We propose a stochastic projection-based gradient free physics-informed neural network. The proposed approach, referred to as the stochastic projection based physics informed neural network (SP-PINN), blends upscaled stochastic projection theory with the recently proposed physics-informed neural network. This results in a framework that is robust and can solve problems involving complex solution domain and discontinuities. SP-PINN is a gradient-free approach which addresses the computational bottleneck associated with automatic differentiation in conventional PINN. Efficacy of the proposed approach is illustrated by a number of examples involving regular domain, complex domain, complex response and phase field based fracture mechanics problems. Case studies by varying network architecture (activation function) and number of collocation points have also been presented.
翻译:我们提议了一个基于随机预测的梯度自由物理知情神经网络。这个拟议方法被称为基于随机预测的物理知情神经网络(SP-PINN),将升级的随机预测理论与最近提议的物理学知情神经网络(Sphysic知情神经网络)混合在一起。这个结果在一个坚实且能够解决复杂解决方案领域和不连续问题的框架中产生。SP-PINN是一个解决常规PINN自动区分相关计算瓶颈的梯度无梯度方法。这个拟议方法的功效通过一些实例加以说明,这些例子涉及常规领域、复杂领域、复杂应对和基于相位场的断裂力学问题。还介绍了不同网络结构的案例研究(活动功能)和同地点的数目。