通过简化强化学习实现具有未知干扰的多代理系统的事件触发近似优化编队控制

IF 3.5 2区 数学 Q1 MATHEMATICS, APPLIED
Yang Yang , Shuocong Geng , Dong Yue , Sergey Gorbachev , Iakov Korovin
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引用次数: 0

摘要

本文针对遭受未知干扰的多代理系统(MAS)提出了一种事件触发的编队控制策略。在识别器-批判者-行动者神经网络(NNs)中,该策略只需计算近似汉密尔顿-雅各比-贝尔曼(HJB)方程的负梯度,而无需采用与贝尔曼残差相关的梯度下降法。这种简化方法消除了对 HJB 方程残差平方的复杂梯度计算过程的要求。批判-行为网络中的权重只在触发条件被违反时更新,因此减少了频繁更新带来的计算负担。在没有先验动态信息的情况下,还构建了一个扰动观测器来近似 MAS 中的扰动。稳定性分析证明,所有信号都是有界的。两个数值示例验证了所提出的控制策略是有效的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Event-triggered approximately optimized formation control of multi-agent systems with unknown disturbances via simplified reinforcement learning
An event-triggered formation control strategy is proposed for a multi-agent system (MAS) suffered from unknown disturbances. In identifier-critic-actor neural networks (NNs), the strategy only needs to calculate the negative gradient of an approximated Hamilton-Jacobi-Bellman (HJB) equation, instead of the gradient descent method associated with Bellman residual errors. This simplified method removes the requirement for a complicated gradient calculation process of residual square of HJB equation. The weights in critic-actor NNs only update as the triggered condition is violated, and the computational burdens caused by frequent updates are thus reduced. Without dynamics information in prior, a disturbance observer is also constructed to approximate disturbances in an MAS. From stability analysis, it is proven that all signals are bounded. Two numerical examples are illustrated to verify that the proposed control strategy is effective.
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来源期刊
CiteScore
7.90
自引率
10.00%
发文量
755
审稿时长
36 days
期刊介绍: Applied Mathematics and Computation addresses work at the interface between applied mathematics, numerical computation, and applications of systems – oriented ideas to the physical, biological, social, and behavioral sciences, and emphasizes papers of a computational nature focusing on new algorithms, their analysis and numerical results. In addition to presenting research papers, Applied Mathematics and Computation publishes review articles and single–topics issues.
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