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Article
Ionic Liquid Design and Process Simulation for Decarbonization of Shale Gas Xinyan Liu, Ying Huang, Yongsheng Zhao, Rafiqul Gani, Xiangping Zhang, and Suo-jiang Zhang Ind. Eng. Chem. Res., Just Accepted Manuscript • DOI: 10.1021/acs.iecr.6b00029 • Publication Date (Web): 06 May 2016 Downloaded from http://pubs.acs.org on May 7, 2016
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Ionic Liquid Design and Process Simulation for Decarbonization of
2
Shale Gas
3
XinyanLiu,†,‡ Ying Huang,† Yongsheng Zhao, † RafiqulGani,§ XiangpingZhang,*,†
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SuojiangZhang,†
5
†
Beijing Key Laboratory of Ionic Liquids Clean Process, State Key Laboratory of Multiphase
6
Complex Systems, Key Laboratory of Green Process and Engineering, Institute of Process
7
Engineering, Chinese Academy of Sciences, Beijing 100190, China
8
‡
Sino-Danish Center for Education and Research, University of Chinese Academy of Sciences,
9 10
Beijing 100049, China §
Department of Chemical & Biochemical Engineering, Technical University of Denmark, DK
11
2800 Kgs. Lyngby, Denmark
12
*Corresponding author: Xiangping Zhang
[email protected] 13
Abstract: Ionic liquids (ILs) have been receiving increasing attention as a potential
14
decarbonization solvent. However, the enormous number of potential ILs that can be synthesized,
15
makes it a challenging task to search for the best IL for CO2 removal from methane. In this work,
16
a method was proposed to screen suitable ILs based on the COSMO-RS (Conductor-like screening
17
model for real solvents) model, an absorption mechanism as well as experimental data. Besides
18
the Henry’s constant, the viscosity and toxicity of ILs should also need to be taken into
19
consideration for an industrial decarbonization process. Furthermore, process simulation was
20
performed to evaluate the new IL-based decarbonization technology. Considering CO2 solubility,
21
CO2/CH4 selectivity and toxicity and viscosity of ILs, [Bmim][NTf2] has been screened to be the
22
potential solvent among 90 classes of ILs. Based on reliable experimental data, rigorous
23
thermodynamic model was established. The simulation results have been found to agree well with
24
the available experimental results. Two process flow sheet options, use of two single-stage flash
25
operations or a multi-stage flash operation following the absorber have been simulated and
26
assessed. Compared with the well-known MDEA (methyldiethanolamine) process for CO2 capture,
27
the single-stage and multi-stage process alternatives would reduce the total energy consumption
28
by 42.8%, 66.04%, respectively. 1
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Keywords: Ionic liquids (ILs); Decarbonization; Methane; COSMO-RS; Process simulation
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1. Introduction
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3
Coal has become a key energy source since the industrial revolution. However, the use of
4
this non-renewable resource may lead to various kinds of environmental pollution. In an effort
5
to satisfy the rising global demand for energy and simultaneously to combat the
6
environmental impacts, such as global greenhouse gas (GHG) emissions, it is necessary to
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search for other energy supply alternatives, such as shale gas, natural gas, and biogas1. China
8
possesses a large potential source of shale gas, which is estimated to be around 31.02 trillion
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cubic meter.2 Compared to other fossil fuels, this gas mixture, primarily composed of methane,
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some light hydrocarbons and impurities, is considered as a “clean” fuel. Before utilization,
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this clean fuel needs to be purified since the impurities. As increasing attention given to
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climate change and CO2 emission, decarbonization has become a very important purification
13
technology that requires further investigation.
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Decarbonization technologies usually employ adsorption, low temperature distillation,
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membrane separation or solvent-based absorption. Since the solvent-based absorption has
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many advantages, such as low cost, easy operation and mature technology, it is therefore also
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widely used in industries. The common solvent-based absorption methods include physical
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absorption, chemical absorption and physical-chemical absorption. In physical absorption, a
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suitable solvent used to absorb and desorb CO2 by changing the conditions of operation.
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Typical solvents, to name a few, are N-methyl pyrrolidone (NMP), polyethylene glycol
21
dimethyl ether, methanol and sulfolane. In chemical absorption CO2 is removed by reacting
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with the solvent. Usually, the reaction is reversible, and the CO2 is absorbed under high
23
pressure and low temperature, and then regenerated by decreasing pressure and raising
24
temperature. The most common solvents for this type of absorption are aqueous amines such
25
as monoethanolamine (MEA), diethanolamine (DEA) and methyldiethanolamine (MDEA),
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which is regarded as the most effective way of separating CO2 from other gases3. However,
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these kinds of solvents have four main disadvantages: 1) low volatility temperature; 2) large
28
solvent-loss; 3) high energy costs for solvent regeneration; 4) corrosion on the equipment 2
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because of high alkalinity.
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With increasing calls for “green” technology, ionic liquids (ILs) have been paid much
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attention. ILs are a class of low-temperature molten salts, which are composed of an organic
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cation and an inorganic anion. Because of non-volatility and good stability, it has been
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considered as new potential solvent for separation. ILs for CO2 absorption has been reported
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by Blanchard4. Zhang et al.5 synthesized a novel dual amino-functionalized IL with a capacity
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of 18.5 wt% for CO2 capture and a good thermal stability. Zhao et al.6 investigated the
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solubility of CO2 in IL-amine hybrid solvents, which has the advantage of cost saving, high
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capacity of CO2 and non-volatility. For shale gas decarbonization, not only solubility of CO2,
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but also selectivity of CO2 to CH4 is the key factor for IL screening. Solubility and selectivity
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of CO2 to CH4 in some ILs have been reported by Ramdin et al.7-9 and Mortazavi-Manesh et
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al.10. These studies mainly focused on the experiment of CO2 absorption in a kind of ILs.
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However, the enormous number of potential ILs also makes it a challenging task to search for
14
the best candidates for CO2 removal. To increase the efficiency of IL screening, prediction
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some of thermodynamic properties of ILs becomes much crucial. The COSMO-RS model is
16
regarded as an effective method for predicting some of the thermodynamic properties of ILs.
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Zhang et al.11 used the COSMO-RS model to screen ILs for CO2 capture, while they mainly
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focused on the Henry’s constant of CO2 in ILs. Lee et al.12 used COSMO-SAC model to
19
predict the activity coefficient and also developed a simple model for fugacity of 4 gas
20
calculation, but their screening process highlighted the new model neglecting some practical
21
application related properties. And Satyro et al.13 predicted the unsymmetrical activity
22
coefficient based on COSMO-RS. Fallanza et al.14 applied it to screen ILs for
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propane/propylene separation system which is different from this work. However, those
24
screening work only considered one limited aspect of solvent property. All of them neglected
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some other crucial properties of ILs during practical industrial. This work established a more
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comprehensive and systematic method for screening of ILs. Not only CO2 solubility and
27
CO2/CH4 selectivity, but also some properties of viscosity and toxicity are taken into
28
consideration. Further, the energy consumption of the process was evaluated based on the 3
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screening result.
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System simulation and assessment is indispensable for developing new processes.
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However, since the shortage of rigorous thermodynamic data for complicated systems,
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IL-based (IL-based) process simulation is rarely reported 15. Shiflett et al. 16 simulated a CO2
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capture process using pure [Bmim][Ac]. Compared with the commercial MEA-based process,
6
the IL-based process showed a higher recovery of 91.3% and achieved higher CO2 purity of
7
98.7%. Moreover, the IL-based system has reduced energy consumption by 16% and the
8
assessment results showed that the investment for the new IL-based process was 11% lower
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than the MEA-based process and also 12% lower in equipment footprint, respectively. Later
10
they also found that [Bmim][PF6] and [Emim][Tf2N], as solvents, can separate an azeotropic
11
mixture containing tetrafluoroethylene(TFE) and carbon dioxide. Based on available
12
experimental solubility data, Shiflett et al.17 simulated this process, which included a single
13
absorption column and flash tank. Besides these steady-state analyses, Valencia-Marquez et al.18
14
also simulated a CO2 capture process based on ILs, and compared it with MEA process through
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techno-economic and dynamic analysis. The results turned out that the IL-based process featured
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lower energy demand and the dynamic analysis showed the CO2 capture IL-plant was a highly
17
nonlinear process.
18
In this work, a more comprehensive and systematic method is proposed to screen
19
suitable ILs than previously reported works based on the COSMO-RS model, absorption
20
mechanism as well as available experimental data, and further evaluated the process. In the
21
solvent screening section, in addition to considering CO2 solubility and CO2/CH4 selectivity,
22
the toxicity and viscosity of the ILs are also taken into consideration in evaluating potential
23
solvents for an industrial decarbonization process. Based on the available experimental data,
24
parameters for the appropriate thermodynamic model are established. Finally, two process
25
cases have been investigated and compared against well-known conventional processes.
26
2. ILs Screening Method
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This method consists of four parts: (1) screening ILs based on the COSMO-RS model,
28
then Henry’s constant of gas in ILs are calculated and the selectivities are evaluated. (2) The 4
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temperature-dependent properties, such as densities, viscosities, surface tensions, heat
2
capacities, and thermal conductivities, are predicted and compared with available
3
experimental data. (3) Gas-liquid equilibrium (GLE) of gas-IL system is established by using
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NRTL model. (4) Process assessment is evaluated under almost the same gas recovery.
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2.1. Screening of ILs
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2.1.1. COSMO-RS Model
7
The thermodynamic models are crucial for the prediction of some basic properties of
8
solvent. In a system at equilibrium, several parameters, such as temperature (T), pressure (P),
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liquid phase components mole fraction (xi), vapor phase components mole fraction (yi) are
10 11 12 13
14
15 16 17 18
necessary to be determined. The typical thermodynamic models for these gas-IL systems are mainly based on the cubic equation of state (EoS) for the gas phase and activity coefficient models 19. The vapor-liquid equilibrium equation based on EoS is as below. =
(1)
=
(2)
Based on activity coefficient, the vapor-liquid equilibrium equation is in Eq. (2) Where is mole fraction of component i in vapor phase; is the fugacity coefficient of component i; is the mole fraction of component i in liquid phase; is the total pressure
of system; is the fugacity of component i under standard state; is activity coefficient of component i.
19
The COSMO-RS model, developed by Klamt et al.20 in 1993, has been used to predict
20
some of thermophysical properties in various systems 21, 22 and also for qualitative analysis. It
21
is considered as an effective method for predicting some of the thermodynamic properties of
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ILs, providing a unique and apriori computational tool for designing ILs with specific
23
properties. In the COSMO-RS model, each molecule is described by the surface charge
24
densities. Then the interaction between molecules is characterized by the surface charge
25
densities () of mutual contacted area of the two molecules, as shown as in Eq.(3).
5
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2
+
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(3) +
#$ , = #$ , = %#$ &'( )0, + #$ ,
1 2 3 4 5 6
Where is the contacted surface area;
8 9 10
is the energy factor; and are the net
screening charge density; is the misfit energy of two molecules. #$ is the
hydrogen interaction energy. and #$ are the misfit energy and hydrogen interaction energy of unit area.
As a result, the chemical potential of each fragment 01 can be calculated as below:
as given in Eq.(5).
01 = −34 × 6( 78 1 9
7
(4)
01 − , : ; < 34
Where 1 is surface screening charge density distribution, it is also called profile;
, is the total molecular interaction energy, which is the sum of and #$ . R is gas constant; T is absolute temperature.
The activity coefficient of the solute can be described as in Eq.(6) 0 − 0 = exp 34
11 12
(5)
(6)
Where 0 is chemical potential; 0 is chemical potential under standard state
In this work, all COSMO-RS calculations were implemented with the COSMOtherm 23
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program
14
this work.
, and the latest parameterization method BP_TZVP_C30_1401
23
was adapted in
15
In the COSMO-RS model, the IL molecules are treated as equimolar mixtures of cation
16
and anion, and the ions are usually treated separately as electro-neutral. Then the COSMO-RS
17
model system can be considered as ternary system (cation + anion + gas). However the value
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of Henry’s constant should be calculated under binary system (IL + gas) due to the integrity of
19
solvent. In the infinitely dilute solution, for a 1:1 IL, the activity coefficient of the gas
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molecule should be converted by a scaling factor of 0.5 from the ternary system to the binary
21
system24. The Henry’s law constant @AB is calculated by Eq.(7).23 ACS Paragon Plus Environment
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C @AB = AB DAB
(7)
C Where AB and DAB are the activity coefficient at infinite dilution and the saturated vapor
2
pressure of gas, respectively. The calculated Henry’s law constants of gas in ILs were all
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under the temperature of 303K.
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2.1.2. Comprehensive screening
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In this work, to separate CO2 from CH4, not only CO2 solubility and CO2/CH4
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selectivity, but also the viscosity and toxicity of solvent are important factor to consider when
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judging a solvent’s potential for industrial applications25. The viscosity of the solvent affects
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much on the CO2 absorption capacity and the toxicity of solvent is the key factor for
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environmental sustainability which needs serious attention when screening a potential CO2
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removal solvent. A comprehensive database on toxicity of ILs is used in this work26. The
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structure has an intimate relationship with its toxicity. Quantitative Structure-Activity
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relationships (QSAR) model is employed to predict the toxicities (EC50 values) of various ILs
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toward the Leukemia rat cell line IPC-8126. The term half maximal effective concentration
14
(EC50) refers to the concentration of a drug, antibody or toxicant which induces a response
15
halfway between the baseline and maximum after a specified exposure time. It is commonly
16
used as a measure of safety. Thus the “green” degree of ILs increases with EC50 value. In this
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work, a ranking system was developed for screening different ILs for CO2 removal with the
18
consideration of various solvent properties including solubility of CO2, selectivity of
19
CO2/CH4, viscosity and toxicity.
20
2.2. Prediction of Thermodynamic Properties
21
Thermodynamic properties, phase equilibrium, and the chemical reaction of the
22
MDEA-H2O-CO2 system are modeled on the basis of the electrolyte nonrandom two-liquid
23
model (E-NRTL). This property method has been widely applied for simulating the amine
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solutions scrubbing process.3,
25
modeling are made after regressing the Non-Random two liquids (NRTL) model parameters
26
with the available experimental data.
27
2.2.1. Scalar Properties
15
For ILs, the property prediction and phase equilibrium
7
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The scalar properties include the critical and volumetric properties of gas and ILs, the
2
normal boiling point and acentric factor, which can be used in many corresponding state
3
correlations for thermodynamic properties, binary parameters. The detailed critical
4
information is obtained from literature.27, 28
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2.2.2. Temperature-Dependent Basic Properties
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In the simulation, the temperature-dependent properties are correlated by empirical
7
equations29-33, where the coefficients correlated based on the experimental data and the range
8
of temperature for those equations are listed in Table 1. These properties are essential for
9
simulation-based assessment, which is important in analyzing energy demand of the whole
10
process.
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2.3. Vapor-liquid Phase Equilibria Modeling
12
In this work, solubility of the light hydrocarbons and N2 in ILs is very low.
10, 37
These
13
components are non-soluble in ILs. As a result, the phase equilibria system contains
14
MDEA-H2O-CO2 system, IL-CO2 system and IL-CH4 system. The physical properties and
15
binary parameters between MDEA and its electrolytic ions were added into the simulation
16
model via a special insert data package of MDEA, called KEMDEA, which is available in
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Aspen Plus. This method has been widely applied in CO2 capture assessment.38, 39 However,
18
since ILs are a kind of new components in the modeling system, the binary parameters of
19
gas-liquid phase are very necessary for the establishment of phase equilibria model in Aspen,
20
which are determined as described in the following.
21 22
Usually, the solubility of the gas in a solvent are represented by Henry’s constant. The relationship of Henry’s constant and other parameters is shown as follows:40
D = lim IJ → IJ →
@E = lim
23 24 25 26 27
(8)
Where p, yi and xi are total pressure, mole fraction of component i in vapor phase and liquid
phase, respectively. is the fugacity coefficient in the vapor phase. HiA is the Henry’s constant in bar of component i in solvent A.
The temperature dependence of the Henry’s constants are correlated by the following equation:40 8
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ln@ = LM +
L+ + LN 6(4 + LO 4 4
(9)
Where Ci is the equation parameters, H is the Henry’s constant in bar.
2
According to the Redlich-Kwong (R-K) equation of state 41, the fugacity coefficient in
3
vapor phase is calculated. Based on the experimental data solubility, the fugacity coefficients
4 5
are obtained by the Redlich-Kwong (R-K) equation of state. Activity coefficient is calculated by NRTL model, as shown in Eq.(14) 19. 6( =
∑1QTM Q RQ SQ ∑1UTM U SU
1
+ VW
AJ] ^A]]
XRQ −
(10)
components; x is the mole fraction; R is the gas constant; T is the absolute temperature; and
Q
=
YZ
7
_`
= Q + aQ /4,
∑1UTM U SUQ
where SQ = exp[−
9
=
∑1UTM U SUQ
∑1TM RQ SQ
6
8
Q RQ \ , RQ
QTM
Q SQ
Q
, c is the number of
SQ is a dimensionless interaction parameter; dQ is energy interaction parameter;
Q
is the
nonrandomness factor which can be fixed at 0.3 used in most polar systems.
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2.4. Process Assessment
11
2.4.1. Gas recovery
12
The process is aimed at CO2 removal from shale gas which mainly contains CH4 and
13
light hydrocarbons. The feed-stream components for the CO2 removal processes simulation
14
are taken from a typical component of the shale gas
15
Table 2. As the shale gas is derived from underground at relatively high pressure (20~100 bar),
16
the inlet gas pressure can assumed at 60 bar.
42
after desulphurization, as given in
17
This feed gas is used for both the IL-based plant and the MDEA-based plant simulation
18
and analysis. As a way to measure the amount of CO2 captured by these processes, the CO2
19
mole fraction in the purified gas and CO2 and CH4 recovery indicators are used. According to
20
the specification of the commercial natural gas, the CO2 should be less than 3% in mole
21
fraction43. The gas recovery is calculated as follows: efgh ijklim =
L@O ijklim =
22
nfgh oph qrstuv nfgh wttx
nfyz {|sJwJtx }uq qrstuv nfyz wttx
(11) (12)
Where nfgh u~Jx }uq is the flow rate of CO2 in the CO2 stream and nfgh wttx is the flow rate 9
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of CO2 in the feed gas (gasin) stream; nfyz }uq|r qrstuv is the flow rate of CH4 in purified gas (gasout) stream and nfyz wttx is the flow rate of CH4 in the feed gas (gasin) stream (see notation in Figure 1and 2). 2.4.2. Energy Consumption Estimation
5
Energy consumption of a whole process is an important indicator 4of process
6
evaluation44. The total energy consumption includes the thermal energy and the electricity
7
consumption. The total energy consumption (TEC) is calculated as shown in Eq.(13).
8
Additionally, various kinds of raw gas and different technologies make it hard to evaluate the
9
process. Thus, specific energy consumption (SEC) is proposed as an indicator for comparison
10
of different process. It can be calculated as highlighted in Eq.(14). TEC = + # × e SEC =
11 12 13
4L &k
(13) (14)
Where is the electricity consumption in compressor 1 and pump 1; # is the heat duty
in regenerator; e is conversion efficiency of thermal energy to electricity, which is usually around 0.3-0.445-48, so 0.384 is used in this work. The SEC and TEC are the specific energy
14
consumption (MJ/kg CH4), total energy consumption (MJ/h) respectively.
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3. Process Description
16
In this work, the conceptual design of the individual unit operations (Figure 1 and 2)
17
used to remove CO2 from shale gas to meet the specification of purified gas was performed
18
with the support of Aspen Plus process simulations. The flowsheet of IL-based process is
19
evaluated as shown in Figure 1. The feed gas enters from bottom of absorber at the condition
20
of 293.15K and 60 bar, contacting the aqueous IL counter-currently. Rich solvent flows into
21
the flash1 (15 bar) to recycle the light hydrocarbons. The CO2 is released in flash2 through
22
slightly increasing of the temperature to 300.15K and reducing the pressure to 1 bar. The lean
23
solvent is cooled to 298.15K and pumped to 60 bar again for reusing. The flow sheet in Aspen
24
Plus is shown in Figure S2 of Supporting Information.
25
Besides this two single-stage flash process, another decarburization process49 has been 10
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paid much attention for its lower heat consumption, as shown in Figure 2. The regeneration of
2
physical solvents can be achieved by reducing the pressure of rich solvent stream in a series
3
of multi-stage flash vessels. The flow sheet in Aspen Plus is shown in Figure S3 of
4
Supporting Information.
5
The aim of the steady-state design of CO2 removal IL-based process is to evaluate the
6
energy consumption. A typical MDEA decarbonization process with the same feed gas
7
condition is also simulated for making a comparison with IL-based process under the same
8
CO2 recovery and CH4 recovery. This process mainly includes an absorber and a regenerator.
9
Feed gas contacts the solvent in a packed counter-current absorber under 60 bar. The lean
10
solvent can be regenerated by a reboiler and has a heat exchange with the rich solvent to save
11
much energy. The flow sheet in Aspen Plus is shown in Figure S1 of Supporting Information.
12
4. Results and Discussion
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4.1. Selection of ILs
14
Based on some previous studies7, 10, 50 about solubility of CO2 and CH4, 90 kinds of
15
mostly common ILs have been analyzed to select a set of IL-solvents with convenient
16
properties as CO2 absorbents for CO2and CH4 gas mixture. The cations include [HOemim],
17
[Emim], [Bmim], [Hmim], [Omim], [MeButPyrr], [N4111], [N-bupy], [Hmpy]; anions
18
include [DEP], [C2SO4], [CH3SO4], [NO3], [OTF], [FEP], [BF4], [Tf2N], [DCA], [TCA]. The
19
solubility is evaluated by the Henry’s constant, which is calculated directly by the activity
20
coefficients and the vapor pressures of the compounds in COSMO software. Combined with
21
the toxicity and viscosity, a prospective IL is chosen as a potential solvent to absorb CO2 from
22
the shale gas.
23
4.1.1. Henry’s constant of CO2 and CH4 in ILs
24
The Henry’s law constants of CO2 in these 90 ILs are predicted by the COSMO-RS
25
method at 303.15K, as shown in Figure 3. Detailed data is given in Table S1 of Supporting
26
Information.
27
Based on the color variance, it confirms that the solubility of CO2 increases with the
28
length of alkyl chain in the cation of same kind of ILs. This is due to the fact that the longer 11
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1
alkyl chain has bigger volume of anion, which leads to strong interactions among the related
2
molecules and large absorption capacity. And the cations have less effect on the solubility
3
than the anions. These characteristics are consistent with the conclusions in the literature 24, 37,
4
51, 52
5 6
. Similarly, the predicted Henry’s constants of CH4 in ILs are shown in Figure 4 and data
is listed in Table S2 of Supporting Information.
7
The predicted data demonstrates that the Henry’s constant of CH4 in ILs is much higher
8
than that of CO2. As Henry’s constant is inversely proportional to solubility, the solubility of
9
CO2 is higher than the solubility of CH4. This can be explained by the highest molecular
10
quadrupole moments of CO2 and the highest interaction energies between IL and CO2 53. Then
11
it is possible to absorb CO2 from the mixed gases containing CH4 using the selected IL. The
12
general tendency for solubility of CH4 in ILs is similar to that of CO2, which the solubility of
13
CH4 increases with the alkyl chain in the cation of same kind of ILs and the anion affects
14
mostly.
15
4.1.2. Selectivity of CO2 to CH4
16 17
A higher selectivity value commonly results in an easy separation process for the gas mixture. The CO2/CH4 selectivity is calculated by the Eq. (15).8 fgh /fyz =
18 19 20
@fyz @fgh
(15)
Where fgh /fyz is the selectivity of the absorbing component CO2 over CH4; @fyz and
@fgh are the Henry’s constant of component CO2 and CH4 in ILs, respectively.
The predicted selectivity of CO2/CH4 is shown in Figure 5. It highlights that the
21
selectivity of CO2/CH4 decreases with the length of alkyl side chain in the cation of same kind
22
of the ILs. For example, the rank of selectivity of CO2/CH4 in imidazolium ILs is
23
[Emim][NTf2] > [Bmim][NTf2] > [Hmim][NTf2] > [Omim][NTf2]. Therefore, the trend of
24
selectivity of CO2/CH4 is inverse to the trend of solubility for the same kind of ILs. The same
25
behavior is observed to the property of permeability and separation factor of CO2/CH4 in
26
polymer membrane 54. As a result, these are trade-off parameters as the selectivity of CO2/CH4
27
decreases with increasing solubility of CO2 in same kind of ILs. It is very difficult to select a 12
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kind of IL with both high solubility and high selectivity. Imidazolium-based ILs can be the
2
potential ILs for two main reasons: 1) relatively high solubility of CO2 due to the
3
hydrogen-bond interaction between CO2 and the C2 carbon on imidazole ring52,
4
available for sufficient experimental data of some basic properties for process simulation. As
5
a result, imidazolium-based ILs was chosen for further research. Moreover, a longer cation
6
side chain is commonly accompanied by high viscosity56, 57. Hence, it is better to choose ILs
7
containing [Emim]+ or [Bmim]+. However, [Emim]+ may crystallize easily under low
8
temperature58 and has relatively lower solubility59. As a result, [Bmim]+ is chosen as a
9
potential cation. The comparison of solubility of CO2 and selectivity of CO2/CH4 in various
10 11
55
; 2)
ILs with [Bmim]+ is shown in Table 3 According to Table 3, [Bmim][TCA], [Bmim][NTf2] and [Bmim][DCA] can be applied
12
as the potential decarbonization solvent due to their relatively high solubility and selectivity.
13
4.1.3. Toxicity and viscosity of ILs
14
Table 4 gives the EC50 value
26, 60
and viscosity
29, 30, 34, 35, 61, 62
of ILs with [Bmim] as
15
cation, higher EC50 indicates lower toxicity. IL with [DEP], [C2SO4], [FEP] has the lower
16
selectivity. The raw material of [TCA] synthesis contains cyanogen chloride
17
kind of colorless and highly toxic inorganic compound. Hence, they were not chosen as the
18
optimal IL for decarbonization process in industrial application. What’s more, [Bmim][NTf2]
19
shows the highest EC50 indicates and relative lower viscosity among the studied ILs. Hence,
20
[Bmim][NTf2] is selected as the optimal solvent.
21
4.2. Validation of Thermodynamic Property Models
63
, which is a
22
Scalar properties collected from the literature are listed in Table S3 of Supporting
23
Information. As shown in Figure 6, the predicted value for physical properties in Table 1
24
displays high accordance with the experimental data with the AARD less than 8%.
25
4.3. Phase Equilibrium Calculation Results
26 27 28
The parameters of Henry’s constant in binary system are listed in Table S4 of Supporting Information. And the NRTL parameters are given in Table 5. Thus the phase equilibrium data for this system is established. Figure 7 shows the 13
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1
comparison of experimental results with calculated results. It shows that the calculated values
2
are in good agreement with the experimental data64, 65 with an AARD of 8.54%, 4.36%,
3
respectively. The detailed value is shown in Supporting Information of Table S5 and S6 This
4
good accordance indicates the reliability of the thermodynamic model in the availability of
5
process simulation.
6
4.4. Sensitivity analysis
7
4.4.1. Stages number of absorber and consumption of ILs
8
Figure 8 shows the effect of the ILs demand and the stage number. It is known that the
9
separating efficiency in the absorber increases with the stage number. Based on Figure 8, 10
10
trays for the absorber are enough to meet the separation specification. Adding more trays have
11
little effect on the mole fraction of CO2 in purified gas. Ultimately, the stage number of
12
absorber was determined at 10.
13
After fixing stage number at 10, the relationship between flowrate of ILs and CO2
14
concentration of the purified gas is shown in Figure 9. It is obvious that the optimal
15
circulating solvent is determined to 600000 kg/h.
16
4.4.2. Pressure of Flash tank
17
As in Figure 1, the regeneration system includes two flash columns, the first one is for
18
methane recovery, and the second one is for solvent and CO2 regeneration. The pressure of the
19
flash-1 determines the quantity of methane recycle, which simultaneously affects the acid gas
20
purity in flash 2.
21
As shown the blue line in Figure 10, the recovery of CH4 linearly decreased with the
22
increase of pressure of flash-1. From this aspect, it seems that the pressure should be as low as
23
possible. However, based on the red line in Figure 10, under low pressure, the recovery of
24
CO2 is below 60%. And as the pressure increasing, the recovery of CO2 increases sharply at
25
first. When the pressure reaches to 15 bar, the CO2 recovery increases slightly. What’s more,
26
the low pressure may also lead to high energy consumption for CH4 recycle. Therefore, to
27
make sure a relatively high CO2 recovery rate, the flash 1 pressure is decided at 15 bar.
28
The flash 2 pressure is studied to achieve the minimal electricity-specific consumption, 14
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which means the electricity needed for recycling 1kg CO2, as shown in Figure 11.
2
As shown in Figure 11, the electricity-specific consumption decreases at the start and
3
when the flash pressure exceeds 1 bar, it starts to increase a little. Then the optimal value of
4
flash2 pressure is about 1 bar. The main reasons for such a trend are as follows. At low flash
5
pressure, with the flash pressure increasing, it needs less energy for compressing CO2 to
6
recycle. While the pressure increases to 1 bar, the CO2 regeneration rate starts to decrease,
7
which contributes to the increase of energy consumption for per kilogram of CO2.
8
4.4.3. Comparison of different components of raw gas
9
The energy consumption also has a close relationship with the initial CO2 concentration
10
of raw gas. In this section, the influence of initial concentration of CO2 on electricity, heat
11
duty and solvent consumption are investigated under the same solvent lean load for IL-based
12
initial decarbonization process, as shown in Figure 12. Detailed information is shown in Table
13
S7 of Supporting Information.
14
The total amount of raw gas is 2000 kmol/h. The ratios of volume for CO2/CH4 are set
15
to 1/4, 2/3, 3/2, 4/1, respectively. As shown in Figure 12 (a) and (c), with the increasing of
16
CO2 concentration, the consumption of electricity, heat duty and circulating solvent all
17
increase gradually. This is ascribed to the fact that more CO2 capture needs more energy to
18
regenerate and recycle. However, looking into the specific energy consumption (SEC) in (b),
19
it is interesting to find that the SEC of CO2 decreases with the increase of CO2 concentration.
20
While for CH4, it displays a reverse tendency. This is due to higher CO2 concentration has
21
higher CO2 partial pressure which is captured easily and mostly by the solvent under relative
22
low pressure and same solvent lean load.
23
4.5. Comparison of the MDEA and IL-Based Processes
24
Following processes are simulated: (1) 50wt% conventional MDEA process is simulated
25
as reference case. (2) two single-stage IL-based process is established. (3) multi-stage flash
26
IL-based process is simulated as the optimal process.
27
These processes are aimed to purify the shale gas, as a way to measure the process, gas
28
recovery is an important parameter. And the comparison of these processes should be made 15
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1
under relatively the same gas recovery (see the given values in Table 6).
2
4.5.1. Solvent Demand
Page 16 of 41
3
As shown in figure 13, the solvent demand in IL-based process is larger than that of the
4
MDEA process. This is because the IL-based process is physical absorption while MDEA is
5
chemical absorption, which leads to a larger solubility of acid gas in MDEA than that of in
6
ILs. Although the IL-based decarbonization process needs large amount of solvent, it
7
possesses several advantages such as little loss rate, thermostability, non-corrosion and
8
non-volatility, which gives long-term benefits. Under almost the same gas recovery, the
9
multi-stage flash method process needs 33.3% less solvent than that in two single-stage
10
IL-based process.
11
4.5.2. Energy Consumption
12 13
The energy consumption in this process includes two parts: electricity and thermal energy. Figure 14 shows the comparison result of three processes.
14
As shown in Figure 14 (a), the IL-based process consumes more electricity than MDEA
15
process. This main difference lies in the recovery of light hydrocarbon pressurized again into
16
the absorber. Nevertheless, as for the thermal energy consumption, it shows that the IL-based
17
process requires less regeneration thermal energy than the MDEA process, which is attributed
18
to the difference of regeneration mechanism. In IL-based process, the CO2 removal is a
19
physical absorption and the regenerator is flash column, where CO2 can be regenerated by
20
adding a little heat and reducing the pressure. In the MDEA process, the regenerator is a
21
stripper containing a reboiler at the bottom, where large thermal duty is essentially a sum of
22
the energy utilized for three main purposes: raising the temperature of CO2-loaded solution to
23
the boiling point, breaking the chemical bonds between CO2 and MDEA, and stripping CO2
24
and water from the rich solvent. Figure 14 (a) shows the total energy consumption (TEC) in
25
MDEA is two times larger than IL-based process. The same behavior is also observed for
26
SEC, as shown in Figure 14 (b). Comparing with the two IL-based processes, the multi-stage
27
flash process can save 39.4% energy consumption. It is better to choose the multi-stage flash
28
IL-based decarburization process. 16
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5. Conclusion
2
This work has evaluated the energy consumption of IL-based decarbonization process
3
through rigorous thermodynamic property modeling and process simulation as well as a
4
comparison with the traditional MDEA decarbonization process.
5
The COSMO-RS model has been used in this work for choosing the effective solvent for
6
shale gas decarbonization. 9 kinds of cations and 10 kinds of anions have been chosen for the
7
screening of the IL candidates. Based on COSMO-RS, the Henry’s constant of CO2 and CH4
8
in these ILs have been calculated. Under additional consideration of toxicity and viscosity,
9
[bmim][NTf2] has been chosen for further assessment. Thermodynamic property models
10
related to this IL-based decarbonization process, including the physicochemical properties
11
and phase equilibrium, have been developed. The calculated results show good agreement
12
with the experimental data, which indicates the models and parameters are reliable for use in
13
process simulation.
14
Two processing options have been considered for the IL-based decarburization process.
15
Reliable and validated thermodynamic property models have been used in the simulations. In
16
two single-stage process, an absorber with stage number of 10 and two flashes at different
17
pressure (15 bar, 1 bar,) are set up through sensitivity analysis. In multi-stage flash process,
18
the IL-rich solvent is regenerated using the pressure-swing option with four adiabatic flash
19
vessels arranged in series at pressures 55, 40, 30 and 0.4 bar, respectively. These flash drums
20
lead to a lower energy consumption (739.18 kWe) comparing with the initial process (1245.72
21
kWe).
22
Compared with the MDEA process, the two single-stage and multi-stage flash processes
23
show 42.8%, 66.04% reduction in total energy consumption, respectively. Detailed
24
calculation of energy distribution depicted that the electricity consumption of IL-based
25
process is higher than that in MDEA process, while the thermal energy consumption is less a
26
lot. A detailed cost analysis will be performed in our future work.
27 28
In summary, the IL-based process could realize energy-saving and environmental friendly carbon capture, which provides a perspective capture technology for the future. 17
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Page 18 of 41
Supporting Information
2
Following tables and discussion: Henry’s constant of CO2 and CH4 in 90 kinds of ILs,
3
basic parameters of correlations for physicochemical properties prediction, comparison of
4
predicted value and experimental value for CO2 and CH4 solubility in ILs, key operation
5
parameters of key equipment in MDEA and IL-based decarbonization processes, column
6
profiles of the absorber and regenerator of those processes, and mass and energy balance
7
information on the process streams. This information is available free of charge via the
8
Internet at http://pubs.acs.org/.
9 10
AUTHOR INFORMATION
11
Corresponding Authors
12
*Tel./fax:+86-010-82544875. Email:
[email protected] 13
*E-mail:
[email protected] 14
Notes
15
The authors declare no competing financial interest.
16
ACKNOWLEGEMENTS
17
This work was supported by the National Natural Science Fund for Distinguished Young Scholars
18
(21425625), the National Natural Science Foundation of China (21506219), Beijing Natural
19
Science Foundation(2142029), and the External Cooperation Program of BIC, Chinese Academy
20
of Sciences (l22111KYS820150017)
21
18
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LIST OF SYMBOLS
2
pis= vapor pressure of pure component i
3
P= pressure, Pa
4
T= temperature, K
5
xi= composition of component iin liquid
6
yi= composition of component iin vapor
7 8 9 10 11 12 13 14 15 16 17 18 19 20 21 22 23 24 25 26 27 28
=vapor phase fugacity coefficient of component i =liquid phase fugacity coefficient of component i γi= activity coefficient
Emisfit=misfit energy of two molecules.
=energy factor.
=charge density, Coulomb/m2
=contacted surface area, m2 Ehb=hydrogen interaction energy, Coulomb
0 =chemical potential.
γi∞= the infinite dilution activity coefficient of component i
=density,g.cm-3
Ci= the coefficient of properties of IL equation
0= viscosity, Pa*S
=surface tension, mN/m
4i =relatice temperature of IL.
Tc=critical temperature of IL,K.
=thermal conducticity, W/mK. fi=fugacity, bar.
HiA= Henry’s law constant of component i in solvent A, Pa
e =the recovery of gas component i
&k, =the mass flow of iout of absorber, kg/h.
&, =the total mass flow of i in the system, kg/h 19
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1 2 3
Page 20 of 41
=the electricity consumption, kW. # =heat duty in regenerator, kW. Si=selectivity of CO2/CH4.
4
20
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Abbreviations
COSMO-RS
Conductor-like-Screening Model for Real Solvents
GHG
Greenhouse gas
PSA
Pressure swing adsorption
TSA
Temperature swing adsorption
NMP
N-methyl pyrrolidone
ILs
Ionic liquids
EoS
Equation of state
SSW
Sticky-shield method
QSAR
Quantitative structure-activity relationship
AARD
Average absolute relative deviation
TEC
Total energy consumption
SEC
Specific energy consumption
[HOemim]
1-ethyl-3-methylimidazolium
[emim]
1-ethyl-3-methylimidazolium
[bmim]
1-butyl-3-methylimidazolium
[hmim]
1-hexyl-3-methylimidazolium
[omim]
1-octyl-3-methylimidazolium
[MeButPyrr]
1-butyl-1-methylpyrrolidinium
[N4111]
Butyltrimethylammonium
[N-bupy]
1-butylpyridinium
[hmpy]
1-hexyl-3-methylpyridinium
[TCA]
Tricyanomethanide
[DCA]
Dicyanamide
[BF4]
Tetrafluoroborate
[OTF]
Trifluoromethanesulfonate
[NO3]
Nitrate
21
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[CH3SO4]
Methylsulfate
[Tf2N]
Bis(trifluoromethylsulfonyl)-imide
[C2SO4]
Ethylfulfate
[FEP]
Tris(pentafluoroethyl)trifluorophosphate
[DEP]
Diethylphosphate
Page 22 of 41
1 2 3
Greek letters
4
ρ = density, g cm−3
5
η = viscosity, mPa s
6
σ = surface tension, mN m−1
7
λ = liquid thermal conductivity, W m−1 K−1
8
ω = acentric factor
22
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Prospective Solvents for Natural Gas Sweetening and CO2 Capture Technology—A Review. Int. J. Greenhouse Gas Control 2014, 20, 87-116. (16). Shiflett, M. B.; W.Drew, D.; A.Cantini, R.; A.Yokozeki, Carbon Dioxide Capture using Ionic Liquid 1-Butyl-3-methylimidazolium Acetate. Energy Fuel 2010, 24, (10), 5781-5789. (17). Shifletta, M. B.; Shiflett, A. D.; Yokozeki, A., Separation of Tetrafluoroethylene and Carbon Dioxide using Ionic Liquids. Sep.Purif. Technol. 2011, 79, (3), 357-364. (18). Valencia-Marquez, D.; Flores-Tlacuahuac, A.; Ricardez-Sandoval, L., Technoeconomic and Dynamical Analysis of a CO2 Capture Pilot-Scale Plant Using Ionic Liquids. Ind. Eng. Chem. Res. 2015, 54, (45), 11360-11370. (19). Ma, P., Chemical Engineering Thermodynamics. Chemical Industry Press: Beijing, 2009. (20). Klamt, A.; Schuurmann, G., COSMO A New Approach to Dielectric Screening in Solvents with Explicit Expressions for the Screening Energy and its Gradient. J. Chem. Soc. Perkin.Trans. 2 1993, 2, 799. (21). Eckert, F.; Klamt, A., Fast Solvent Screening via Quantum Chemistry COSMO-RS Approach. AIChE J. 2002, 48, (2), 369-385. (22). Diedenhofen, M.; Eckert, F.; Klamt, A., Prediction of Infinite Dilution Activity Coefficients of Organic Compounds in Ionic Liquids Using COSMO-RS. J. Chem. Eng. Data 2003, 48, 475-479. (23). Eckert, F., COSMOtherm_Manual: Version C3.0 Release 14.01. COSMOlogic GmbH & Co KG: Imbacher Weg 46, D-51379 Leverkusen, Germany, 2013. (24). Lei, Z.; Dai, C.; Chen, B., Gas Solubility in Ionic Liquids. Chem. Rev. 2014, 114, (2), 1289-1326. (25). Ji, L.; Bonnin-Nartker, P.; Klidas, M. G.; Zhang, R. In Solvent Selection for Commercial Deployment of B&W PGG’s RSAT TM CO2 Scrubbing Process, The 35th International Technical Conference on Coal Utilization & Fuel Systems, 2010; 2010. (26). Zhao, Y.; Zhao, J.; Huang, Y.; Zhou, Q.; Zhang, X.; Zhang, S., Toxicity of Ionic Liquids: Database and Prediction via Quantitative Structure-activity Relationship Method. J Hazard Mater. 2014, 278, 320-329. (27). Kabo, G. J.; Paulechka, Y. U.; Kabo, A. G.; Blokhin, A. V., Experimental determination of enthalpy of 1-butyl-3-methylimidazolium iodide synthesis and prediction of enthalpies of formation for imidazolium ionic liquids. J. Chem. Thermodyn. 2010, 42, 1292-1297. (28). Valderram, J. O.; Rojas, R. E., Critical Properties of Ionic Liquids. Revisited. Ind. Eng. Chem. Res. 2009, 48, (14), 6890-6900. (29). Jacquemin, J.; Husson, P.; Padua, A. A. H.; Majer, V., Density and Viscosity of Several Pure and Water-saturated Ionic Liquids. Green Chem. 2006, 8, (2), 172-180. (30). Mokhtarani, B.; Sharifi, A.; Mortaheb, H. R.; Mirzaei, M.; Mafi, M.; Sadeghian, F., Density and Viscosity of 1-butyl-3-methylimidazolium Nitrate with Ethanol, 1-propanol, or 1-butanol at Several Temperatures. J.Chem. Thermodyn. 2009, 41, (12), 24
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1432-1438. (31). Ge, R.; Hardacre, C.; Jacquemin, J.; Nancarrow, P.; Rooney, D. W., Heat Capacities of Ionic Liquids as a Function of Temperature at 0.1 MPa.Measurement and Prediction. Chem. Eng. Data 2008, 53, 2148-2153. (32). Klomfar, J.; Souckova, M.; Pátek, J., Surface Tension Measurements with Validated Accuracy for four 1-alkyl-3-methylimidazolium Based Ionic Liquids. J. Chem. Thermodyn. 2010, 42, (3), 323-329. (33). Ge, R.; Hardacre, C.; Nancarrow, P., Thermal Conductivities of Ionic Liquids over the Temperature Range from 293 K to 353K. J. Chem. Eng. Data 2007, 52, 1819-1823. (34). Sa´nchez, L. G. n.; Espel, J. R.; Onink, F.; Meindersma, G. W.; Haan, A. B. d., Density, Viscosity, and Surface Tension of Synthesis Grade Imidazolium Pyridinium, and Pyrrolidinium Based Room Temperature Ionic Liquids. J. Chem. Eng. Data 2009, 54, 2803-2812. (35). Ge, M.-L.; Zhao, R.-S.; Yi, Y.-F.; Zhang, Q.; Wang, L.-S., Densities and Viscosities of 1-Butyl-3-methylimidazolium Trifluoromethanesulfonate + H2O Binary Mixtures at T=(303.15 to 343.15) K. J. Chem. Eng. Data 2008, 53, 2408-2411. (36). Deetlefs, M.; Seddon, K. R.; Shara, M., Predicting physical properties of ionic liquids. Phys. Chem. Chem. Phys. 2006, 8, (5), 642-9. (37). Zhang, X.; Zhang, X.; Dong, H.; Zhao, Z.; Zhang, S.; Huang, Y., Carbon capture with ionic liquids: overview and progress. Energ. Environ. Sci. 2012, 5, 6668-6681. (38). Descamps, C.; Bouallou, C.; Kanniche, M., Efficiency of an Integrated Gasification Combined Cycle (IGCC) power plant including CO2 Removal. Energy 2008, 33, (6), 874-881. (39). Koytsoumpa, E. I.; Atsonios, K.; D.Panopoulos, K.; Karellas, S.; Kakaras, E.; Karl, J., Modelling and assessment of acid gas removal processes in coal-derived SNG production. Appl. Therm. Eng. 2015, 74, 128-135. (40). Gmehling, J.; Kleiber, M.; Rarey, J., Chemical Thermodynamics for Process Simulation. John Wiley & Sons: 2012. (41). Redlich, O.; Kwong, J., An Equation of State Fugacities of Gaseous Solution. Chem. Rev. 1949, 44, 233-244. (42). Hill, R. J.; M.Jarvie, D.; Zumberge, J.; Henry, M.; Pollastro, R. M., Oil and Gas Geochemistry and Petroleum Systems of the Fort Worth Basin. AAPG Bull. 2007, 91, (4), 445-473. (43). Wang, Y., Natural Gas Treatment Principle and Technology. China petrochemical Press: Beijing, 2007. (44). Sakwattanapong, R.; Aroonwilas, A.; Veawab, A., Behavior of Reboiler Heat Duty for CO2 Capture Plants Using Regenerable Single and Blended Alkanolamines. Ind. Eng. Chem. Res. 2005, 44, 4465-4473. (45). Katzer, J., The Future of Coal. Massachusetts Institute of Technology, 2007. (46). Luo, H.; Bildea, C. S.; Kiss, A. A., Novel Heat-Pump-Assisted Extractive Distillation for Bioethanol Purification. Ind. Eng. Chem. Res. 2015, 54, (7), 25
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2208-2213. (47). Haro, P.; Ollero, P.; Villanueva Perales, A. L.; Gómez-Barea, A., Thermochemical biorefinery based on dimethyl ether as intermediate: Technoeconomic assessment. Appl. Energ. 2013, 102, 950-961. (48). Wu, B.; Zhang, X.; Bao, D.; Xu, Y.; Zhang, S.; Deng, L., Biomethane production system: Energetic analysis of various scenarios. Bioresource Technol 2016, 206, 155-163. (49). Rufford, T. E.; S. Smart; Watson, G. C. Y.; Graham, B. F.; J. Boxall; Costa, J. C. D. d.; May, E. F., The Removal of CO2 and N2 from Natural Gas: A Review of Conventional and Emerging Process Technologies. J. Pet. Sci. Eng. 2012, 94-95, 123-154. (50). Revelli, A.-L.; Mutelet, F.; Jaubert, J.-N., High Carbon Dioxide Solubilities in Imidazolium-Based Ionic Liquids and in Poly(ethyleneglycol) DImethyl Ether. J. Phys. Chem. B 2010, 114, 12908-12913. (51). Torralba-Calleja, E.; Skinner, J.; Gutiérrez-Tauste, D., CO2 Capture in Ionic Liquids: A Review of Solubilities and Experimental Methods. J. Chem. 2013, 2013, 1-16. (52). Cadena, C.; Anthony. J.; Shah. J., Why is CO2 so soluble in imidazolium-based ionic liquids. J. Am. Chem. Soc. 2004, 126, (16), 5300-5308. (53). Tian, X. System Integration of Processes using Ionic Liquids. Chinese Academy of Science, Beijing, 2011. (54). Robeson, L. M., The upper bound revisited. J. Membrane Sci. 2008, 320, (1-2), 390-400. (55). Kazarian, S. G.; Briscoe, B. J.; Welton, T., Combining ionic liquids and supercritical fluids: in situ ATR-IR study of CO2 dissolved in two ionic liquids at high pressures. Chem. Commun. 2000, (20), 2047-2048. (56). Xiao, D.; Hines, L. G.; Li, S.; Bartsch, R. A.; Quitevis, E. L., Effect of Cation Symmetry and Alkyl Chain Length on the Structure and Intermolecular Dynamics of 1,3-Dialkylimidazolium Bis(trifluoromethanesulfonyl)amide Ionic Liquids. J. Phys. Chem. B 2009, 113, 6426-6433. (57). Li, S.; Bañuelos, J. L.; Guo, J.; Anovitz, L.; Rother, G.; Shaw, R. W.; Hillesheim, P. C.; Dai, S.; Baker, G. A.; Cummings, P. T., Alkyl Chain Length and Temperature Effects on Structural Properties of Pyrrolidinium-Based Ionic Liquids: A Combined Atomistic Simulation and Small-Angle X-ray Scattering Study. J. Phys. Chem. Lett. 2012, 3, (1), 125-130. (58). Souda, T., Glass-Liquid Transition, Crystallization, and Melting of a Room Temperature Ionic Liquid: Thin Film of 1-Ethyl-3-methylimidazolium Bistrifluoromethanesulfonylimide Studied with TOF SIMS. J. Phys. Chem. B 2008, 112, 15349-15354. (59). Qin, K.; Wang, K.; Li, Y.; Kong, F.; Wang, T., High-pressure phase behavior of 1-ethyl-3-methylimidazolium tetrafluoroborate and carbon dioxide system. RSC Adv. 2015, 5, (41), 32416-32420. 26
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1
Table captions:
2
Table 1 Equation of basic properties of [bmim][NTf2]
3
Table 2 Feed gas composition
4
Table 3 Comparison of different ionic liquids with [bmim] as cation on CO2 solubility and
5
selectivity of CO2/CH4
6
Table 4 Toxicity and viscosity value of IL with [Bmim] as cation
7
Table 5 NRTL parameters in binary system
8
Table 6 Comparison of recovery rate on main gas component
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Table 1 Equation of basic properties of [bmim][NTf2]
Properties
Viscosity (Pa ∙ S)
Thermal
(mN/m) Thermal conductivity
3 4 5
temperature
Exp.
(K)
data
270~370
29
290~390
L = −58.96 + 3.454 − 0.004184 +
290~360
σ = 0.691 − 4i
30, 34,
h ^N.MNN.NO`s ^M.N`s ^.+`s
λ = −0.78 + 0.0086T − 2.69 × 10^ 4 + + 2.78 × 10^ 4 N
(W/mK)
2
of
7058.17 lnμ = −93.46 + + 11.72 × 6(4 4
(J/K/mol)
tension
of
ρ = 1.719 − 0.000946 × T
capacity
Surface
Ref.
Correlated Equation
Density (kg/m3)
Limitation
35
31
32, 34,
290~360
290~360
36
33
Notation: ρ is density in kg.m-3; μ is viscosity in Pa ∙ S; L is thermal capacity in J.K-1.mol-1; σ is the surface tension in mN/m. 4i equals to of IL; λ is thermal conductivity in W/mK.
` , `~
and Tc is critical temperature
Table 2 Feed gas composition 42
6 Component
mol%
CH4
80.11
C2H6
6.58
C3H8
1.92
C4H10
1.31
C5H12
0.3
CO2
7.04
N2
2.778
H2O
4.49E-5
Total flowrate of raw gas
2000 kmol/h 29
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Table 3 Comparison of different ionic liquids with [bmim] as cation on CO2 solubility
2
and selectivity of CO2/CH4 Solubility
[FEP]>[TCA]>[NTf2]>[DCA]>[DEP]>[C2SO4]>[OTF]>[CH3SO4]>[NO3]>[BF4]
Selectivity
[TCA]>[DCA]>[BF ]>[OTF]>[NO ]>[CH SO ]>[ NTf ]>[C SO ]>[FEP]>[DEP] 4
3
3
4
2
2
4
3 4
5
Table 4 Toxicity and viscosity value of ILs with [Bmim] as cation ILs
Toxicity EC50
Viscosity (298.15K) (Pa.s)
[Bmim][FEP] [Bmim][OTF] [Bmim][DCA] [Bmim][CH3SO4] [Bmim][BF4] [Bmim][NTf2] [Bmim][NO3] [Bmim][C2SO4] [Bmim][DEP] [Bmim][TCA]
1.81 3 3.15 3.21 3.3 3.41 -
0.075 0.033 0.213 0.137 0.059 0.165 -
Notation: “-” means the value cannot be obtained from current literature.
6 7
Table 5 NRTL parameters in binary system
Parameters
CO2
CH4
a12
-38.6038
-1.829
b12
19030.71
152.792
a21
-1.39749
4.067
b21
233.99
-948.345
αij
0.3
0.3
8 9 10 11 12 13 30
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Table 6 Comparison of recovery rate on main gas component
Recovery rate Components MDEA (50%)
IL (initial)
IL (multi-stage flash)
CH4
99.93%
97.32%
95.31%
CO2
81.45%
84.34%
82.64%
2
31
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Figure captions:
2
Figure 1 Two single-stage flash process
3
Figure 2 Multi-stage flash IL-based process
4
Figure 3 Henry’s law constants of CO2 in 90 ILs predicted by COSMO-RS method at 303.15K
5
Figure 4 Henry’s law constants of CH4 in 90 ILs predicted by COSMO-RS method at 303.15K
6
Figure 5 Selectivity of CO2/CH4 in 90 ILs predicted by COSMO-RS method at 303.15K
7
Figure 6 Experimental and calculated densities (a), viscosities (b), heat capacities (c), surface
8
tensions (d), and thermal conductivities (e) of the ILs:dots and lines denote experimental
9
data from literature and calculated value, respectively.
10
Figure 7 Total pressures of the systems of CO2-[Bmim][NTf2] (a), CH4-[Bmim][NTf2] (b)
11
Figure 8 CO2 mole fraction out of absorber versus mass flow of ILs under different stage numbers
12
Figure 9 CO2 mole fraction out of absorber versus mass flow of ILs
13
Figure 10 Flash-1 pressure versus CO2 purity and CH4 recycle rate
14
Figure 11 Electricity consumption under different flash-2 pressure
15
Figure 12 the effect of initial concentration of CO2 on energy and solvent consumption in IL-based
16
two single-stage decarbonization process
17
Figure 13 Comparison of the quantity of solvent in different processes
18
Figure 14 Comparison of energy consumption in three processes
19
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Figure 1 Two single-stage flash process
3
4 5
Figure 2 Multi-stage flash IL-based process
6 7 8 9 10
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Figure 3 Henry’s law constants of CO2 in 90 ILs predicted by COSMO-RS method at
3
303.15K
Page 34 of 41
4
5 6
Figure 4 Henry’s law constants of CH4 in 90 ILs predicted by COSMO-RS method at
7
303.15K
8
34
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Figure 5 Selectivity of CO2/CH4 in 90 ILs predicted by COSMO-RS method at 303.15K
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1 2
Figure 6 Experimental and calculated densities (a), viscosities (b), heat capacities (c), surface
3
tensions (d), and thermal conductivities (e) of the ILs: dots denote experimental data in
4
literature 29-36 and lines are fitted by Matlab.
36
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Figure 7 Total pressures of the systems of CO2-[Bmim][NTf2] (a), CH4-[Bmim][NTf2] (b):
3
dots and lines denote experimental data from literature 64,65 and calculated value, respectively.
4 5
Figure 8 CO2 mole fraction in purified gas versus mass flow of ILs under different stage
6
numbers
7 37
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Figure 9 CO2 mole fraction out of absorber versus mass flow of ILs under 10 trays
2
3 4
Figure 10 Flash-1 pressure versus CO2 purity and CH4 recycle rate
5
6 7
Figure 11 Electricity consumption under different flash-2 pressure
8
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Figure 12 The effect of initial concentration of CO2 on energy and solvent consumption in
3
IL-based two single-stage decarbonization process
4
5 6
Figure 13 Comparison of the quantity of solvent in different processes
7 8 9 39
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Figure 14 Comparison of energy consumption in three processes
3
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