Optimal containment control for multi-agent systems using fast adaptive dynamic programming

IF 2.7 4区 计算机科学 Q2 AUTOMATION & CONTROL SYSTEMS
Ao Cao, Fuyong Wang, Zhongxin Liu, Zengqiang Chen
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引用次数: 0

Abstract

In this paper, an innovative adaptive dynamic programming (ADP) algorithm with fast convergence speed is designed for the optimal containment control problem of discrete-time linear multi-agent systems. Precisely, a quadratic input energy cost function, including local containment error information and actuator information in the neighborhood, is designed for each follower. Solving the stationary condition of the cost function, the optimal containment controllers are obtained. Traditional ADP methods use actor–critic neural networks to approximate optimal costs and control strategies, it is time-consuming to solve large-scale multi-agent problems due to the computational complexity of neural networks. In order to seek faster convergence speed of optimal containment control without knowing the model information, the fast ADP algorithm framework is designed, it is proved theoretically that the convergence speed is determined by some configurable parameters, and the whale optimization algorithm is employed to globally optimize the parameters of given spaces to derive the optimal configuration. Finally, numerical simulation results are given to verify the effectiveness of the designed algorithm.

基于快速自适应动态规划的多智能体系统最优控制
针对离散时间线性多智能体系统的最优包容控制问题,设计了一种收敛速度快的自适应动态规划(ADP)算法。精确地说,为每个从动器设计了一个二次输入能量代价函数,其中包含局部包含误差信息和邻域执行器信息。通过求解代价函数的平稳条件,得到最优约束控制器。传统的ADP方法使用行为批判神经网络来逼近最优成本和控制策略,由于神经网络的计算复杂性,求解大规模的多智能体问题非常耗时。为了在不知道模型信息的情况下寻求更快的最优控制收敛速度,设计了快速ADP算法框架,从理论上证明了收敛速度是由一些可配置参数决定的,并采用鲸鱼优化算法对给定空间的参数进行全局优化,得到最优构型。最后给出了数值仿真结果,验证了所设计算法的有效性。
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来源期刊
Asian Journal of Control
Asian Journal of Control 工程技术-自动化与控制系统
CiteScore
4.80
自引率
25.00%
发文量
253
审稿时长
7.2 months
期刊介绍: The Asian Journal of Control, an Asian Control Association (ACA) and Chinese Automatic Control Society (CACS) affiliated journal, is the first international journal originating from the Asia Pacific region. The Asian Journal of Control publishes papers on original theoretical and practical research and developments in the areas of control, involving all facets of control theory and its application. Published six times a year, the Journal aims to be a key platform for control communities throughout the world. The Journal provides a forum where control researchers and practitioners can exchange knowledge and experiences on the latest advances in the control areas, and plays an educational role for students and experienced researchers in other disciplines interested in this continually growing field. The scope of the journal is extensive. Topics include: The theory and design of control systems and components, encompassing: Robust and distributed control using geometric, optimal, stochastic and nonlinear methods Game theory and state estimation Adaptive control, including neural networks, learning, parameter estimation and system fault detection Artificial intelligence, fuzzy and expert systems Hierarchical and man-machine systems All parts of systems engineering which consider the reliability of components and systems Emerging application areas, such as: Robotics Mechatronics Computers for computer-aided design, manufacturing, and control of various industrial processes Space vehicles and aircraft, ships, and traffic Biomedical systems National economies Power systems Agriculture Natural resources.
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