Deep learning based approaches like Physics-informed neural networks (PINNs) and DeepONets have shown promise on solving PDE constrained optimization (PDECO) problems. However, existing methods are insufficient to handle those PDE constraints that have a complicated or nonlinear dependency on optimization targets. In this paper, we present a novel bi-level optimization framework to resolve the challenge by decoupling the optimization of the targets and constraints. For the inner loop optimization, we adopt PINNs to solve the PDE constraints only. For the outer loop, we design a novel method by using Broyden's method based on the Implicit Function Theorem (IFT), which is efficient and accurate for approximating hypergradients. We further present theoretical explanations and error analysis of the hypergradients computation. Extensive experiments on multiple large-scale and nonlinear PDE constrained optimization problems demonstrate that our method achieves state-of-the-art results compared with strong baselines.
翻译:深度学习技术,如基于物理信息的神经网络(PINNs)和DeepONets,已经展示出在解决PDE约束下的优化(PDECO)问题上的潜力。然而,现有方法不足以处理那些在优化目标上具有复杂或非线性依赖关系的PDE约束。在本文中,我们提出了一个新的双层优化框架,通过解耦目标优化和约束优化来解决这个问题。对于内层优化,我们采用PINNs仅解决PDE约束问题。对于外层优化,我们设计了一种基于Broyden方法的隐式函数定理(IFT),该方法是一种有效和准确的逼近超梯度的方法。我们进一步对超梯度计算进行了理论说明和误差分析。对多个大规模和非线性PDE约束下的优化问题的广泛实验表明,我们的方法相对于强基线方法具有最先进的效果。