Forecasting solar-thermal systems performance under transient operation using a data-driven machine learning approach based on the deep operator network architecture
Julián D. Osorio(National Renewable Energy Laboratory), Rob Hovsapian(National Renewable Energy Laboratory), Shengze Cai(ZheJiang Institute For Food and Drug Control), George Em Karniadakis(Brown University), Mayank Panwar(National Renewable Energy Laboratory), Zhicheng Wang(Brown University), Chrys Chryssostomidis(Massachusetts Institute of Technology)
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