2019 AIChE Annual Meeting
(200c) Optimal Design of Flowsheets Via Surrogate-Based Sub-Process Models: A Case Study of CO2 Capture and Utilization
Authors
Surrogate models trained from rigorous models can solve the above-mentioned issues. Machine learning algorithms (Surrogate models, Linear, Polynomial, Neural Networks, and Artificial Neural Networks) can build a direct correlation between process input and output based on sufficient simulations via rigorous models [2-4]. Artificial Neural Networks (ANNs) are said to be universal approximations [3-4]. These surrogate models can then be implemented in the same platform for further optimization. Additionally, life cycle impact (LCI) analysis can be incorporated into objective function for environmentally-friendly solutions. The steps of this methodology are as follows:
- uncertainty should be reduced to an acceptable range through sufficient simulations of rigorous models;
- smart sampling methods can be used to identify the effective inputs for simulations;
- Gaussian process or ANNs can be used to establish surrogate models;
- LCI analysis can introduce environmental aspect of sustainability into the optimization objectives;
- multi-objective optimization can be introduced to present the trade-off between different objectives.
A case study of optimal flowsheet design for carbon capture and utilization (CUU) is presented. CO2 capture is performed in vacuum swing adsorption or MEA-based absorption process, while the captured CO2 is then converted to valuable products via typical chemical processes (this case study is focused on methanation, methanol synthesis and Fischer-Tropsch synthesis). Each sub-process is trained into a data-driven model incorporated with LCI analysis, and then optimization is performed for the design of sustainable flowsheet.
References
- Recker, S. Systematic and Optimization-based Synthesis and Design of Chemical Processes, Ph.D. Dissertation, RWTH Aachen, Aachen, Germany, 2017.
- Gonzalez-Garay, A., Guillen-Gosalbez, G. SUSCAPE: A framework for the optimal design of SUStainable ChemicAl ProcEsses incorporating data envelopment analysis. Chemical Engineering Research and Design2018, 137, 246-264.
- Schweidtmann, A. M., Mitsos, A. Global deterministic optimization with artificial neural networks embedded. arXiv preprint arXiv:1801.07114. 2018.
- Wilson, Z. T., Sahinidis, N. V. The ALAMO approach to machine learning. Computers & Chemical Engineering 2017, 106, 785-795.