Viet Cuong Dinh, Lalić Branislava, Petrić Mina, Thanh Binh Nguyen, Roantree Mark
School of Computing, Dublin City University, Dublin, Ireland.
Faculty of Agriculture, University of Novi Sad, Novi Sad, Serbia.
PLoS One. 2024 Dec 23;19(12):e0315762. doi: 10.1371/journal.pone.0315762. eCollection 2024.
Physics informed neural networks have been gaining popularity due to their unique ability to incorporate physics laws into data-driven models, ensuring that the predictions are not only consistent with empirical data but also align with domain-specific knowledge in the form of physics equations. The integration of physics principles enables the method to require less data while maintaining the robustness of deep learning in modelling complex dynamical systems. However, current PINN frameworks are not sufficiently mature for real-world ODE systems, especially those with extreme multi-scale behavior such as mosquito population dynamical modelling. In this research, we propose a PINN framework with several improvements for forward and inverse problems for ODE systems with a case study application in modelling the dynamics of mosquito populations. The framework tackles the gradient imbalance and stiff problems posed by mosquito ordinary differential equations. The method offers a simple but effective way to resolve the time causality issue in PINNs by gradually expanding the training time domain until it covers entire domain of interest. As part of a robust evaluation, we conduct experiments using simulated data to evaluate the effectiveness of the approach. Preliminary results indicate that physics-informed machine learning holds significant potential for advancing the study of ecological systems.
物理信息神经网络因其独特的能力而越来越受欢迎,这种能力能够将物理定律纳入数据驱动模型,确保预测不仅与经验数据一致,而且与物理方程形式的特定领域知识相符。物理原理的整合使该方法在建模复杂动力系统时所需数据更少,同时保持深度学习的稳健性。然而,当前的物理信息神经网络框架对于现实世界中的常微分方程系统还不够成熟,尤其是那些具有极端多尺度行为的系统,如蚊虫种群动态建模。在本研究中,我们提出了一个物理信息神经网络框架,对常微分方程系统的正向和反向问题进行了若干改进,并以蚊虫种群动态建模为例进行了应用研究。该框架解决了蚊虫常微分方程带来的梯度不平衡和刚性问题。该方法提供了一种简单而有效的方式来解决物理信息神经网络中的时间因果关系问题,即通过逐步扩展训练时域,直到它覆盖整个感兴趣的域。作为稳健评估的一部分,我们使用模拟数据进行实验,以评估该方法的有效性。初步结果表明,物理信息机器学习在推进生态系统研究方面具有巨大潜力。