화학공학소재연구정보센터
학회 한국화학공학회
학술대회 2021년 가을 (10/27 ~ 10/29, 광주 김대중컨벤션센터)
권호 27권 2호, p.1492
발표분야 공정시스템
제목 A surrogate model for CO2 methanation in an isothermal fixed-bed reactor using physics-informed neural network
초록 This study presents a physics-informed neural network (PINN) surrogate model (SM) for CO2 methanation in an isothermal fixed-bed reactor (IFB). Unlike common SMs, PINN implicated physics terms including governing equations, boundary conditions, initial conditions, and reaction kinetics during training the network parameters. The strategy for tunning ANN hyper-parameters such as number of hidden layers and neurons, activation functions, number of collocation training points, and training data range was discussed. In the PINN forward problem, the extrapolation capability of SM for the plug-flow reactor model for IFB was examined. The outstanding extrapolation capability of PINN was proven by an exellent prediction for the testing result from more than 10 times out of the training data range. In the PINN inverse problem, an unknown IFB model parameter such as effectiveness factor was estimated with a prediction accuracy of 98.8% using just 20 data points. PINN showed a great potential in building SMs for chemical reactor design and revealing model parameters of chemical reaction kinetics.
저자 Ngo Ich Son1, 임영일2
소속 1한경대, 2한경데학교
키워드 공정모사 및 설계; 인공지능 기반 공정기술
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