Multiphysics generalization in a polymerization reactor using physics-informed neural networks
- 주제(키워드) Computational fluid dynamics , Machine learning , Physics-informed neural networks , Polymerization , Reactor engineering , Surrogate modeling
- 관리정보기술 faculty
- 등재 SCIE, SCOPUS
- 발행기관 Elsevier Ltd
- 발행년도 2024
- URI http://www.dcollection.net/handler/ewha/000000240831
- 본문언어 영어
- Published As https://doi.org/10.1016/j.ces.2024.120385
- 저작권 이화여자대학교 논문은 저작권에 의해 보호받습니다.
초록/요약
Multiphysics engineering has been a crucial task in a chemical reactor because complicated interactions among fluid mechanics, chemical reactions, and transport phenomena greatly affect the performance of a chemical reactor. Recently, physics-informed neural networks (PINN) have been successfully applied to various engineering problems thanks to their domain generalization ability. Herein, we introduce a novel application of PINN to multiphysics in a chemical reactor. Specifically, we examined the effectiveness of PINN to reconstruct and extrapolate ethylene conversion in a polymerization reactor. We ran CFD for the polymerization reactor to use in the training process; thereafter, we constructed the PINN by combining the loss of conventional neural networks (NN) with the residuals of the continuity, Navier-Stokes, and species transport physics equations. Our results showed that the PINN more accurately predicted the overall ethylene concentration profile, which is the primary result of multiphysics in the reactor; PINN showed 18 % lower mean absolute error (0.1028 mol/L) than NN (0.1267 mol/L). Furthermore, the PINN satisfactorily predicted the conversion concaveness effect, which is a unique multiphysical effect in a radical polymerization reactor, while NN couldn't. These results highlight that multiphysics in a chemical reactor may be efficiently predicted and even extrapolated by harnessing physics in neural networks. © 2024 Elsevier Ltd
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