Physics guided machine learning using simplified theories

Suraj Pawar, Omer San, a) Burak Aksoylu, Adil Rasheed, 4 and Trond Kvamsdal 4 School of Mechanical & Aerospace Engineering, Oklahoma State University, Stillwater, OK 74078, USA. Texas A&M University-San Antonio, Department of Mathematical, Physical, and Engineering Sciences, San Antonio, TX 78224, USA. Department of Engineering Cybernetics, Norwegian University of Science and Technology, 7465 Trondheim, Norway. Department of Mathematics and Cybernetics, SINTEF Digital, 7034 Trondheim, Norway. Department of Mathematical Sciences, Norwegian University of Science and Technology, 7491 Trondheim, Norway.

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