“…The idea is to combine traditional scientific computational modeling with a data-driven ML framework to embed scientific knowledge into neural networks (NNs) to improve the performance of learning algorithms (Lagaris et al, 1998;Raissi and Karniadakis, 2018;Karniadakis et al, 2021). The Physics Informed Neural Networks (PINNs) (Lagaris et al, 1998;Raissi et al, 2019Raissi et al, , 2020 were developed for the solution and discovery of nonlinear PDEs leveraging the capabilities of deep neural networks (DNNs) as universal function approximators achieving considerable success in solving forward and inverse problems in different physical problems such as fluid flows (Sun et al, 2020;Jin et al, 2021), multi-scale flows (Lou et al, 2021), heat transfer (Cai et al, 2021;Zhu et al, 2021), poroelasticity (Haghighat et al, 2022), material identification (Shukla et al, 2021), geophysics (bin Waheed et al, 2021, 2022, supersonic flows (Jagtap et al, 2022), and various other applications (Waheed et al, 2020;Bekar et al, 2022). Contrary to traditional DL approaches, PINNs force the underlying PDEs and the boundary conditions in the solution domain ensuring the correct representation of governing physics of the problem.…”