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Policy Analysis
Statistically Enhanced Model of In Situ Oil Sands Extraction Operations: An Evaluation of Variability in Greenhouse Gas Emissions Andrea Orellana, Ian J. Laurenzi, Heather MacLean, and Joule A. Bergerson Environ. Sci. Technol., Just Accepted Manuscript • DOI: 10.1021/acs.est.7b04498 • Publication Date (Web): 12 Dec 2017 Downloaded from http://pubs.acs.org on December 21, 2017
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Statistically Enhanced Model of In Situ Oil Sands
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Extraction Operations: An Evaluation of Variability
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in Greenhouse Gas Emissions
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Andrea Orellanaβ, Ian J. Laurenziδ, Heather L. MacLeanγ and Joule A. Bergerson*,β
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β
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Dr NW, Calgary, AB T2N 1N4, Canada
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δ
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3059, USA
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γ
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Department of Chemical and Petroleum Engineering, University of Calgary, 2500 University
ExxonMobil Research and Engineering Company, 1545 Route 22 East, Annandale, NJ 08801-
Departments of Civil Engineering, Chemical Engineering and Applied Chemistry, School of
Public Policy and Governance, University of Toronto, Toronto, Ontario, Canada M5S 1A4
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ABSTRACT
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Greenhouse gas (GHG) emissions associated with extraction of bitumen from oil sands can
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vary from project to project and over time. However, the nature and magnitude of this variability
34
have yet to be incorporated into life cycle studies. We present a statistically enhanced life cycle
35
based model (GHOST-SE) for assessing variability of GHG emissions associated with the
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extraction of bitumen using in situ techniques in Alberta, Canada. It employs publicly-available,
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company-reported operating data, facilitating assessment of inter- and intra-project variability as
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well as the time evolution of GHG emissions from commercial in situ oil sands projects. We
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estimate the median GHG emissions associated with bitumen production via cyclic steam
40
stimulation (CSS) to be 77 kg CO2eq/bbl bitumen (80% CI: 61 – 109 kg CO2eq/bbl), and via
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steam assisted gravity drainage (SAGD) to be 68 kg CO2eq/bbl bitumen (80% CI: 49 – 102 kg
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CO2eq/bbl). We also show that the median emissions intensity of Alberta’s CSS and SAGD
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projects have been relatively stable from 2000 to 2013, despite greater than six-fold growth in
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production. Variability between projects is the single largest source of variability (driven in part
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by reservoir characteristics) but intra-project variability (e.g., startups, interruptions), is also
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important and must be considered in order to inform research or policy priorities.
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INTRODUCTION
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The bitumen in Alberta’s oil sands make up 97% of Canada’s oil reserves, which are the third
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largest proven reserves in the world (approximately 168 billion barrels) following only those of
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Saudi Arabia and Venezuela [1]. Canadian bitumen production was 2.3 million bbl/day in 2014
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and has been predicted to increase to 3.7 million bbl/day by 2030 [2]. More than half of
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Alberta’s bitumen is produced using in situ recovery techniques, among which Steam Assisted
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Gravity Drainage (SAGD) and Cyclic Steam Stimulation (CSS) are the most common. Steam is
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employed in these techniques to heat the bitumen – and thereby reduce its viscosity, so that it
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may be produced from the subsurface reservoir. Once extracted from sand and water, bitumen
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must be either diluted or processed (“upgraded”) before transporting it to refineries. Steam
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generation, on-surface activities (e.g., water treatment) as well as upgrading operations result in
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greenhouse gas (GHG) emissions. The result is generally higher GHG emissions than
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“conventional” crudes on average [3], although there is significant overlap in carbon intensity.
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Moreover, for in situ oil sands production, there isadded complexity to how emissions are
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estimated for different crudesThis has in turn motivated the development of improved models to
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make these assessments.
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Confounding the issue of GHG emissions from oil sands is the variability in emissions from
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project to project as well as over time. Variability is differentiated from uncertainty in that it
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reflects systematic differences between processes, locations or in time while uncertainty is
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associated with lack of data or an incomplete understanding. There are several sources of
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variability in GHG emissions of in situ oil sands operations. Emissions may vary due to
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differences in production practices and reservoir properties (inter-project variability). They may
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also vary due to differences in the maturity of the operating field and operating conditions (intra4 ACS Paragon Plus Environment
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project variability) [3, 4]. For example, SAGD may require different amounts of energy –
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resulting in different GHG emissions – at startup, at steady state and at the end of the project’s
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life.
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Several peer-reviewed life cycle assessments (LCAs) have attempted to quantify the GHG
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emissions associated with transportation fuel products derived from oil sands [5, 6, 7, 8] and
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several government agencies have released public tools that include oil sands pathways among a
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suite of fuel pathways [9, 10, 11]. However, these studies have generally focused on the
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development of a single “point estimate” for the life cycle GHG emissions associated with fuels
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derived from oil sands. Ranges of GHG emissions associated with alternative oil sands
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production technologies were first estimated with the “Greenhouse gas emissions of current oil
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sands technologies” (GHOST) model [3, 12], which employed confidential operator data.
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However, the GHOST model did not quantify the distributions of GHG emissions associated
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with these technologies, nor did it assess the representativeness of the ranges. A few subsequent
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studies have attempted to better understand the variability and uncertainty associated with oil
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sands pathways [13, 14, 15]. However, no study has comprehensively addressed the statistical
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attributes of the ranges of GHG emissions estimates that may result from different oil sands
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extraction pathways, or the temporal nature of GHG emissions over a project’s lifetime.
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In this paper, we report the findings of a study of the variability associated with in situ oil
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sands extraction as estimated by a statistically-enhanced version of the aforementioned GHOST
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model (GHOST-SE). This research improves the statistical representation of operating data and
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input parameters using publicly-available data sets and improved process calculations, and
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generates project-specific distributions of GHG emissions associated with in situ oil sands
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extraction (i.e., the extraction of raw bitumen). We then apply the model to explore inter- and 5 ACS Paragon Plus Environment
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intra-project variability, including the nature and magnitude of the variability, historical GHG
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emissions trends and the effects of operating parameters. When combined with robust estimates
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of GHG emissions associated with pipeline transportation, refining, and the combustion of fuels
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refined from oil sands (60% to 80% of the life cycle GHG emissions [3]), our results may be
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utilized to assess the life cycle GHG emissions associated with oil sands, facilitating comparison
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with other energy sources on a life cycle basis.
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METHODS
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Our analysis of the variability associated with in situ oil sands extraction was conducted by
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improving the GHOST model. The new statistically-enhanced model, GHOST-SE, is
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distinguished from GHOST by the following features:
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1. Use of publicly-available operating data from the Alberta Energy Regulator [16].
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These data include production, steam generation, and electricity usage time series
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throughout major oil sands project lifetimes. Data are disaggregated on a per project
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and per month basis over the life of each project,
109 110
2. Improved process calculations, related primarily to surface facility activities, such as optional cogeneration, and
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3. Monte Carlo (MC) simulation to representatively select operating data and parameters
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for the purposes of generating statistically-meaningful ranges of GHG emissions
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associated with in situ oil sands extraction.
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Similar to the original GHOST model, the improved model takes a life cycle approach (i.e.,
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includes both onsite as well as indirect GHG emissions. For example, indirect emissions such as
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offsite electricity generation, natural gas production are included. This analysis focuses on in situ 6 ACS Paragon Plus Environment
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techniques at the extraction stage. Emissions are reported in kg CO2 equivalent per barrel of
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undiluted bitumen, with CO2 equivalency defined by the 5th Assessment Report of the IPCC
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(AR5) for a 100-year time horizon [17]. A flowchart describing the boundaries of the model are
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provided in Figure S1 of the Supplemental Information (SI).
121 122
Operating Data
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Alberta’s Responsible Energy Development Act [18], requires in situ oil sands project
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operators to report monthly data, including production and steam injection volumes, electricity
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supply and demand, and volumes of associated gas flared and vented. This publicly available
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data [19] replaces the confidential data utilized in the original GHOST model. Inventory data not
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reported on a monthly basis are obtained from the Alberta Energy Regulator’s (AER) Statistical
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Reports ST53: Alberta Crude Bitumen In Situ Production [20] from January 1992 to April 2014
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and the annual In Situ Performance Presentations [21]. The data from in situ annual
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presentations and ST53s are collected for all operating projects reported from the beginning of in
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situ operations in 1985 to 2014. Operating parameters such as the boiler feedwater (BFW)
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temperature, pressure and solution gas composition are collected from each project’s
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Environmental Impact Assessment (EIA), available at the Alberta Government Library [22].
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Provincial electricity grid emission intensities for the province, reported hourly by the Alberta
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Electric System Operator (AESO) [23] are converted into monthly intensity values by
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aggregating hourly data available from 2011-2014.
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To represent commercial oil sands industry operations, only projects with commercial
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production of more than 10,000 bbl/day are considered, leaving pilot projects out of the analysis.
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Projects in the startup phase are excluded because they have not reached steady conditions and 7 ACS Paragon Plus Environment
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data are insufficient to characterize their operations. Details about each project are presented in
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Table S4 in SI.
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After applying the selection criterion and filtering the data, 15 operating in situ projects were
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selected for analysis. Three of these projects are CSS operations, two of which combine steam
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and electricity generation (onsite cogeneration). The other 12 are SAGD operations and half of
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these have cogeneration capacity. The 15 projects represent approximately 75% of the total in
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situ production of the province (303 million barrels out of the 405 million barrels produced in
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2013 – according to the AER’s ST98), offering a good volume-weighted representation of the
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industry. The remaining 25% of production are small facilities, new projects and pilot facilities.
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While we don’t have complete data associated with these projects, our understanding is that none
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of these projects would drastically change the industry wide emissions profile. However, we
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exclude these projects (using the criteria of < 3 years of production and/or under 10,000 bbl/day)
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as they could bias the estimates slightly up or down and we would not have the evidence to
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explain why.
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The inventory data employed by GHOST-SE are summarized in Table 1.
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Table 1. GHOST-SE input parameters for in situ bitumen extraction (SAGD and CSS). Two cases are available in the model. Case 1 employs a natural gas fired boiler for steam generation, and electricity is imported from the grid. Case 2 utilizes onsite cogeneration – a gas turbine and heat recovery steam generator – to supply steam and power. Actual in situ extraction projects feature one or the other. Input
SAGD Range
CSS Range
Distribution
Source
SOR (m3 steam/m3 bitumen) – dry (steam x=100%)
2.2 – 5.9
2.3 – 5.5
Direct Data Sampling
AER ST53 [20]
Electricity (kWh/m3 bitumen)
55 – 247
109 – 264
Direct Data Sampling
AER In situ progress reports [21]
Flared Hydrocarbons (kg CO2e/m3 bitumen)
0.1 – 7.6
0.2 – 6.3
Direct Data Sampling
AER In situ progress reports [21]
Fugitive emissions (kg CO2e/m3 bitumen)
0.3 - 1.0
0.4 – 2.6
Direct Data Sampling
AER In situ progress reports [21]
Solution gas (m3/m3 bitumen)
4.1 – 35.1
43.0 – 89.2
Direct Data Sampling
AER In situ progress reports [21]
Produced steam quality
80%
100%
Uniform
GHOST [12]
Boiler output pressure (MPa)
5.0 – 10.0
5.0 – 10.0
Uniform
Project EIAs [22]
Produced steam enthalpy (kJ/kg)
2,460-2,470
2,460-2,470
Function of boiler pressure and temperature
Project EIAs and superheated steam tables for water [22]
Boiler feedwater temperature (°C)
105 – 202
115 – 150
Custom
Project EIAs [22]
Alberta electricity grid emission factor (g CO2e/kWh)
647 – 761
647 – 761
Custom
Alberta Electricity System Operator [23]
Lower heating value of natural gas fuel (pipeline and solution gas), MJ/m3
37.9
37.9
NA
GHOST [12]
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CASE 1. OTSG BOILER Efficiency – boiler
80% - 85%
80% - 85%
Uniform
GHOST [12]
Efficiency – gas turbine
30% - 35%
30% - 35%
Uniform
GHOST [12]
Efficiency – heat recovery
50% - 60%
50% - 60%
Uniform
GHOST [12]
Efficiency – HRSG direct firing
95%
95%
NA
GHOST [12]
Total Electricity produced (kWh/m3 bitumen)
150 – 600
97 – 199
Direct Data Sampling
AER In situ progress reports [21]
CASE 2. COGENERATION (GT + HRSG)
162 163 164 165 166
Notes: SOR: Steam-to-Oil Ratio; OTSG = Once-Through Steam Generator; GT: Gas Turbine (electricity generator); HRSG: Heat Recovery Steam Generator; SAGD: Steam Assisted Gravity Drainage; AER: Alberta Energy Regulator; EIA: Environmental Impact Assessment; NA: not applicable as constant values are utilized.
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Process Calculation Improvements
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GHOST-SE also includes improvements to the process calculations within the model. These
169
include a more complete treatment of systems where steam and electricity are cogenerated onsite
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and more transparent calculations of the energy requirements of the surface facilities. Detailed
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descriptions of the improvements are reported in Section 1.2 of SI.
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Monte Carlo Simulation
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GHOST-SE employs MC simulation to generate distributions of GHG emissions for each
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project on an annual basis (e.g., kg CO2eq/bbl in 2010) as well as on a project life cycle basis
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(e.g., total kg CO2eq/total bbl since project startup). MC simulation capability is incorporated
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into GHOST-SE using the Oracle Crystal Ball® add-in for Excel®. Testing revealed that 10,000
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MC runs were sufficient to generate stable distributions of GHG emissions for in situ extraction.
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For a given project, the Alberta Energy Regulator (AER) data for a particular month are
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simultaneously selected, preserving relationships between related parameters such as bitumen
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production, injected steam, etc. In cases where a particular data field (e.g., purchased electricity)
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is absent from a project’s time series for a particular month, it is randomly selected from the rest
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of the data pool. Data not appearing in the AER data sets are not correlated with the AER data,
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and are largely modeled as uniform random variables based on data from other sources (see
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Table 1).
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Three types of MC simulations are performed by GHOST-SE:
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1. Industry-wide variability. Simulations of all CSS and SAGD operations over all years
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the projects are operating, to obtain representative distributions of the extraction GHG
189
emissions for these two technologies.
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2. Inter-project variability. Simulations of each CSS and SAGD project over all years
191
the projects are operating, to obtain representative distributions of the extraction GHG
192
emissions for each project over its lifetime.
193
3. Intra-project variability. Simulations of each CSS and SAGD project during each
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year of their life cycle to explore the time evolution of the extraction GHG emissions
195
of each project over its lifetime.
196
The first type of simulation may be used to assess the variability of GHG emissions resulting
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from CSS and SAGD technologies (Industry-wide variability), permitting comparison of their
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emissions using different extraction techniques, etc. Two sampling methods are employed to
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sampling occurs across individual projects and the emission intensity from each project is
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weighted by the production level of that project and “prospective industry emissions intensity”
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where sampling occurs randomly across all projects. The former represents a snapshot of
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industry performance historically from first commercial operation to 2013 where projects that
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have been operating longer have a larger influence on industry-wide emissions. The latter treats
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all sample points as equally likely and therefore represents the distribution of possible
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performance assuming that all projects are equally weighted and could represent future
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performance rather than being more heavily influenced by older projects.
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The second type of simulation assesses variability of GHG emissions associated with each
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project (Inter-project variability). The third type of simulation assesses how variability changes
210
over the lifetime of each individual project (Intra-project variability).
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Projects that began commercial production relatively recently (2007 to present) are of special
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interest for analyzing the effect of well startup operations. At initial reservoir conditions, there is
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negligible fluid mobility due to bitumen’s high viscosity. For SAGD projects, steam is injected
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into both injection and production wells to establish inter-well communication and reduce
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viscosity of the bitumen, allowing it to be produced. As a consequence of higher-than-normal
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steam demand and lower-than-normal crude production, SAGD operations have higher GHG
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emissions per barrel of bitumen at the beginning of project operations. Subsequently, steam
218
requirements stabilize and the project reaches what could be considered “steady state”. At the
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end of a well’s life, the steam requirements increases to the point where it exceeds an economic
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threshold and the well is shut in. Assessment of intra-project variability facilitates comparison of
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GHG emissions during startup- and steady state operations.
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RESULTS
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Industry-wide variability
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In Figure 1 we report the distributions of GHG emissions associated with CSS (in the upper
226
panel) and SAGD (in the lower panel) operations. Vertical lines represent the 10th percentile,
227
median and 90th percentile of the range obtained through Monte Carlo simulation, while the red
228
markers report the distribution means. Estimates of GHG emissions from the literature (e.g., [7,
229
8, 9, 10, and 13]) are reported as points, for comparison. While the previous literature when
230
combined shows variability in emissions, only the current analysis demonstrates that the
231
distribution is positively skewed. This means that observing emissions at the lower end of the
232
distribution is more likely than at the upper end of the distribution. GHOST-SE explicitly
233
quantifies statistics related to the distribution. The industry median GHG emissions for CSS-
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extracted bitumen is 77 kg CO2eq/bbl, and the variability ranges from 61 to 109 kg CO2eq/bbl
235
(80% confidence interval). By contrast, the industry median GHG emissions for SAGD-extracted
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bitumen is 68 kg CO2eq/bbl, and the variability ranges from 49 to 102 kg CO2eq/bbl (80%
237
confidence interval). These ranges of GHG emissions are narrower than those previously
238
reported (e.g., [12] and [24]).
239
Although the mean and median GHG emissions associated with SAGD are lower than those
240
associated with CSS, the distribution of GHG emissions associated with SAGD is multi-modal,
241
suggesting that a subset of SAGD extraction emissions (in time, by project, or both) yields
242
higher emissions on average than CSS. Moreover, the variability associated with emissions from
243
both extraction operations, while similar, is likewise affected by this multi-modality. Higher
244
emissions may be a consequence of higher energy requirements associated with extraction from
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the reservoirs from which these projects produce. Multi-modality, by contrast, may be the result
246
of the initiation of project expansions, etc.
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Ultimately, cumulative industry-wide GHG emissions for CSS and SAGD operations have
248
remained relatively stable over the past fourteen years, even as there has been a dramatic
249
expansion in the province’s in situ operations during that time period. Box plots detailing these
250
trends for SAGD and CSS are in S10 and S11. In theory, there are many factors that could have
251
driven the emissions to be larger or smaller than historic performance. Examples of factors that
252
could increase emissions include changes in reservoir quality over time, or expansion of projects
253
to access alternative reservoirs. Conversely, technological innovation including adoption of co-
254
generation, better well placement, and incremental energy efficiency improvements. A more
255
detailed analysis of these factors is required to draw conclusions regarding the degree to which
256
each of these factors have influenced net industry emissions over the past 14 years.
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Figure 1. Industry-wide cumulative GHG emissions associated with in situ extraction of undiluted bitumen, in cumulative kg CO2eq/cumulative bbl bitumen for a) Cyclic Steam Stimulation (CSS) and b) Steam Assisted Gravity Drainage (SAGD). Blue vertical lines represent the 10th and 90th percentiles of the Monte Carlo GHG emissions ranges obtained from GHOST-SE, while the grey vertical line represents its median value. The light gray area displays the original GHOST range [12]. “Plus signs” represent findings of previously published studies [7, 8, 9, 10, 13].
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industry performance up to 2013. This is in contrast to the alternative method of conducting the
268
Monte Carlo simulation described in the Methods section, which treats all sample points as
269
equally likely and therefore represents the distribution of possible performance if a new project
270
were to come online. These latter results are presented in the SI and show higher emissions for
271
the mean and median, more pronounced skewness and broader distributions with heavier tails.
272
The selection of method for sampling in such Monte Carlo simulations is therefore an important
273
decision that can lead to different interpretations if the analysis is focused on understanding
274
historic performance or the potential emissions of new projects (using the same technology).
Based on the sampling method employed, these distributions represent a snapshot of historic
275 276
Inter-project variability:
277
In Figure 2 and Figure 3, we report the distributions of the cumulative GHG emissions
278
associated with individual in situ oil sands projects. The projects are grouped by extraction
279
technique (CSS, SAGD) and ordered by the median project emissions (lowest value at the top).
280
These distributions quantify the variability of operations over the full life of each project up to
281
2013. The figure also identifies the relative size of each project and whether cogeneration is
282
included (the latter is indicated by an asterisk following the project number). Variability in GHG
283
emissions across the industry appears to be derived from project-specific variability, which in
284
turn depends on the operations associated with each project over time. 15 ACS Paragon Plus Environment
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The distributions reported in Figure 2 and Figure 3 explain the variability illustrated for CSS
286
and SAGD in Figure 1. For instance, Projects 13 and 9 drive the variability of SAGD emissions
287
in Figure 1, however, these projects have less influence on the overall SAGD industry’s
288
emissions than Project 2 contributes to the CSS industry’s emissions. Joint bitumen production
289
asssociated with Projects 1*, 3*, 5* and 6 represents approximately half of the total production
290
of all projects considered in this study (518,000 of approximately 1,043,000 bbl bitumen/day).
291
For SAGD extraction, the variability in GHG emissions associated with certain projects may
292
exceed the range of median GHG emissions across all projects. The median GHG emissions
293
associated with SAGD projects range from 52 kg CO2eq/bbl bitumen to 172 kg CO2eq/bbl
294
bitumen, whereas the full ranges of GHG emissions for Projects 9 and 13 are 144 – 249 and 130
295
– 171 kg CO2eq/bbl, respectively. GHOST-SE results displayed in Figure 2 and Figure 3
296
represent inter-project and intra-project variability: both types need to be considered when
297
discussing ranges of GHG emissions estimates from in situ oil sands extraction as both are
298
important.
299
No correlation of variability in emissions with the use of cogeneration or size of project was
300
identified for SAGD. Projects 5* and 6 have similar distributions (means and ranges) of GHG
301
emissions despite the use of cogeneration in one but not the other – likely a consequence of
302
differences in reservoir quality for the two projects, necessitating a higher SOR (and higher
303
steam load) for Project 5*. Likewise, Projects 7*, 10, 11 and 14* have similar distributions of
304
GHG emissions despite the fact that only two of the projects use cogeneration. Projects 4 and
305
12* are likewise indistinguishable in terms of their GHG emissions, despite differences in the
306
use of cogeneration. We know that cogeneration offers efficiency benefits over the
307
nocogeneration cases, with accompanying fuel, and thus GHG, reductions. However, these 16 ACS Paragon Plus Environment
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effects are likely dwarfed by other drivers such as reservoir characteristics. This is supported by
309
previous work that confirmed SOR is the single most significant parameter in determining the
310
emissions [12]. In addition, other work has confirmed that reservoir characteristics (the basic
311
parameters including depth and thickness of the reservoir, porosity, permeability, gamma ray
312
measurements and oil saturation) explain roughly 80% of the variability in SOR in existing
313
projects [25]. There are methods of crediting emissions to surplus electricity generation sold to
314
the grid that could change the measure of benefits of congeneration. This could, in turn, increase
315
the impact of cogeneration on emissions estimates for in situ extraction [26]. On average, the two
316
CSS projects featuring cogeneration demonstrate lower GHG emissions than the CSS project that
317
does not include congeneration. However, those two projects (1* and 3*) have higher production
318
capacities than the third (2). For CSS, cogeneration may enable lower GHG emissions as part of
319
higher efficiency operations for larger scale operations. However, the impact of cogeneration on
320
the variability of GHG emissions could not be discerned robustly from the three projects
321
considered.
322
Sensitivity analyses conducted using the original GHOST model indicated that the GHG
323
emissions for in situ extraction (both CSS and SAGD) are driven by the amount of steam used to
324
stimulate the petroleum reservoir (mostly generated by burning natural gas): over 90% of the
325
GHG emissions associated with extraction [9]. This is confirmed in the current analysis.
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Figure 2. Distributions of cumulative GHG emissions associated with CSS oil sands projects producing more than 10 kbd. Results are reported in cumulative kg of CO2 equivalent per cumulative barrel of undiluted bitumen. Vertical lines in the histogram represent the median, 10th and 90th percentiles, and means are denoted by red markers. Lighter green coloured projects have production capacities equal to or greater than 60 kbd. Darker purple coloured projects have production capacities between 10 and 60 kbd. Project 3 employs cogeneration.
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Figure 3. Distributions of cumulative GHG emissions (i.e. over the lifetime of each operating project) associated with SAGD oil sands projects. Results are reported in cumulative kg of CO2 equivalent per cumulative barrel of undiluted bitumen. Vertical lines represent the median, 10th and 90th percentiles, and means are denoted by red “x” marks. Lighter 19 ACS Paragon Plus Environment
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338 339 340
green coloured projects have production capacities equal to or greater than 60 kbd. Darker purple coloured projects have production capacities between 10 and 60 kbd. Asterisks indicate projects that employ cogeneration.
341 342
Intra-project variability:
343
To explore the impact of temporal variability, MC simulations of each of the individual
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projects were conducted for each year of their operation. The distributions of GHG emissions for
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each project (CSS and SAGD) were then evaluated as time series. Time series of distributions of
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GHG emissions associated with three projects are illustrated in Figure 4 as examples; time series
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of the remaining twelve projects are presented in S12 to S23 of SI.
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Figure 4. Time evolution of the variability of extraction GHG emissions for SAGD Projects 8*, 6 and 9. Emissions are reported as annual kg CO2e per annual bbl of undiluted bitumen. Distribution means are reported in red, and medians are reported in gray. Blue lines denote 10th and 90th percentiles.
354 355
Project 8* is a SAGD project that has a cogeneration system that supplies steam and electricity
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to the project. Variability in GHG emissions tends to be constant in the latter years of operation,
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but project startup affects the variability of GHG emissions in the early years of operation. When
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annual GHG emissions ranges are weighted by annual bitumen production, the influence of early
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variability in emissions upon the project lifetime variability diminishes over time. Therefore, the
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distribution of cumulative GHG emissions reported in Figure 3 for Project 8* is approximately
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the same as the distribution of emissions associated with operations in 2013. This temporal
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behavior is also observed for Projects 4, 5*, 10, 11, 12 and 13*.
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Project 6 illustrates an alternative time evolution of a project, with distinct characteristics that
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affect variability. In this case, initial variability in emissions (years 2003 – 2008) affects the
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cumulative variability to the extent that the variability in emissions associated with the most
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recent year for which data were available (2013) is different from the cumulative variability of
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the project (Figure 2 and Figure 3). In this case, the distributions of GHG emissions in early
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years are multi-modal. Variability in GHG emissions does not seem to decrease monotonically
369
over time, and does not appear to be associated with any particular distribution. This behavior is
370
a consequence of the project’s production prolificacy and the effect of temporal discontinuities in
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project development. This is akin to multiple “startup effects” as new wells impact the variability
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of steam-to-oil ratios (SORs) within a project and consequently, the variability of associated
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GHG emissions. Most projects have gone through different phases of expansion in their
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production capacity, with consequent startup effects in later years. The time evolutions of the
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variability in GHG emissions associated with Projects 7, 9, 14* and 15 share characteristics
376
similar to those of Project 6, although the effect in Project 6 is the most pronounced.
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That said, bimodal variability in GHG emissions is observed for individual projects despite the
378
absence of startup effects (e.g., Projects 2, 3* and 14*). For these projects, we could not attribute
379
the variability to any particular input parameter (e.g., SOR). We hypothesize that this variability
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is associated with heterogeneity in the reservoirs from which these projects produce bitumen.
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In Figure 4 we also illustrate the range of GHG emissions associated with Project 9, which has
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been commercially operating since 2007 and has the largest range of emissions of all in situ
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projects considered in this study. Our estimates of GHG emissions for this project are
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significantly higher than the previously reported GHOST range of emissions. This project’s
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behavior confirms the presence of outliers and the influence of project specificities (either
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reservoir conditions and/or production strategies) on GHG emissions, that cannot be attributed to
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the industry as a whole.
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GHG emissions associated with the more recent projects (Projects 12* and 15) seem to exhibit
389
bimodal probability distributions. This may be a consequence of variable steam generation and
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bitumen extraction during the initiation of the projects. Estimates of GHG emissions associated
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with recently-initiated projects are calculated with fewer months of data that result in these data
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being more heavily weighted towards the more variable operations. As projects age, data
393
progressively are more heavily weighted to the steady-state operations, in turn masking the peaks
394
in steam demand at startup relative to bitumen production.
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Sensitivity:
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Insofar as the AER data sets are not comprehensive, certain parameters were retained from the
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original GHOST model. Of these, the heating value of natural gas purchased from pipelines and
399
the efficiency of HRSGs (direct fired) had the greatest impact on the results. The dependency of
400
the distribution of GHG emissions associated with Project 1 is illustrated in Figure S24. For this
401
and most projects, either (a) decreasing the LHV from 37.9 to 33.7 MJ/m3 or (b) decreasing the
402
default efficiency from 95% to 82.5% (the default boiler efficiency for non-cogen systems)
403
results in an approximately 10% increase in the estimate of the average GHG emissions
404
associated with an in situ oil sands project. Reduction of either parameter also increases the
405
width of the distributions.
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DISCUSSION
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This analysis improves the previously developed GHOST model with more detailed
410
calculations and the incorporation of publically available input data for all commercial in situ
411
projects. A Monte Carlo simulation is conducted to derive insights about industry-wide trends,
412
inter- and intra-project variability. Arguably, the most significant insight from this analysis is
413
that the use of a statistically enhanced model, GHOST-SE, allows for a better representation of
414
the GHG emissions from oil sands operations. This study confirms that the original GHOST
415
range of emissions (based on proprietary operating data) is generally a good representation of the
416
overall industry-wide range of emissions, but fails to provide information about the probability
417
distribution of emissions to effectively inform decision makers. For example, the positive
418
skewness of the GHG emissions estimates for both CSS and SAGD indicate that studies that
419
have implied a uniform distribution have likely overestimated industry wide estimates. The use
420
of project specific data reported by the AER on a monthly basis throughout the lifetime of each
421
in situ project increases transparency and confirms the calculation of project specific emissions
422
estimates.
423
The wider variability in emissions of some projects could suggest that operating decisions and
424
the learning within each individual project might be exerting a larger influence on the range of
425
GHG emissions for in situ oil sands extraction than other variables, such as reservoir
426
characteristics (reservoir conditions are different across projects, thus the variability they
427
generate will be represented by the variability across projects). Recent work by Akbilgic et al.
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[25] suggests that the reservoir characteristics can explain a large portion of the variability in the
429
SOR (>80%) and by extension, the variability in GHG emissions. Hence, the rest of the
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variability must be due to facilities’ technology selection or deployment strategy. This may
431
explain why the impact of cogeneration or project scale on the variability in GHG emissions is
432
challenging to discern from our results – the variability in extraction GHG emissions associated
433
with the subsurface-driven demand for steam may dominate other factors such as technology
434
choice. Insofar as the Alberta grid has been historically coal based, GHG emissions associated
435
with purchased power have been higher than those associated with cogeneration, thereby
436
reducing net emissions. However, in recent years, the Alberta grid intensity has decreased from
437
949 kg CO2eq/MWh in 1990 to 689 kg CO2eq/MWh in 2014. If the Alberta grid continues to
438
“decarbonize”, then the GHG reductions associated with cogeneration will be reduced.
439
Although we have exclusively considered the upstream emissions of the in situ oil sands life
440
cycle in this paper, this analysis could be expanded to include other extraction methods (e.g.,
441
mining) as well as other life cycle stages (e.g., transport, refining, combustion of transportation
442
fuels). Indeed, the upstream emissions assessed in this paper are only part of total life cycle
443
emissions that need to be accounted for before alternative product pathways can be compared.
444
Once the life cycle has been accounted for and further detailed statistical analysis investigated to
445
show the role that each parameter plays in determining GHG emissions, this tool could be
446
explored for its potential use in predicting GHG emissions associated with new projects to
447
inform decisions at the design and deployment stages. Our results confirm the need to consider
448
the distributions of emissions given the variability is large, positively skewed and the inter-,
449
intra- and time evolution sources of the variability are all important. Finally, we note that a broad
450
view of oil sands GHG emissions, including their variability and uncertainty, must also consider
451
mined oil sands. We will consider these in future research.
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453 454 455
Acknowledgments
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We wish to acknowledge EXXONMOBIL RESEARCH AND ENGINEERING COMPANY for
457
financial support.
458 459
Supporting Information
460 461
The Supporting Information includes a more detailed discussion of the modeling, data and sensitivity analysis.
462 463
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