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Multi-objective optimization of the cathode catalyst layer micro-composition of polymer electrolyte membrane fuel cells using a multi-scale, two-phase fuel cell model and data-driven surrogates
- Vaz, Neil;
- Choi, Jaeyoo;
- Cha, Yohan;
- Kong, Jihoon;
- Park, Yooseong;
- ... Ju, Hyunchul
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26SCOPUS
27초록
Polymer electrolyte membrane fuel cells (PEMFCs) are considered a promising alternative to internal combustion engines in the automotive sector. Their commercialization is mainly hindered due to the cost and effectiveness of using platinum (Pt) in them. The cathode catalyst layer (CL) is considered a core com-ponent in PEMFCs, and its composition often considerably affects the cell performance (Vcell) also PEMFC fabrication and production (Cstack) costs. In this study, a data-driven multi-objective optimization analysis is conducted to effectively evaluate the effects of various cathode CL compositions on Vcell and Cstack. Four essential cathode CL parameters, i.e., platinum loading (LPt), weight ratio of ionomer to carbon (wtI=C), weight ratio of Pt to carbon (wtPt=c), and porosity of cathode CL (ecCL), are considered as the design vari-ables. The simulation results of a three-dimensional, multi-scale, two-phase comprehensive PEMFC model are used to train and test two famous surrogates: multi-layer perceptron (MLP) and response sur-face analysis (RSA). Their accuracies are verified using root mean square error and adjusted R2. MLP which outperforms RSA in terms of prediction capability is then linked to a multi-objective non-dominated sort-ing genetic algorithm II. Compared to a typical PEMFC stack, the results of the optimal study show that the single-cell voltage, Vcell is improved by 28 mV for the same stack price and the stack cost evaluated through the U.S department of energy cost model is reduced by $5.86/kW for the same stack performance.(c) 2023 Science Press and Dalian Institute of Chemical Physics, Chinese Academy of Sciences. Published by ELSEVIER B.V. and Science Press.
키워드
- 제목
- Multi-objective optimization of the cathode catalyst layer micro-composition of polymer electrolyte membrane fuel cells using a multi-scale, two-phase fuel cell model and data-driven surrogates
- 저자
- Vaz, Neil; Choi, Jaeyoo; Cha, Yohan; Kong, Jihoon; Park, Yooseong; Ju, Hyunchul
- 발행일
- 2023-06
- 유형
- Article
- 권
- 81
- 페이지
- 28 ~ 41