An Operator Learning Approach to Nonsmooth Optimal Control of Nonlinear PDEs
Yongcun Song, Xiaoming Yuan, Hangrui Yue, Tianyou Zeng

TL;DR
This paper introduces a neural operator learning method combined with primal-dual optimization to efficiently solve nonsmooth optimal control problems constrained by nonlinear PDEs, reducing computational costs and enabling mesh-free solutions.
Contribution
It proposes a novel hybrid framework that uses neural surrogate models for PDEs within a primal-dual optimization scheme, improving efficiency and reusability in solving complex control problems.
Findings
The approach is mesh-free and easy to implement.
Neural surrogate models can be reused across iterations.
The method significantly reduces computational costs.
Abstract
Optimal control problems with nonsmooth objectives and nonlinear partial differential equation (PDE) constraints are challenging, mainly because of the underlying nonsmooth and nonconvex structures and the demanding computational cost for solving multiple high-dimensional and ill-conditioned systems after mesh-based discretization. To mitigate these challenges numerically, we propose an operator learning approach in combination with an effective primal-dual optimization idea which can decouple the treatment of the control and state variables so that each of the resulting iterations only requires solving two PDEs. Our main purpose is to construct neural surrogate models for the involved PDEs by operator learning, allowing the solution of a PDE to be obtained with only a forward pass of the neural network. The resulting algorithmic framework offers a hybrid approach that combines the…
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Taxonomy
TopicsIterative Learning Control Systems · Advanced Control Systems Optimization
