耦合移动边界 PDE 的物理信息神经网络 (PINN) 方法学

Shivprasad KathaneIndian Institute of Technology Bombay Mumbai India, Shyamprasad KaragaddeIndian Institute of Technology Bombay Mumbai India
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摘要

物理信息神经网络(PINN)是一种新颖的多任务学习框架,通过将物理知识和已知约束条件整合到深度学习组件中,可用于解决使用微分方程(DE)建模的物理问题。材料科学和力学中的一大类物理问题涉及移动边界,在求解微分方程时需要满足界面通量平衡条件。这类系统的例子包括自由表面流、冲击传播、纯净和合金系统的凝固等。最近的研究工作探索了 PINN 在非耦合系统(如纯净系统的凝固)中的适用性,而本研究工作报告了一种基于 PINN 的方法,用于求解涉及多个控制参数(能量和物种,以及多个界面平衡方程)的耦合系统。该方法采用的架构包括:每个变量有一个单独的网络,每个阶段有一个单独的处理方法;交替使用时间学习和自适应损失加权的训练策略;以及逐步缩小优化空间的方案。在解决二元合金固化的基准问题时,它明显成功地捕捉到了在界面处具有特征不连续性的完整沉积剖面,并且所得出的预测结果与分析解十分吻合。该程序可推广用于解决其他瞬态多物理场问题,特别是在低数据机制和测量可揭示新物理场的情况下。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Physics Informed Neural Network (PINN) Methodology for Coupled Moving Boundary PDEs
Physics-Informed Neural Network (PINN) is a novel multi-task learning framework useful for solving physical problems modeled using differential equations (DEs) by integrating the knowledge of physics and known constraints into the components of deep learning. A large class of physical problems in materials science and mechanics involve moving boundaries, where interface flux balance conditions are to be satisfied while solving DEs. Examples of such systems include free surface flows, shock propagation, solidification of pure and alloy systems etc. While recent research works have explored applicability of PINNs for an uncoupled system (such as solidification of pure system), the present work reports a PINN-based approach to solve coupled systems involving multiple governing parameters (energy and species, along with multiple interface balance equations). This methodology employs an architecture consisting of a separate network for each variable with a separate treatment of each phase, a training strategy which alternates between temporal learning and adaptive loss weighting, and a scheme which progressively reduces the optimisation space. While solving the benchmark problem of binary alloy solidification, it is distinctly successful at capturing the complex composition profile, which has a characteristic discontinuity at the interface and the resulting predictions align well with the analytical solutions. The procedure can be generalised for solving other transient multiphysics problems especially in the low-data regime and in cases where measurements can reveal new physics.
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