A novel comparison is presented of the effect of optimiser choice on the accuracy of physics-informed neural networks (PINNs). To give insight into why some optimisers are better, a new approach is proposed that tracks the training trajectory curvature and can be evaluated on the fly at a low computational cost. The linear advection equation is studied for several advective velocities, and we show that the optimiser choice substantially impacts PINNs model performance and accuracy. Furthermore, using the curvature measure, we found a negative correlation between the convergence error and the curvature in the optimiser local reference frame. It is concluded that, in this case, larger local curvature values result in better solutions. Consequently, optimisation of PINNs is made more difficult as minima are in highly curved regions.
翻译:提出了一种新的比较方法,用于比较不同优化器对物理信息神经网络(PINN)准确度的影响。为了深入了解为什么某些优化器更好,提出一种新的方法,可以跟踪训练轨迹曲率,并可以在低计算成本下实时进行评估。对于几个运动速度,研究了线性平流方程,并表明优化器选择显著影响PINN模型的性能和准确度。此外,使用曲率度量,我们发现收敛误差与优化器局部参考系中曲率呈负相关。因此,大的局部曲率值会产生更好的解决方案。因此,在高度曲率的区域中出现极小值,使得PINN的优化更加困难。