Chuizheng MengSam GriesemerDefu CaoSungyong SeoYan Liu
Abstract Physics-informed machine learning (PIML), the combination of prior physics knowledge with data-driven machine learning models, has emerged as an effective means of mitigating a shortage of training data, increasing model generalizability, and ensuring physical plausibility of results. In this paper, we survey a wide variety of recent works in PIML and summarize them from three key aspects: 1) motivations of PIML, 2) physics knowledge in PIML, and 3) methods of physics knowledge integration in PIML. We additionally discuss current challenges and corresponding research opportunities in PIML.
Steven L. BruntonJ. Nathan Kutz
Kristof T. SchüttStefan ChmielaO. Anatole von LilienfeldAlexandre TkatchenkoKoji TsudaKlaus‐Robert Müller
Michele CeriottiCecilia ClementiO. Anatole von Lilienfeld
Sankar Das SarmaDong-Ling DengLu-Ming Duan