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Performance Prediction Model of Solid Oxide Fuel Cell Stack Using Deep Neural Network Technique
Author(s) -
Jaeyoon Lee,
Israel Torres Pineda,
Van-Tien Giap,
Dongkeun Lee,
Young Sang Kim,
Kook Young Ahn,
Young Duk Lee
Publication year - 2020
Publication title -
journal of hydrogen and new energy
Language(s) - English
Resource type - Journals
eISSN - 2288-7407
pISSN - 1738-7264
DOI - 10.7316/khnes.2020.31.5.436
Subject(s) - stack (abstract data type) , artificial neural network , solid oxide fuel cell , fuel cells , computer science , artificial intelligence , materials science , engineering , chemical engineering , chemistry , electrode , anode , programming language

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