Physics-informed neural networks (PINNs) have emerged as a powerful tool for solving forward and inverse problems involving partial differential equations (PDEs) by incorporating physical laws into the training process. However, the performance of PINNs is often hindered in real-world scenarios involving noisy observational data and missing physics, particularly in inverse problems. In this work, we propose an iterative multi-objective PINN ensemble Kalman filter (iPINNER) framework that improves the robustness and accuracy of PINNs in both forward and inverse problems by using the \textit{ensemble Kalman filter} and the \textit{non-dominated sorting genetic algorithm} III (NSGA-III). Specifically, NSGA-III is used as a multi-objective optimizer that can generate various ensemble members of PINNs along the optimal Pareto front, while accounting the model uncertainty in the solution space. These ensemble members are then utilized within the EnKF to assimilate noisy observational data. The EnKF's analysis is subsequently used to refine the data loss component for retraining the PINNs, thereby iteratively updating their parameters. The iterative procedure generates improved solutions to the PDEs. The proposed method is tested on two benchmark problems: the one-dimensional viscous Burgers equation and the time-fractional mixed diffusion-wave equation (TFMDWE). The numerical results show it outperforms standard PINNs in handling noisy data and missing physics.
翻译:物理信息神经网络(PINNs)通过将物理定律融入训练过程,已成为求解涉及偏微分方程(PDEs)的正向和反演问题的有力工具。然而,在实际场景中,特别是在反演问题中,当涉及噪声观测数据和物理信息缺失时,PINNs的性能常受到限制。本研究提出了一种基于迭代多目标PINN集合卡尔曼滤波(iPINNER)的框架,该框架利用集合卡尔曼滤波和非支配排序遗传算法III(NSGA-III),提升了PINNs在正向和反演问题中的鲁棒性与精度。具体而言,NSGA-III作为多目标优化器,能够沿最优帕累托前沿生成PINNs的多种集合成员,同时考虑解空间中的模型不确定性。这些集合成员随后在EnKF中用于同化噪声观测数据。EnKF的分析结果进一步用于优化数据损失项,以重新训练PINNs,从而迭代更新其参数。该迭代过程生成了改进的PDE解。所提方法在两个基准问题上进行了测试:一维黏性Burgers方程和时分数阶混合扩散-波动方程(TFMDWE)。数值结果表明,该方法在处理噪声数据和物理信息缺失方面优于标准PINNs。