ArXiv TLDR

Residual-loss Anomaly Analysis of Physics-Informed Neural Networks: An Inverse Method for Change-point Detection in Nonlinear Dynamical Systems with Regime Switching

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2604.25655

Yuhe Bai, Chengli Tan, Jiaqi Li, Xiangjun Wang, Zhikun Zhang

stat.MLcs.LG

TLDR

This paper introduces a PINN-based residual-loss anomaly analysis for jointly detecting change-points and estimating parameters in nonlinear dynamical systems.

Key contributions

  • Introduces a unified PINN framework for jointly detecting change-points and estimating parameters in nonlinear systems.
  • Leverages residual-loss anomaly analysis and subinterval decomposition to localize transition points effectively.
  • Integrates change-point locations and piecewise parameters into a single physical loss for joint optimization.

Why it matters

This paper offers a novel, unified approach to a complex problem in nonlinear dynamics, where change-point detection and parameter estimation are inherently coupled. Its PINN-based framework significantly improves accuracy and efficiency over traditional decoupled methods. This advancement is crucial for understanding and modeling systems with abrupt regime changes.

Original Abstract

Nonlinear dynamical systems with regime transitions are typically described by ordinary differential equations with jumping parameters parameters. Traditional methods often treat change-point detection and parameter estimation as separate tasks, ignoring the inherent coupling between them. To address this, we propose residual-loss anomaly analysis of physics-informed neural networks, a unified framework that leverages dynamical consistency within the physics-informed learning paradigm. This approach jointly infers piecewise parameters and transition points under a single set of constraints. The method follows a two-stage strategy: First, local physical residuals are analyzed through overlapping subinterval decomposition. When a subinterval spans a true transition point, the residual exhibits a distinct structural elevation in noise-free conditions, which has a non-zero lower bound, enabling effective localization of potential transition intervals. Second, within our framework, change-point locations and piecewise parameters are integrated into a unified physical loss function for joint optimization, enabling simultaneous identification. Experiments on benchmark nonlinear dynamical systems, including Malthusian and logistic growth models, Van der Pol oscillator, Lotka-Volterra model and Lorenz system, demonstrate that the proposed method outperforms traditional decoupled approaches in both change-point localization and parameter estimation accuracy. This study provides an efficient, unified solution for structurally coupled inverse problems in nonlinear dynamical systems with regime switching.

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