Aug 12 – 16, 2024
Von-Melle-Park 8
Europe/Berlin timezone

Physics-informed neural networks for non-smooth PDE-constrained optimization problems

Aug 13, 2024, 11:30 AM
30m
Seminarraum 205 (Von-Melle-Park 8)

Seminarraum 205

Von-Melle-Park 8

Minisymposium Contribution MS 01: Optimal Control and Machine Learning MS 01: Optimal Control and Machine Learning

Speaker

Yongcun Song

Description

We study the application of well-known physics-informed neural networks (PINNs) for solving non-smooth PDE-constrained optimization problems. First, we consider a class of PDE-constrained optimization problems where additional nonsmooth regularization is employed for constraints on the control or design variables. For solving such problems, we combine the alternating direction method of multipliers (ADMM) and PINNs and propose the ADMM-PINNs algorithmic framework, which unties the PDE constraints and the nonsmooth regularization terms for iterations. Accordingly, at each iteration, one of the resulting subproblems is a smooth PDE-constrained optimization which can be efficiently solved by PINNs, and the other is a simple nonsmooth optimization problem which usually has a closed-form solution or can be efficiently solved by various standard optimization algorithms or pre-trained neural networks. Various numerical results are reported to validate the effectiveness and efficiency of the proposed ADMM-PINNs methods.

Authors

Prof. Xiaoming Yuan Yongcun Song Hangrui Yue

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