Litcius/Paper detail

FO-PINN: A First-Order formulation for Physics-Informed Neural Networks

Rini Jasmine Gladstone, Mohammad Amin Nabian, N. Sukumar, Ankit Kumar Srivastava, Hadi Meidani

2025Engineering Analysis with Boundary Elements22 citationsDOIOpen Access PDF

Abstract

Physics-Informed Neural Networks (PINNs) are a class of deep learning neural networks that learn the response of a physical system without any simulation data, and only by incorporating the governing partial differential equations (PDEs) in their loss function. While PINNs are successfully used for solving forward and inverse problems, their accuracy decreases significantly for parameterized systems and higher-order PDE problems. PINNs also have a soft implementation of boundary conditions resulting in boundary conditions not being exactly imposed everywhere on the boundary. With these challenges at hand, we present first-order physics-informed neural networks (FO-PINNs). These are PINNs that are trained using a first-order formulation of the PDE loss function. We show that, compared to standard PINNs, FO-PINNs offer significantly higher accuracy in solving parameterized systems, and reduce time-per-iteration by removing the extra backpropagations needed to compute the second or higher-order derivatives. Additionally, FO-PINNs can enable exact imposition of boundary conditions using approximate distance functions, which pose challenges when applied on high-order PDEs. Through four examples, we demonstrate the advantages of FO-PINNs over standard PINNs in terms of accuracy and training speedup.

Topics & Concepts

Order (exchange)Artificial neural networkApplied mathematicsCalculus (dental)Computer scienceMathematicsStatistical physicsPhysicsArtificial intelligenceMedicineEconomicsDentistryFinanceModel Reduction and Neural NetworksNeural Networks and ApplicationsComputational Physics and Python Applications