Deterministic learning-based neural output-feedback control for a class of nonlinear sampled-data systems

IF 7.3 2区 计算机科学 Q1 COMPUTER SCIENCE, INFORMATION SYSTEMS Science China Information Sciences Pub Date : 2024-08-19 DOI:10.1007/s11432-023-3996-3
Yu Zeng, Fukai Zhang, Tianrui Chen, Cong Wang
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Abstract

This study investigates the deterministic learning (DL)-based output-feedback neural control for a class of nonlinear sampled-data systems with prescribed performance (PP). Specifically, first, a sampled-data observer is employed to estimate the unavailable system states for the Euler discretization model of the transformed system dynamics. Then, based on the observations and backstepping method, a discrete neural network (NN) controller is constructed to ensure system stability and achieve the desired tracking performance. The noncausal problem encountered during the controller deduction process is resolved using a command filter. Moreover, the regression characteristics of the NN input signals are demonstrated with the observed states. This ensures that the radial basis function NN, based on DL theory, meets the partial persistent excitation condition. Subsequently, a class of discrete linear time-varying systems is proven to be exponentially stable, achieving partial convergence of neural weights to their optimal/actual values. Consequently, accurate modeling of unknown closed-loop dynamics is achieved along the system trajectory from the output-feedback control. Finally, a knowledge-based controller is developed using the modeling results. This controller not only enhances the control performance but also ensures the PP of the tracking error. The effectiveness of the scheme is illustrated through simulation results.

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一类非线性采样数据系统的基于确定性学习的神经输出反馈控制
本研究针对一类具有规定性能(PP)的非线性采样数据系统,研究了基于确定性学习(DL)的输出反馈神经控制。具体来说,首先,采用采样数据观测器来估计变换系统动态的欧拉离散化模型的不可用系统状态。然后,根据观测结果和反步进方法,构建离散神经网络(NN)控制器,以确保系统稳定性并达到所需的跟踪性能。控制器推导过程中遇到的非因果问题通过指令滤波器得以解决。此外,NN 输入信号的回归特性与观察到的状态相吻合。这确保了基于 DL 理论的径向基函数 NN 满足部分持续激励条件。随后,一类离散线性时变系统被证明是指数稳定的,神经权重部分收敛到其最优/实际值。因此,通过输出反馈控制,沿着系统轨迹实现了未知闭环动态的精确建模。最后,利用建模结果开发了基于知识的控制器。这种控制器不仅能提高控制性能,还能确保跟踪误差的 PP。模拟结果说明了该方案的有效性。
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来源期刊
Science China Information Sciences
Science China Information Sciences COMPUTER SCIENCE, INFORMATION SYSTEMS-
CiteScore
12.60
自引率
5.70%
发文量
224
审稿时长
8.3 months
期刊介绍: Science China Information Sciences is a dedicated journal that showcases high-quality, original research across various domains of information sciences. It encompasses Computer Science & Technologies, Control Science & Engineering, Information & Communication Engineering, Microelectronics & Solid-State Electronics, and Quantum Information, providing a platform for the dissemination of significant contributions in these fields.
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