Submitted:
28 July 2025
Posted:
29 July 2025
You are already at the latest version
Abstract

Keywords:
1. Introduction
1.1. Uncertainty and Global Sensitivity Analysis
1.2. CAPE-OPEN Process Simulators
1.3. Scope of This Work
2. Materials and Methods
2.1. Case Study
2.2. Deterministic Simulation of the Process in COCO
2.3. Application of Uncertainty and Sensitivity Methodology
2.3.1. Characterization of the Uncertainty Sources
2.3.2. Response Variables Studied
2.3.3. User Module for Uncertainties
2.3.4. Morris’ Analysis of Global Sensitivity
2.3.5. Uncertainty Analysis for Determination of Tolerance Limits
3. Results
3.1. Deterministic Simulation Results
3.2. Sensitivity Analysis
3.2.1. Refined Matrix Design
3.2.2. Morris Sensitivity Analysis of the Flow and Composition of the Product Streams
3.2.3. Morris’ Analysis of the Process Utilities
3.3. Determination of Tolerance Limits of the Responses
4. Discussion
Supplementary Materials
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
Abbreviations
| CAPE | Computer Assisted Process Engineering |
| COCO | Cape-Open to Cape-Open compliant steady-state simulator environment |
| COFE | Cape-Open Flowsheet Environment |
| FV | Feed variability |
| LTL | Lower Tolerance Limit |
| ODE | Ordinary differential equation |
| RLG | Relative lower-bound gap |
| Sc. | Scenario |
| RUG | Relative upper-bound gap |
| UTL | Upper tolerance limit |
Appendix A

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| Parameter Description | Nominal Value |
|---|---|
| Feed flow | 6692 mol/h |
| Mole fraction of CH4 in the feed | 0.6 |
| Mole fraction of CO2 in the feed | 0.4 |
| CO2/CH4 selectivity | 60 |
| CO2 permeance | 60 GPU |
| Retentate pressure (stage 2) | 16.0 bar |
| Permeate pressure (stage 1) | 3.3 bar |
| Permeate pressure (stages 2 and 3) | 1.0 bar |
| Area stage 1 | 167 m2 |
| Area stage 2 | 164 m2 |
| Area stage 3 | 254 m2 |
| Parameter | Description | Reference Value | Variation |
|---|---|---|---|
| FBG | Flow of biogas | 6692 mol/h | ±5%, ±10% of reference |
| xCO2BG | CO2 molar fraction of biogas | 40% | ±5%, ±10% |
| PCO2 | CO2 membrane permeance | 60 GPU | ±10% |
| S | CO2/CO4 selectivity | Eq. 6 applied to 60 | ±5% |
| Response variable 1 | Definition |
|---|---|
| FBM | Molar flow of the upgraded biomethane (retentate of unit MB2) |
| xCH4BM | CH4 fraction of the upgraded biomethane |
| FOG | Molar flow of the off-gas stream (permeate of unit MB3) |
| xCO2OG | CO2 fraction of the off-gas stream |
| EDC | Energy demand of compressor CP |
| HDX | Heat duty of heat exchanger HX |
| Response | Non-Controlled Scenario | Controlled Scenario |
|---|---|---|
| FBM | 4163 mol/h | 4154 mol/h |
| FOG | 2529 mol/h | 2538 mol/h |
| xCH4BM | 0.9579 | 0.9600 |
| xCO2OG | 0.9890 | 0.9891 |
| EDC | 29.95 kW | 30.12 kW |
| HDX | -29.78 kW | -29.97 kW |
| EDC/FBG | 16.11 kJ/mol | 16.21 kJ/mol |
| HDX/FBG | -16.02 kJ/mol | -16.12 kJ/mol |
| Response | Units | Sc. | FV | Mean | LTL | UTL | RLG 1 | RUG 2 | CV 3 |
|---|---|---|---|---|---|---|---|---|---|
| FBM | mol/h | NC | ±5% | 4161 | 3829 | 4502 | 7.98% | 8.19% | 3.75% |
| NC | ±10% | 4159 | 3510 | 4812 | 15.61% | 15.70% | 7.45% | ||
| C | ±5% | 4151 | 3837 | 4438 | 7.57% | 6.93% | 3.50% | ||
| C | ±10% | 4148 | 3532 | 4731 | 14.86% | 14.06% | 7.01% | ||
| FOG | mol/h | NC | ±5% | 2525 | 2305 | 2753 | 8.72% | 9.03% | 4.20% |
| NC | ±10% | 2521 | 2116 | 2974 | 16.05% | 17.98% | 8.25% | ||
| C | ±5% | 2535 | 2325 | 2761 | 8.30% | 8.91% | 4.21% | ||
| C | ±10% | 2532 | 2119 | 2991 | 16.28% | 18.14% | 8.41% | ||
| xCH4BM | ‒ | NC | ±5% | 0.9577 | 0.9465 | 0.9657 | 1.17% | 0.84% | 0.45% |
| NC | ±10% | 0.9577 | 0.9426 | 0.9683 | 1.58% | 1.11% | 0.59% | ||
| xCO2OG | ‒ | NC | ±5% | 0.9889 | 0.9848 | 0.9930 | 0.41% | 0.41% | 0.19% |
| NC | ±10% | 0.9887 | 0.9823 | 0.9944 | 0.64% | 0.58% | 0.27% | ||
| C | ±5% | 0.9890 | 0.9846 | 0.9934 | 0.45% | 0.44% | 0.20% | ||
| C | ±10% | 0.9888 | 0.9821 | 0.9948 | 0.67% | 0.60% | 0.29% | ||
| EDC | kW | NC | ±5% | 29.94 | 28.39 | 31.47 | 5.19% | 5.12% | 3.04% |
| NC | ±10% | 29.92 | 26.91 | 32.97 | 10.09% | 10.16% | 6.08% | ||
| C | ±5% | 30.12 | 28.15 | 32.45 | 6.54% | 7.72% | 3.70% | ||
| C | ±10% | 30.11 | 26.63 | 34.27 | 11.57% | 13.80% | 7.22% | ||
| HDX | kW | NC | ±5% | 29.77 | 28.22 | 31.30 | 5.21% | 5.14% | 3.05% |
| NC | ±10% | 29.76 | 26.74 | 32.80 | 10.13% | 10.24% | 6.10% | ||
| C | ±5% | 29.97 | 27.95 | 32.35 | 6.72% | 7.94% | 3.77% | ||
| C | ±10% | 29.96 | 26.42 | 34.18 | 11.82% | 14.09% | 7.33% | ||
| EDC/FBG | kJ/mol | NC | ±5% | 16.12 | 16.03 | 16.21 | 0.56% | 0.53% | 0.27% |
| NC | ±10% | 16.13 | 16.00 | 16.26 | 0.78% | 0.85% | 0.35% | ||
| C | ±5% | 16.22 | 15.84 | 16.69 | 2.33% | 2.89% | 1.23% | ||
| C | ±10% | 16.22 | 15.65 | 16.88 | 3.49% | 4.06% | 1.70% | ||
| HDX/FBG | kJ/mol | NC | ±5% | 16.03 | 15.94 | 16.12 | 0.55% | 0.57% | 0.28% |
| NC | ±10% | 16.04 | 15.91 | 16.19 | 0.76% | 0.96% | 0.37% | ||
| C | ±5% | 16.13 | 15.73 | 16.63 | 2.49% | 3.10% | 1.32% | ||
| C | ±10% | 16.13 | 15.54 | 16.83 | 3.70% | 4.33% | 1.82% |
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