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基于采样邻居信息的未知纯反馈系统的分布式近似聚合优化

Distributed Approximate Aggregative Optimization of Unknown Pure-Feedback Systems With Sampled Neighbor Information

IEEE Transactions on Cybernetics · 2025
被引 1
ABS 3

中文导读

针对有向不平衡网络中的高阶未知纯反馈非线性系统,提出一种分布式聚合优化方法,通过引入辅助聚合变量和基于预设性能的控制律,将优化问题转化为调节问题,实现近似最优解。

Abstract

This article addresses the distributed aggregative optimization (DAO) problem for high-order nonlinear systems with unknown pure-feedback dynamics over directed unbalanced networks, with the key contribution being the extension of DAO methods to high-order nonlinear systems. To achieve this, we first introduce auxiliary aggregative variables that integrate agent output and sampled neighbor information, progressively updated through a smoothing function. Using these variables and drawing inspiration from the dynamic average consensus-based approach, a pivotal theorem is introduced to facilitate the transformation of the DAO problem into a regulation problem, enabling the application of classical control methods to manage complex high-order dynamics. Furthermore, we present a control law based on prescribed performance functions and aggregative variables to solve the approximate aggregative optimization problem for high-order nonlinear agents with bounded disturbances. Finally, numerical examples are provided to validate the effectiveness of the proposed control scheme.

分布式优化非线性系统聚合优化控制理论