English

PINN-Obs: Physics-Informed Neural Network-Based Observer for Nonlinear Dynamical Systems

Machine Learning 2025-10-31 v1 Dynamical Systems Chaotic Dynamics

Abstract

State estimation for nonlinear dynamical systems is a critical challenge in control and engineering applications, particularly when only partial and noisy measurements are available. This paper introduces a novel Adaptive Physics-Informed Neural Network-based Observer (PINN-Obs) for accurate state estimation in nonlinear systems. Unlike traditional model-based observers, which require explicit system transformations or linearization, the proposed framework directly integrates system dynamics and sensor data into a physics-informed learning process. The observer adaptively learns an optimal gain matrix, ensuring convergence of the estimated states to the true system states. A rigorous theoretical analysis establishes formal convergence guarantees, demonstrating that the proposed approach achieves uniform error minimization under mild observability conditions. The effectiveness of PINN-Obs is validated through extensive numerical simulations on diverse nonlinear systems, including an induction motor model, a satellite motion system, and benchmark academic examples. Comparative experimental studies against existing observer designs highlight its superior accuracy, robustness, and adaptability.

Keywords

Cite

@article{arxiv.2507.06712,
  title  = {PINN-Obs: Physics-Informed Neural Network-Based Observer for Nonlinear Dynamical Systems},
  author = {Ayoub Farkane and Mohamed Boutayeb and Mustapha Oudani and Mounir Ghogho},
  journal= {arXiv preprint arXiv:2507.06712},
  year   = {2025}
}
R2 v1 2026-07-01T03:52:57.341Z