Off-Design Operation of Conventional and Phase-Change CO2 Capture Solvents and Mixtures: A Systematic Assessment Approach
Abstract
:1. Introduction
2. Materials and Methods
2.1. Overview of the Controllability Assessment Framework
- A set of controlled variables associated with process performance indicators may be maintained within pre-defined levels for a set of disturbance scenarios, by calculating the necessary steady-state effort from a set of manipulated variables.
- Large variations in the steady-state position of the manipulated variables required for the compensation of relatively small disturbances indicate a limited ability by the solvent–process design configuration to address the disturbances and imply a compromise in the achieved dynamic performance by the control system.
2.2. Detailed Description
- Define a vector that represents the nominal process design and operating conditions of an absorption–desorption process system that will be subjected to variability, a set that includes the candidate solvents and mixtures, a vector of state variables of the CO2 capture process represented through vectors , that describe the process equality and inequality constraints, and a vector representing the controlled variables associated to the process performance criteria.
- Variability can be represented by considering disturbance scenarios through a vector of infinitesimal deviations such that each element of vector is represented as , with vector calculated as follows:
- The most sensitive process performance indicators in can then be identified by generating a local scaled sensitivity matrix around as described below:
- The main directions of variability are obtained by calculating the eigenvalues of the matrix and then used to rank-order the resulting eigenvectors based on the magnitude of the corresponding eigenvalues. The eigenvector corresponding to the largest-magnitude eigenvalue indicates the main direction of process variability under the influence of disturbances in the multi-parametric space defined by .
- Using the dominant eigenvector, the sensitivity index is calculated with the use of a relevant appropriate parameter , which represents the magnitude of the disturbance magnitude along the eigenvector direction with respect to , as described below:The maximum variation along the direction is determined by the final value of , which is varied within the range . The limits in the coordinate are selected based on the variability of the process’s system. It is worth noting that the nominal value of the parameter used in sensitivity analysis is considered when equals zero, . This procedure is repeated for every selected solvent or mixture of solvents. The algorithmic steps are illustrated in Figure 1.After the implementation of the proposed sensitivity analysis for the assessment of the process operability, an appropriate is selected for all the solvents. This is used to calculate the sensitivity index . A multi-criteria selection problem is formulated using the indices employed for the calculation of , as described in step 6.
- For every solvent , select at the desired point and develop an augmented vector such that . is considered a combination of the optimal objective function values obtained during nominal operation and of the controllability index for each solvent. Use the elements of in a multi-criteria problem formulation that considers the solvents in as the decision parameters to select the ones that simultaneously minimize all performance indices in and the sensitivity index (or indices) in by generating a Pareto front as follows:In step 6, the constraint of Equation (4) implies in a formal mathematical way that a solvent or mixture in is called a Pareto optimum or non-dominated solution if there exists no other solvent or mixture in satisfying this constraint. The constraint is illustrated for two objective functions, i.e., and . The former represents one performance index under nominal operation and the latter represents the sensitivity index for all performance indices during the variability. Multiple performance indices under nominal operation can also be considered as part of Equation (4). The Pareto optimality condition represents a minimization problem in Equation (4); however, a maximization or combinations may be similarly defined and solved by changing the direction of the inequality signs as appropriate. Note that step 6 is implemented after all calculations of Figure 1 are completed.
3. Implementation
3.1. Overview of the Process and the Amine Solvents
3.2. Controlled Variables and Disturbance Scenarios
- = is the content of CO2 in the flue gas that enters the process. The nominal value is = 15 vol%.
- = is the CO2 loading of the absorption–desorption process after the stripper. Its value depends on the selected solvents and their physico-chemical characteristics. The nominal values for each solvent were reported by Zarogiannis et al. [13]. can be adjusted by the reboiler duty in the stripper, which subsequently has an impact on the performance criteria.
- = is the temperature of the inlet stream that enters the heat exchanger after the absorber. The nominal temperature is set to = 40 °C. This can be adjusted by the possible cooling effort in the absorber and the amine flow rate in the system.
- Set 1 included , , and .
- Set 2 included , , and .
- Set 3 included , , and .
4. Results and Discussion
4.1. Influence of Parameters on the Process Operability
4.2. Sensitivity Index
4.3. Selection of Solvents
5. Conclusions
Author Contributions
Funding
Conflicts of Interest
References
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Reference | Model Used | Investigated Solvents | Purpose |
---|---|---|---|
[15] | Dynamic (Matlab/Simulink) | MEA, DEA, MDEA, AMP | Investigation of the dynamic process behavior of solvents |
[16] | Dynamic (Matlab) | MEA | Sensitivity analysis and dynamic simulations |
[17] | Dynamic (gPROMS) | MEA | Dynamic simulation |
[18] | Dynamic (gPROMS) | MEA | Different dynamic simulation approaches |
[19] | Dynamic (gPROMS) | MEA | Steady-state and dynamic process validation |
[20] | Dynamic (Aspen) | MEA | Dynamic simulation |
[21] | Dynamic (Matlab) | MEA | Dynamic model validation |
[22] | Dynamic (Matlab/Simulink) | AMP | Dynamic simulation and validation |
[23] | Dynamic (Aspen Dynamics) | MEA | Plantwide control |
[24] | Dynamic (Aspen Plus) | MEA | Investigation of a control strategy |
[25] | Mechanistic process model (gPROMS–Aspen Plus) | MEA | Investigation of decentralized control schemes |
[26] | Non-linear autoregressive model with exogenous input (NLARX) | MEA | Preliminary control analysis |
[27] | Dynamic, rate-based model (Matlab) | PZ, MEA | Investigation of decentralized control structure |
[28] | Custom steady-state and dynamic models using OCFE | MEA, DEA, MPA | Steady-state controllability assessment and evaluation of the process dynamic response for different solvents |
[29] | Dynamic (Unisim) | MEA | Investigation of operating strategy with self-optimizing control variables |
[30] | Aspen HYSYS Dynamics | MEA | Investigation of control structure |
[31] | Dynamic (Aspen Plus Dynamics) | MEA | Investigation of control strategy |
[32] | Dynamic (gPROMS) | MEA | Control design |
[33] | Dynamic, rate-based model (Aspen HYSYS) | MEA | Controllability analysis using MPC |
[34] | Dynamic (Unisim) | MEA | Control strategy with alternative control structures |
[35] | Dynamic (gPROMS) | MEA | Different control architectures |
[36] | Dynamic (gCCS) | MEA | Multi-model modeling for advanced control design using MMPC |
ID | Single Amine |
---|---|
MEA | |
AMP | |
DEA | |
MAPA | |
MCA |
Component 1 | Component 2 | ||
---|---|---|---|
MEA | MDEA | ||
MPA | MDEA | ||
DEA | MDEA | ||
AMP | PZ | ||
DEEA | MAPA |
Solvent | (GJ/ton CO2) | (%-pts.) | (k€/ton CO2 | |||
---|---|---|---|---|---|---|
MEA | 3.72 | 11.2 | 0.3 | 4.7 | 76.3 | 290.1 |
MCA | 2.12 | 8.8 | 0.22 | 13.83 | 3929.7 | 150.1 |
MAPA/DEEA | 2.10 | 8.1 | 0.58 | 13.03 | 656.0 | 140.8 |
AMP | 3.13 | 9.4 | 0.28 | 7.35 | 238.7 | 206.5 |
AMP/PZ | 3.10 | 9.7 | 0.17 | 9.12 | 362.8 | 216.0 |
DEA | 3.47 | 10.2 | 0.18 | 13.48 | 328.5 | 240.7 |
MAPA | 4.56 | 12.6 | 0.49 | 4.15 | 573.3 | 361.3 |
MDEA/DEA | 3.74 | 11.1 | 0.28 | 9.52 | 401.9 | 293.8 |
MEA/MDEA | 4.28 | 11.5 | 0.13 | 17.67 | 746.0 | 302.0 |
MPA/MDEA | 3.32 | 9.8 | 0.18 | 13.02 | 687.0 | 221.2 |
Solvent | Order of Parameters | Solvent | Order of Parameters |
---|---|---|---|
MEA | (+), (+), (−) | DEEA/MAPA | (−), (−), (−) |
AMP | (−), (−), (0) | MEA/MDEA | (−), (−) |
DEA | (−), (−), (0) | MPA/MDEA | (−), (−) |
MAPA | (−), (−), (0) | DEA/MDEA | (−), (0) |
MCA | (−), (0) | AMP/PZ | (−), (−) |
Solvent | Order of Parameters | Solvent | Order of Parameters |
---|---|---|---|
MEA | (+), (+), (0) | DEEA/MAPA | (−), (−), (−) |
AMP | (−), (−) | MEA/MDEA | (−), (−) |
DEA | (−), (−) | MPA/MDEA | (−), (−) |
MAPA | (−), (−), (0) | DEA/MDEA | (−), (0) |
MCA | (−) | AMP/PZ | (−), (−) |
Solvent | Order of Parameters | Solvent | Order of Parameters |
---|---|---|---|
MEA | (+), (+), (0) | DEEA/MAPA | (−), (−), (−) |
AMP | (−), (−), (0) | MEA/MDEA | (−), (−) |
DEA | (−), (−) | MPA/MDEA | (−), (−) |
MAPA | (−), (−), (0) | DEA/MDEA | (−), (0) |
MCA | (−) | AMP/PZ | (−), (−), (−) |
0.2 | DEEA/MAPA DEA/MDEA MCA AMP DEA | DEA/MDEA MEA AMP DEA | DEEA/MAPA DEA/MDEA MAPA | DEEA/MAPA DEA/MDEA MCA AMP DEA | DEEA/MAPA DEA/MDEA AMP DEA |
−0.15 | DEEA/MAPA DEA/MDEA | DEA/MDEA MEA AMP DEA | DEEA/MAPA DEA/MDEA | DEEA/MAPA DEA/MDEA | DEEA/MAPA DEA/MDEA |
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Zarogiannis, T.; Papadopoulos, A.I.; Seferlis, P. Off-Design Operation of Conventional and Phase-Change CO2 Capture Solvents and Mixtures: A Systematic Assessment Approach. Appl. Sci. 2020, 10, 5316. https://doi.org/10.3390/app10155316
Zarogiannis T, Papadopoulos AI, Seferlis P. Off-Design Operation of Conventional and Phase-Change CO2 Capture Solvents and Mixtures: A Systematic Assessment Approach. Applied Sciences. 2020; 10(15):5316. https://doi.org/10.3390/app10155316
Chicago/Turabian StyleZarogiannis, Theodoros, Athanasios I. Papadopoulos, and Panos Seferlis. 2020. "Off-Design Operation of Conventional and Phase-Change CO2 Capture Solvents and Mixtures: A Systematic Assessment Approach" Applied Sciences 10, no. 15: 5316. https://doi.org/10.3390/app10155316
APA StyleZarogiannis, T., Papadopoulos, A. I., & Seferlis, P. (2020). Off-Design Operation of Conventional and Phase-Change CO2 Capture Solvents and Mixtures: A Systematic Assessment Approach. Applied Sciences, 10(15), 5316. https://doi.org/10.3390/app10155316