Intelligent acceleration adaptive control of linear $2\times2$ hyperbolic PDE systems
Xianhe Zhang, Yu Xiao, Xiaodong Xu, Biao Luo

TL;DR
This paper introduces a neural operator-based adaptive control method for complex hyperbolic PDE systems, significantly reducing online computational costs and enabling real-time stabilization through offline-trained DeepONet models.
Contribution
The paper applies DeepONet neural operators to hyperbolic PDE control, enabling fast, offline-trained kernel approximation for adaptive stabilization of complex systems.
Findings
DeepONet achieves up to three orders of magnitude faster computation.
The method provides stable and convergent control for $2\times2$ hyperbolic PDEs.
Simulation results confirm improved real-time control performance.
Abstract
Traditional approaches to stabilizing hyperbolic PDEs, such as PDE backstepping, often encounter challenges when dealing with high-dimensional or complex nonlinear problems. Their solutions require high computational and analytical costs. Recently, neural operators (NOs) for the backstepping design of first-order hyperbolic partial differential equations (PDEs) have been introduced, which rapidly generate gain kernel without requiring online numerical solution. In this paper we apply neural operators to a more complex class of hyperbolic PDE systems for adaptive stability control. Once the NO has been well-trained offline on a sufficient training set obtained using a numerical solver, the kernel equation no longer needs to be solved again, thereby avoiding the high computational cost during online operations.Specifically, we introduce the deep operator network (DeepONet), a…
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Taxonomy
TopicsStability and Controllability of Differential Equations · Advanced Numerical Methods in Computational Mathematics · Numerical methods for differential equations
