Adapting Physics-Informed Neural Networks for Bifurcation Detection in Ecological Migration Models

Lujie Yin, Xing Lv
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Abstract

In this study, we explore the application of Physics-Informed Neural Networks (PINNs) to the analysis of bifurcation phenomena in ecological migration models. By integrating the fundamental principles of diffusion-advection-reaction equations with deep learning techniques, we address the complexities of species migration dynamics, particularly focusing on the detection and analysis of Hopf bifurcations. Traditional numerical methods for solving partial differential equations (PDEs) often involve intricate calculations and extensive computational resources, which can be restrictive in high-dimensional problems. In contrast, PINNs offer a more flexible and efficient alternative, bypassing the need for grid discretization and allowing for mesh-free solutions. Our approach leverages the DeepXDE framework, which enhances the computational efficiency and applicability of PINNs in solving high-dimensional PDEs. We validate our results against conventional methods and demonstrate that PINNs not only provide accurate bifurcation predictions but also offer deeper insights into the underlying dynamics of diffusion processes. Despite these advantages, the study also identifies challenges such as the high computational costs and the sensitivity of PINN performance to network architecture and hyperparameter settings. Future work will focus on optimizing these algorithms and expanding their application to other complex systems involving bifurcations. The findings from this research have significant implications for the modeling and analysis of ecological systems, providing a powerful tool for predicting and understanding complex dynamical behaviors.
在生态迁移模型中采用物理信息神经网络进行分岔检测
在本研究中,我们探索了物理信息神经网络(PINNs)在生态迁移模型中分岔现象分析中的应用。通过将扩散-vection-反应方程的基本原理与深度学习技术相结合,我们解决了物种迁移动力学的复杂性问题,尤其侧重于霍普夫分岔的检测和分析。求解偏微分方程(PDEs)的传统数值方法通常涉及复杂的计算和大量的计算资源,这可能会限制高维问题的解决。相比之下,PINNs 提供了一种更灵活、更高效的替代方法,它绕过了网格离散化的需要,允许无网格求解。我们的方法利用 DeepXDE 框架,提高了 PINNs 在求解高维 PDE 时的计算效率和适用性。我们对照传统方法验证了我们的结果,并证明 PINNs 不仅能提供准确的分岔预测,还能深入洞察扩散过程的基本动力学。尽管有这些优势,这项研究也发现了一些挑战,如计算成本高以及 PINN 性能对网络结构和超参数设置的敏感性。未来的工作重点是优化这些算法,并将其应用扩展到其他涉及分岔的复杂系统。这项研究的发现对生态系统的建模和分析具有重要意义,为预测和理解复杂的动力学行为提供了强有力的工具。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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