation with a Peters and Moldowan rank of 0 to 1. Given that the current
595
reservoir temperature is >100oC, it is likely that the initial charge occurred when
596
the reservoir was sufficiently cool for biodegradation and the secondary charge
597
occurred when the reservoir was too hot for biodegradation to occur. Subsidence of
598
the reservoir and source rock could account for these observations.
599 600
Confirmation of other assignments were performed for many compounds. For
601
example, peaks Ts, Tm, 25-nor-Ts, and 25-nor-TM identified in Figs. 8 and 9 were
602
confirmed by GCxGC-MS as shown in Figure 11.
35 ACS Paragon Plus Environment
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603 604
605
Figure 11. GCxGCxMS confirmation of assignments in GCxGCxFID for the
606
compounds designated as Ts, 25-nor-TS, Tm and 25-norTm.
607 608 609
Both samples indicate that the original charge which was biodegraded and the new
610
charge which is unbiodegraded did mix to some degree. In the charging process,
611
often there is a lack of mixing that is seen, primarily associated with a relatively 36 ACS Paragon Plus Environment
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612
small spatial extent of charge paths or charge planes.(Stainforth, 2004) In reservoir
613
diffusive mixing can cause the observed mixing here.(Zuo et al., 2015) It is not clear
614
whether convective mixing observed elsewhere (Forsythe et al., 2015) could play a
615
role here.
616 617
3.1 Water Washing from GCxGCxFID
618 619
The relatively water-soluble light aromatics separate very well in GCxGCxFID. Fig.
620
12 shows the GCxGCxFID chromatograms of two oil samples from two wells in the
621
Llanos basin, focusing on the light aromatics. The GC×GC chromatogram readily
622
separates light aromatics which in turn can be used to analyze the impact of water
623
washing (Arey et al., 2005; Arey et al., 2007; Nabi et al., 2014). Water-washing
624
systematically removes the more water soluble crude oil components, the light
625
aromatics components from the upper left corner of the GC×GC chromatogram,
626
encroaching inward toward the middle of the chromatogram. This trend is
627
consistent with the conspicuous absence of certain hydrocarbons from the samples
628
from both Well 2 and Well 1 (Figure 12). In both crude oil samples, naphthalene and
629
phenanthrene are nearly absent (almost no detectable peak), and the methyl
630
naphthalenes (C1-naphthalenes) are in low abundance compared to higher-
631
alkylated analogues. The water solubilities of these aromatics decrease with
632
increasing alkyl substitution, suggesting that the parent compounds (naphthalene
633
and phenanthrene) have been removed principally by water-washing. We do not 37 ACS Paragon Plus Environment
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634
have an unaltered equivalent for this oil. Consequently, we roughly approximated
635
the extent of water-washing based on the ‘expected’ light aromatic ratios for such an
636
oil. Using known partition functions of the naphthalenes and phenanthrene in oil
637
versus water at 100°C, we estimate that the crude oils from Wells 1 and 2 were
638
subjected to 5,000 times to 40,000 times their volumes in water, respectively.
639
640
641
Figure 12. GCxGCxFID chromatograms for a sample from each of the two wells show
642
evidence of water washing, indicated by the relative absence of naphthalene and
643
phenanthrene and their methylated analogues compared to higher-alkyl analogues.
644
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645
Water washing in these oil samples is quite evident in the GCxGC chromatograms.
646
This is consistent with observations and explanations of given in Person et al, 2014,
647
regarding large water influx in the Llanos basin. These explanations are also
648
consistent with low salinity pay and strong aquifer support which are both well-
649
known characteristics of llanos basin reservoirs. In addition, we presume that the
650
small aromatics migrate within the reservoir by diffusion (Zuo et al, 2015), but in
651
the water column by advection.(Zhang et al 2005a, Zhang et al, 2005b)
652
To estimate the water velocity in the aquifer, we use the data from Fig. 2 and the
653
literature (Person et al., 2012). Darcy’s law is ∆ = − 1.
654 655
where Q/A is the linear flow rate, k is permeability, ∆P is the pressure drop
656
associated with the flow, µ is viscosity and L is the length over which the flow
657
occurs. For the Rubiales field, the oil-water contact differs by 60 meters across the
658
field, and the crude oil is ~0.985 g/cc (Person et al., 2012) giving a ∆P of ~0.1 atm.
659
The viscosity of water is 1 cP (a conservative estimate), the permeability is ~400
660
mD, and L~ 20 km (cf. Fig. 2) (Person et al., 2012). To obtain the water velocity in
661
the porous medium, one divides Q/A by porosity, here ~0.2. This gives a linear
662
velocity of water of 10 km/million years. We use this velocity for the Llanos aquifer.
663
Over the estimated mean life of the oil in the reservoir (10 million years), the total
664
distance traveled by the aquifer water would be 100 km. This considerable flow rate 39 ACS Paragon Plus Environment
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1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 21 22 23 24 25 26 27 28 29 30 31 32 33 34 35 36 37 38 39 40 41 42 43 44 45 46 47 48 49 50 51 52 53 54 55 56 57 58 59 60
665
and flow distance are qualitatively compatible with the large volumes of water
666
obtained above for water washing the crude oil.
667
3.2 Petroleum System Modeling
668
Our initial petroleum system model did not result in the observed biodegradation in
669
the reservoirs. In the model, when the source rock entered the oil window, the
670
reservoir was too hot to allow biodegradation. In order to match the observed
671
biodegradation in the Llanos basin reservoir of interest, it was necessary to adjust
672
subsidence, uplift and erosion. In this manner, the PSM could account for
673
observations. The final sequence is shown in Fig. 13.
674
675
40 ACS Paragon Plus Environment
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Energy & Fuels
676
Figure 13. The subsidence, uplift and erosional sequence used to model the Llanos
677
basin. These details were important to establish whether biodegradation can be
678
modeled in the petroleum system.
679
680
681
The burial sequence depicted Fig. 13 gave rise to the output of the PSM. The
682
reservoir was close to pasteurizing 16 million years ago in the model as shown in
683
Fig. 14a, but complete pasteurization did not occur. Consequently, a substantial
684
fraction of the reservoir crude oil was subject to biodegradation, consistent with
685
GCxGCxFID results on the crude oils.
686
A rather small modification to the burial sequence shown in Fig. 13 gave rise to the
687
scenario shown in Fig. 14b. In this scenario, the reservoir was paleo-pasteurized 16
688
million years ago, precluding biodegradation of almost the entire charge. Indeed,
689
there are blocks in the Llanos basin with much lighter oil. It is quite plausible that
690
the timing of paleo-pasteurization controls this important reservoir issue.
691
41 ACS Paragon Plus Environment
Energy & Fuels
1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 21 22 23 24 25 26 27 28 29 30 31 32 33 34 35 36 37 38 39 40 41 42 43 44 45 46 47 48 49 50 51 52 53 54 55 56 57 58 59 60
692
693
Figure 14a. The reservoir temperature and cumulative reservoir oil for the burial
694
sequence depicted in Fig. 13. Note that a substantial fraction of the crude oil was
695
subject to biodegradation prior to reservoir paleo-pasteurization 7 million years ago.
696
14b. The reservoir temperature and cumulative reservoir oil for a scenario somewhat 42 ACS Paragon Plus Environment
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Energy & Fuels
697
similar to the burial sequence shown in Fig. 13. With early paleo-pasteurization,
698
biodegradation was precluded for most of the reservoir crude oil yielding a reservoir
699
of much lighter crude oil.
700
701
The key parameter for the PSM is whether the reservoir was sufficiently heated 16
702
million years ago to pasteurize. A few degrees centigrade can make all the
703
difference. The details of the heat flow model as well as the burial model are
704
therefore critically important as to when paleopasteurization took place.(Bachu, et
705
al, 1994) Besides the conductive heat transfer the impact of the thermal effects of
706
water flow through geologic time were also considered in the calculation of thermal
707
histories. Scenarios with and without convective heat flow transfer were simulated
708
and then compared, and the effects of the aquifer flows on the temperature and
709
sterilization timing were analyzed.
710
For example, convective heat flow in addition to conductive heat flow can both be
711
important factors in this thermal profile. Several parameters affect this prediction,
712
including thermal flux, subsidence (with subsequent erosion), and water flux into
713
the reservoir aquifer. The objective of the PSM here is not to uniquely predict
714
reservoir and crude oil observations. Instead, what has been accomplished here is to
715
use a somewhat sparse data set about a rather large basin to explain possible key
716
parameters that influence important reservoir properties.
43 ACS Paragon Plus Environment
Energy & Fuels
1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 21 22 23 24 25 26 27 28 29 30 31 32 33 34 35 36 37 38 39 40 41 42 43 44 45 46 47 48 49 50 51 52 53 54 55 56 57 58 59 60
717
In addition to treating biodegradation, PSM was also able to account for water
718
washing. The parameters that affect water washing include the differential of the
719
hydrostatic head pressure across the reservoir. Similar parameters for the
720
magnitude of the gradient were used as derived above for the Rubiales field. In
721
addition, the diffusion rate of the light aromatics in crude oil were estimated as
722
being slightly lower than typical methane diffusion rates in reservoir crude oil. The
723
translational diffusion constant is linear in radius, not volume, thereby limiting
724
differences in diffusion constants. By this means the PSM could produce water
725
washing in a qualitative sense.
726
4. Conclusions
727
An integrated approach using a Petroleum System Modeling coupled with
728
GCxGCxFID and GCxGC-MS data on wireline samples improves understanding of
729
the complex issues of biodegradation, multiple charging and water washing of
730
reservoir crude oils in the Llanos basin. Although only limited basin data was
731
available for construction of the petroleum system model, a self-consistent basin
732
description emerged where PSM incorporated firm conclusions from the
733
GCxGCxFID interpretation. In particular, the initial charge into the reservoirs was
734
shown to be heavily biodegraded, but with subsidence the reservoir became hotter
735
and pasteurized, so subsequent crude oil charge was not biodegraded. The timing of
736
the paleo-pasteurization is likely largely responsible for the quality of the crude oil.
737
In addition, substantial and somewhat variable water washing is indicated by the 44 ACS Paragon Plus Environment
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Energy & Fuels
738
analysis of light aromatics. It is highly desirable to check consistency with advanced
739
analytical chemistry such as GCxGCxFID and with petroleum system modeling.
740
Even in cases with limited basin information for the PSM and with few samples, a
741
general understanding of those geodynamic processes acting on reservoir fluids can
742
be delineated.
743
744
References
745 746
Arey, J.S., Nelson, R.K., Xu, L., Reddy, C.M., Using comprehensive two-dimensional
747
gas chromatography retention indices to estimate environmental partitioning
748
properties for a complete set of diesel fuel hydrocarbons. Analytical
749
Chemistry, 2005, 77, 22, 7172-7182.
750 751
Arey, J.S., Nelson, R.K., Xu, L., Reddy, C.M., Disentangling oil weathering using
752
GCxGCxFID. 1. Chromatogram analysis. Environmental Science & Technology,
753
2007, 41, 16, 5738-5746.
754
755
Bachu, S.; Underschultz, J.R.; Ramon, J.C.; Villegas, M.E.; Comparison of Fluid and
756
Heat Flow in two basin, Alberta in Canada and Llanos in Colombia, AAPG Bulletin,
757
1994, v., p.177-178 45 ACS Paragon Plus Environment
Energy & Fuels
1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 21 22 23 24 25 26 27 28 29 30 31 32 33 34 35 36 37 38 39 40 41 42 43 44 45 46 47 48 49 50 51 52 53 54 55 56 57 58 59 60
758 759
Bachu, S., Ramon, J.C., Villegas, M.E., Underschultz, J.R., Geothermal regime and
760
thermal history of the Llanos Basin, Colombia: AAPG Bulletin, 1995, v. 79, no. 1, p.
761
116–129.
762 763
Betancourt, S.S., Ventura, G.T., Pomerantz, A.E., Viloria, O., Dubost, F.X., Zuo,
764
J.Y., Monson, G., Bustamante, D., Purcell, J.M., Nelson, R.K., Rodgers, R.P., Reddy,
765
C.M., Marshall, A.G., Mullins, O.C., Nanoaggregates of asphaltenes in a reservoir
766
crude oil, Energy & Fuels, 2009, 23, 1178–1188.
767 768
Dong, C., Petro, D., Pomerantz, A.E., Nelson, R.L., Latifzai, A.S., Nouvelle, X., Zuo,
769
J.Y., Reddy, C.M., Mullins, O.C., New thermodynamic modeling of reservoir crude
770
oil, Fuel, 2014, 117, 839-850.
771
772
Elshahawi, H.,. Deepwater exploration & production in the Gulf of Mexico -
773
challenges and opportunities, Petrophysics, 2014, 55, 2, 81-87.
774
775
Forsythe, J.; Pomerantz, A.E.; Seifert, D.J.; Wang, K.; Chen, Y.; Zyo, J.Y,; Nelson,
776
R.K.; Christopher M. Reddy, C.M.; Schimmelmann, A.; Sauer,P.; Peters, K.E.;
777
Mullins, O.C.; Confirmation of Equilibration of a Heavy Crude Rim of a Large
46 ACS Paragon Plus Environment
Page 46 of 56
Page 47 of 56
1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 21 22 23 24 25 26 27 28 29 30 31 32 33 34 35 36 37 38 39 40 41 42 43 44 45 46 47 48 49 50 51 52 53 54 55 56 57 58 59 60
Energy & Fuels
778
Saudi Arabian Oilfield using GCxGC and Isotope Analysis, submitted Energy &
779
Fuels, 2015
780 781
Freed, D.E., Mullins, O.C., Zuo, J.Y., Asphaltene gradients in the presence of GOR
782
gradients, Energy & Fuels, 2010, 24, 7, 3942-3949.
783 784
Freed, D.E., Mullins, O.C., Zuo, J.Y., Heuristics for equilibrium distributions of
785
asphaltenes in the presence of GOR gradients, Energy & Fuels, 2014, 28 (8), pp
786
4859–4869
787
788
Gaines, R.B., Frysinger, G.S., Temperature requirements for thermal modulation in
789
comprehensive two-dimensional gas chromatography, J. Separation Science, 2004,
790
27, 380-388.
791
792
Gaines, R.B., Frysinger, G.S., Reddy, C.M., Nelson, R.K. in: Z. Wang, S. Stout
793
(Eds.), 2006, Spill oil fingerprinting and source identification, Academic Press,
794
USA.
795
47 ACS Paragon Plus Environment
Energy & Fuels
1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 21 22 23 24 25 26 27 28 29 30 31 32 33 34 35 36 37 38 39 40 41 42 43 44 45 46 47 48 49 50 51 52 53 54 55 56 57 58 59 60
796
Gonzalez‐Penagos, F., Moretti, I., France-Lanord, C., Guichet, X., Origins of
797
formation waters in the Llanos foreland basin of Colombia: geochemical variation
798
and fluid flow history. Geofluids 2014, 14.4, 443-458.
799 800
Grathwohl, P., Diffusion in natural porous media – Contaminant transport,
801
sorption/desorption and dissolution kinetics, 1988, Kluwer International Series,
802
Springer US, 207 p.
803 804
805
Hantschel, T. and Kauerauf, A. I., Fundamentals of Basin and Petroleum Systems
806
Modeling, 2009, Springer-Verlag, Berlin, Heidelberg, 476 p.
807 808
Head, I.M., Martin Jones, D., Larter, S.J., Biological activity in the deep subsurface
809
and the origin of heavy oil. Nature, 2003, 426, 344-352.
810
811
Head, I.M., Gray, N.D., Larter, S.J., Life in the slow lane; biogeochemistry of
812
biodegraded petroleum containing reservoir s and implications for
813
energy recovery and carbon management, Frontiers in Microbilogy, 2014, 5, 566, 1-
814
23
815 48 ACS Paragon Plus Environment
Page 48 of 56
Page 49 of 56
1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 21 22 23 24 25 26 27 28 29 30 31 32 33 34 35 36 37 38 39 40 41 42 43 44 45 46 47 48 49 50 51 52 53 54 55 56 57 58 59 60
Energy & Fuels
816
Hoorn, C., Guerrero, J., Sarmiento, G.A., Lorente, M.A., Andean tectonics as a
817
cause for changing drainage patterns in Miocene northern South America, Geology,
818
1995, 23, 3, 237–240.
819
820
Larter, S., Huang, H., Adams, J., Bennett, B., Jokanola, O., Oldenburg, T., Jones,
821
M., Head, I., Riediger, C., Fowler, M., The controls on the composition of
822
biodegraded oils in the deep subsurface: Part II —Geological controls on subsurface
823
biodegradation fluxes and constraints on reservoir-fluid property prediction.
824
American Association to Petroleum Geologists Bulletin, 2006, 90, 921-938.
825
826
Magoon, L.B., Dow, W.G., The petroleum system, In: Magoon, L.B., Dow, W.G (Eds.)
827
The Petroleum System--From Source to Trap. American Association of Petroleum
828
Geologists Memoir 1994, 60, 3-24.
829
830
Marshall, A.G., Rodgers, R.P., Petroleomics: chemistry of the underworld, Proc. Nat.
831
Acad. Sci., 2008, 105, 47, 18090–18095.
832 833
Moretti, I., Mora, C., Valendia, M., Mayorga, M., Rodriguez, G., Petroleum systems
834
variations in the Llanos Basin (Colombia) – X Simposio Bolivariano - Exploración
835
Petrolera en Cuencas Subandinas, AGGP, 2009a, Cartagena, Colombia, July 26 49 ACS Paragon Plus Environment
Energy & Fuels
1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 21 22 23 24 25 26 27 28 29 30 31 32 33 34 35 36 37 38 39 40 41 42 43 44 45 46 47 48 49 50 51 52 53 54 55 56 57 58 59 60
836
837
Moretti, I., Mora, C., Zamora, W., Valendia, M., Mayorga, M., Rodriguez, G.,
838
Petroleum system variations in the Llanos Basin (Colombia): Journal of Petroleum
839
Geology, 2009b, 27, 4, 321–333
840
841
Mullins, O.C.; Rodgers, R.P.; Weinheber, P.; G.C. Klein, L. Venkatramanan,
842
Andrews, A.B.; Marshall, A.G.; Oil Reservoir Characterization via Crude Oil
843
Analysis by Downhole Fluid Analysis in Oil Wells with Visible-Near-Infrared
844
Spectroscopy and by Laboratory Analysis with Electrospray Ionization-Fourier
845
Transform Ion Cyclotron Resonance Mass Spectroscopy, Energy & Fuels, 2006, 20, (6),
846
2448–2456
847 848 849
Mullins, O.C., Sheu, E.Y., Hammami, A., Marshall, A.G., (Eds.), Asphaltenes, Heavy
850
Oils and Petroleomics, 2007, Springer, New York.
851 852
Mullins, O.C., The Physics of Reservoir Fluids, Discovery through Downhole Fluid
853
Analysis, 2008a, Schlumberger, Houston, TX.
854
855
Mullins, O.C.; Ventura, G.T.; Nelson, R.L.; Betancourt, S.S.; , Raghuraman, B.;
856
Reddy, C.M.; Oil Reservoir Characterization by coupling Downhole Fluid Analysis 50 ACS Paragon Plus Environment
Page 50 of 56
Page 51 of 56
1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 21 22 23 24 25 26 27 28 29 30 31 32 33 34 35 36 37 38 39 40 41 42 43 44 45 46 47 48 49 50 51 52 53 54 55 56 57 58 59 60
Energy & Fuels
857
with Laboratory 2D-GC Analysis of Crude Oils, Energy & Fuels, 2008b, 22, 496-
858
503
859
860
Mullins, O.C., The modified Yen model, Energy & Fuels, 2010, 24, 2179–2207
861
862
Mullins, O.C.; Zuo, J.Y.; Seifert, D.; Zeybek, M.; Clusters of Asphaltene
863
Nanoaggregates Observed in Oil Reservoirs, Energy & Fuels, 2013, 27, 1752–1761
864 865
Mullins, O.C.; Wang, K.; Kauerauf, A.; Zuo, J.Y.; Chen, Y.; Dong, C.; Elshahawi,
866
H.; Evaluation of Coexisting Reservoir Fluid Gradients of GOR, Asphaltene and
867
Biomarkers as Determined by Charge History in Reservoir Fluid Geodynamics,
868
Accepted, SPWLA, 2015, Ann. Symp. Long Beach, CA.
869 870
Nabi, D., Gros, J., Dimitriou-Christidis, P., Arey, J.S., Mapping environmental
871
partitioning properties of nonpolar complex mixtures by comprehensive two-
872
dimensional gas chromatography. Environmental Science & Technology, 2014,
873
48(12), 6814-26
874
875
Nelson, R.K., Kile, B.M., Plata, D.L., Sylva, S.P., Xu, L., Reddy, C.M., Gaines, R.B.,
876
Frysinger, G.S., Reichenbach, S.E., Tracking the weathering of an oil spill with
51 ACS Paragon Plus Environment
Energy & Fuels
1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 21 22 23 24 25 26 27 28 29 30 31 32 33 34 35 36 37 38 39 40 41 42 43 44 45 46 47 48 49 50 51 52 53 54 55 56 57 58 59 60
877
comprehensive two-dimensional gas chromatography, Environ. Forensics, 2006, 7,
878
33-44
879
880
Peng, D.-Y., Robinson, D.B., A new two-constant equation of state. Ind. Eng. Chem.
881
Fundam., 1976, 15, 59–64
882
883
Person, M., Butler, D., Gable, C.W., Villamil, T., Wavrek, D., Schelling, D.,
884
Hydrodynamic stagnation zones: A new play concept for the Llanos Basin,
885
Colombia, AAPG Bulletin, 2012, January, 96, 1, 23–41
886
887
Person, M.; Garven, G., Hydrologic constraints on petroleum generation within
888
continental rift basin: Theory and application to the Rhine Graben, American
889
Association of Petroleum Geologists Bulletin, 1992, v. 76, p.468-488
890
891
Person, M., Toupin, D., Eadington, P. J., One-dimensional models of groundwater
892
flow, sediment thermal history, and petroleum generation within continental rift
893
basins, Basin Research, 1995, 7, 81-96
894
52 ACS Paragon Plus Environment
Page 52 of 56
Page 53 of 56
1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 21 22 23 24 25 26 27 28 29 30 31 32 33 34 35 36 37 38 39 40 41 42 43 44 45 46 47 48 49 50 51 52 53 54 55 56 57 58 59 60
Energy & Fuels
895
Peters, K.E., Moldowan, J.M., The Biomarker Guide--Interpreting Molecular Fossils
896
in Petroleum and Ancient Sediments. 1993, Prentice-Hall, Englewood Cliffs, New
897
Jersey.
898
899
Peters, K.E.; Walters, C.C.; Moldowan, J.M., The Biomarker Guide: Biomarkers and
900
isotopes in petroleum systems and Earth history, 2005, Volumes 1 & 2, Cambridge
901
University Press, Cambridge, UK.
902
903
Pomerantz, A.E., Ventura, G.T., McKenna, A.M., Cañas, J.A., Auman, J., Koerner,
904
K., Curry, D., Nelson, R.K., Reddy, C.M., Rodgers, R.P., Marshall, A.G., Peters,
905
K.E., Mullins, O.C., Combining biomarker and bulk compositional gradient analysis
906
to assess reservoir connectivity, Organic Geochemistry, 2010, 41, 8, 812-821
907
908
Pomerantz, A.E.; Bake, K.D.; Craddock, P.R.; Qureshi, A.; Zeybek, M.; Mullins,
909
O.C.; Kodalen, B.G.; Mitra-Kirtley, S.; Bolin, T.B.; Seifert, D.J.; Sulfur Speciation
910
in Asphaltenes from a Highly Compositionally Graded Oil Column, Energy &
911
Fuels, 2013, 27, 4604–4608
912
53 ACS Paragon Plus Environment
Energy & Fuels
1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 21 22 23 24 25 26 27 28 29 30 31 32 33 34 35 36 37 38 39 40 41 42 43 44 45 46 47 48 49 50 51 52 53 54 55 56 57 58 59 60
913
Reddy, C.M., Nelson, R.K., Sylva, S.P., Xu, L., Peacock, E.A., Raghuraman, B.,
914
Mullins, O.C., Using GC×GC to identify and quantify olefin-based drilling oils in
915
crude oils, Journal of Chromatography A, 2007, 1148, 100-107
916 917
Selley, R.C., Elements of Petroleum Geology, 2nd Edition, Academic Press., 1998,
918
San Diego, CA
919 920
Stainforth, J.G.: “New Insights into Reservoir Filling and Mixing Processes,”
921
Understanding Petroleum Reservoirs: Towards an Integrated Reservoir
922
Engineering and Geochemical Approach, J.M. Cubitt, W.A. England, and S.R.
923
Larter (eds.), London, England, Geological Society of London SP, 2004, 237, 115–
924
132
925
926
Tong, H.Y., Karasek, F.W., Flame ionization detector response factors for compound
927
classes in quantitative analysis of complex organic mixtures. Anal. Chem. 1984, 56,
928
2124–2128
929
930
Vaz, B.G., Silva, R.C., Klitzke, C.F., Simas, R.C., Lopes Nascimento H.D., Pereira,
931
R.C.L., Garcia, D.F., Eberlin, M.N., Azevedo, D.A., Assessing Biodegradation in the
932
Llanos Orientales Crude Oils by Electrospray Ionization Ultrahigh Resolution and
54 ACS Paragon Plus Environment
Page 54 of 56
Page 55 of 56
1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 21 22 23 24 25 26 27 28 29 30 31 32 33 34 35 36 37 38 39 40 41 42 43 44 45 46 47 48 49 50 51 52 53 54 55 56 57 58 59 60
Energy & Fuels
933
Accuracy Fourier Transform Mass Spectrometry and Chemometric Analysis,
934
Energy & Fuels, 2013, 27 (3), pp 1277–1284
935
936
Ventura, G.T., Raghuraman, B., Nelson, R.L., Mullins, O.C., Reddy, C.M.,
937
Chemical compound class oil fingerprinting techniques using comprehensive two-
938
dimensional gas chromatography (GC×GC), Organic Geochemistry, 2010, 41, 9,
939
1026-1035
940
941
Wu, Q.; Seifert, D.J.; Pomerantz, A.E.; Mullins, O.C.; Zare, R.N.; Constant
942
Asphaltene Molecular and Nanoaggregate Mass in a Gravitationally Segregated
943
Reservoir, Energy & Fuels, 2014, 28, 3010−3015
944
945
Wygrala, B., Integrated study of an oil field in the southern Po Basin, Northern
946
Italy, Der Matematisch-Naturwissenschaftlichen Fakultat der Universitat zu Koln,
947
1989, PhD Dissertation, University of Cologne in Germany
948 949
Zhang Y., M. M. Person, E. Merino, M., Hydrologic and geochemical controls on
950
soluble benzene migration in sedimentary basins, Geofluids, 2005a, 5, 2, 83-105
951
55 ACS Paragon Plus Environment
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1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 21 22 23 24 25 26 27 28 29 30 31 32 33 34 35 36 37 38 39 40 41 42 43 44 45 46 47 48 49 50 51 52 53 54 55 56 57 58 59 60
952
Zhang Y., M. Person, E. Merino, M. Szpakiewcz, Evaluation of soluble benzene
953
migration in the Uinta Basin, Geofluids, 2005b, 5, 2, 106-123
954 955
Zuo, J.Y., Mullins, O.C., Freed, D.E., Dong, C., Elshahawi, H., Seifert, D.J.,
956
Advances of the Flory-Huggins-Zuo equation of state for asphaltene gradients and
957
formation evaluation, Energy & Fuels, 2013, 27, 1722–1735
958 959
Zuo, J.Y.; Jackson, R.; Agarwal, A.; Herold, B.; Kumar, S.; De Santo, I.; Dumont,
960
H.; Beardsell, M.; Mullins, O.C.; A diffusion model coupled with the Flory-
961
Huggins-Zuo Equation of State and Yen-Mullins model accounts for large viscosity
962
and asphaltene variations in a reservoir undergoing active biodegradation, Energy
963
& Fuels, 2015, 29, 1447 −1460
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