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具有全状态误差约束和输入量化的随机切换非线性系统的自适应预定义时间控制

Adaptive Predefined Time Control for Stochastic Switched Nonlinear Systems With Full-State Error Constraints and Input Quantization

IEEE Transactions on Cybernetics · 2025
被引 18 · 同刊同年前 4%
ABS 3

中文导读

针对具有全状态误差约束和输入量化的随机切换非线性系统,提出一种神经网络自适应预定义时间控制方法,确保系统在指定时间内稳定并跟踪参考信号。

Abstract

A neural network adaptive quantized predefined-time control problem is studied for switching stochastic nonlinear systems with full-state error constraints under arbitrary switching. Unlike previous research on rapid convergence, the predefined-time stability criteria are introduced and established for stochastic nonlinear systems, ensuring the stabilization of the control system within a specified time frame. The chattering issue is avoided and it is split into two limited nonlinear functions using a hysteresis quantizer. To address the full-state error constraint problem, a universal barrier Lyapunov function is presented. The common Lyapunov function approach is used to demonstrate the stability of controlled systems. The results demonstrate that the proposed control method ensures all closed-loop signals are probabilistically practically predefined time-stabilized (PPTS), with the system output closely tracking the specified reference signal. Finally, simulated examples validate the effectiveness of the suggested control technique.

随机切换非线性系统自适应控制预定义时间稳定全状态误差约束输入量化