2023 AIChE Annual Meeting
(161g) Combining Process Knowledge and Machine Learning for Efficient Process Flowsheet Synthesis
We demonstrate the efficacy of the eSFILES representation on complex process flowsheets with multiple reactors, separators, and recycle streams. We highlight aspects of process synthesis by generating different alternative flowsheets, including intensified and hybrid schemes from a reference. We also present other aspects of integration of process synthesis and design with commercial simulation tools such as Pro II and Aspen using a motivating example highlighting the smooth transfer of data to the simulators for purposes of verification by simulation. The eSFILES-based framework for process synthesis and design incorporates a combination of artificial intelligence-based methods and well-known chemical engineering knowledge incorporated through an intelligent system facilitating fast, correct, and consistent decision-making related to process synthesis and design [1-8].
References:
1. d'Anterroches, Loïc. Process Flowsheet Generation & Design through a Group Contribution Approach. [CAPEC], Department of Chemical Engineering, Technical University of Denmark, 2005.
2. Bommareddy, Susilpa, Mario R. Eden, and Rafiqul Gani. "Computer aided flowsheet design using group contribution methods." Computer aided chemical engineering. Vol. 29. Elsevier, 2011. 321-325.
3. Tula, Anjan Kumar, Mario R. Eden, and Rafiqul Gani. "Process synthesis, design and analysis using a process-group contribution method." Computers & Chemical Engineering 81 (2015): 245-259.
4. Vogel, Gabriel, Lukas Schulze Balhorn, and Artur M. Schweidtmann. "Learning from flowsheets: A generative transformer model for autocompletion of flowsheets." Computers & Chemical Engineering 171 (2023): 108162.
5. Mann, Vipul, and Venkat Venkatasubramanian. "AI-driven hypergraph network of organic chemistry: network statistics and applications in reaction classification." Reaction Chemistry & Engineering (2023).
6. Mann, Vipul, and Venkat Venkatasubramanian. "Predicting chemical reaction outcomes: A grammar ontologyâbased transformer framework." AIChE Journal 67.3 (2021): e17190.
7. Mann, Vipul, and Venkat Venkatasubramanian. "Retrosynthesis prediction using grammar-based neural machine translation: An information-theoretic approach." Computers & Chemical Engineering 155 (2021): 107533.
8. Mann, Vipul, Rafiqul Gani, and Venkat Venkatasubramanian. "Group contribution-based property modeling for chemical product design: A perspective in the AI era." Fluid Phase Equilibria (2023): 113734.