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Autori principali: Zhang, Xianhe, Xiao, Yu, Xu, Xiaodong, Luo, Biao
Natura: Preprint
Pubblicazione: 2024
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Accesso online:https://arxiv.org/abs/2411.04461
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author Zhang, Xianhe
Xiao, Yu
Xu, Xiaodong
Luo, Biao
author_facet Zhang, Xianhe
Xiao, Yu
Xu, Xiaodong
Luo, Biao
contents 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 $2\times2$ 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 neural network framework, to learn the nonlinear operator of the system parameters to the kernel gain. The approximate backstepping kernel is obtained by utilizing the network after learning, instead of numerically solving the kernel equations in the form of PDEs, to further derive the approximate controller and the target system. We analyze the existence and approximation of DeepONet operators and provide stability and convergence proofs for the closed-loop systems with NOs. Finally, the effectiveness of the proposed NN-adaptive control scheme is verified by comparative simulation, which shows that the NN operator achieved up to three orders of magnitude faster compared to conventional PDE solvers, significantly improving real-time control performance.
format Preprint
id arxiv_https___arxiv_org_abs_2411_04461
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Intelligent acceleration adaptive control of linear $2\times2$ hyperbolic PDE systems
Zhang, Xianhe
Xiao, Yu
Xu, Xiaodong
Luo, Biao
Analysis of PDEs
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 $2\times2$ 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 neural network framework, to learn the nonlinear operator of the system parameters to the kernel gain. The approximate backstepping kernel is obtained by utilizing the network after learning, instead of numerically solving the kernel equations in the form of PDEs, to further derive the approximate controller and the target system. We analyze the existence and approximation of DeepONet operators and provide stability and convergence proofs for the closed-loop systems with NOs. Finally, the effectiveness of the proposed NN-adaptive control scheme is verified by comparative simulation, which shows that the NN operator achieved up to three orders of magnitude faster compared to conventional PDE solvers, significantly improving real-time control performance.
title Intelligent acceleration adaptive control of linear $2\times2$ hyperbolic PDE systems
topic Analysis of PDEs
url https://arxiv.org/abs/2411.04461