NALGNEOCPSJul 13, 2025

Physics-informed neural networks for high-dimensional solutions and snaking bifurcations in nonlinear lattices

arXiv:2507.09782v14 citationsh-index: 7Physica A: Statistical Mechanics and its Applications
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This work addresses computational bottlenecks in studying complex nonlinear lattice systems, particularly in high-dimensional regimes, offering a scalable and efficient alternative to traditional numerical methods.

The paper tackles the challenge of approximating solutions, constructing bifurcation diagrams, and analyzing linear stability in nonlinear lattice systems by developing a physics-informed neural network (PINN) framework, achieving accuracy comparable to or better than traditional methods in high-dimensional settings up to five spatial dimensions.

This paper introduces a framework based on physics-informed neural networks (PINNs) for addressing key challenges in nonlinear lattices, including solution approximation, bifurcation diagram construction, and linear stability analysis. We first employ PINNs to approximate solutions of nonlinear systems arising from lattice models, using the Levenberg-Marquardt algorithm to optimize network weights for greater accuracy. To enhance computational efficiency in high-dimensional settings, we integrate a stochastic sampling strategy. We then extend the method by coupling PINNs with a continuation approach to compute snaking bifurcation diagrams, incorporating an auxiliary equation to effectively track successive solution branches. For linear stability analysis, we adapt PINNs to compute eigenvectors, introducing output constraints to enforce positivity, in line with Sturm-Liouville theory. Numerical experiments are conducted on the discrete Allen-Cahn equation with cubic and quintic nonlinearities in one to five spatial dimensions. The results demonstrate that the proposed approach achieves accuracy comparable to, or better than, traditional numerical methods, especially in high-dimensional regimes where computational resources are a limiting factor. These findings highlight the potential of neural networks as scalable and efficient tools for the study of complex nonlinear lattice systems.

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