Affiliation:
1. School of Mechanical and Electrical Engineering Guangzhou University Guangzhou China
2. Guangdong‐Hong Kong‐Macao Key Laboratory of Multi‐scale Information Fusion and Collaborative Optimization Control of Complex Manufacturing Process Guangzhou China
3. Anhui Province Center for International Research of Intelligent Control of High‐end Equipment Wuhu China
Abstract
AbstractIn this work, we present an optimal cooperative control scheme for a multi‐agent system in an unknown dynamic obstacle environment, based on an improved distributed cooperative reinforcement learning (RL) strategy with a three‐layer collaborative mechanism. The three collaborative layers are collaborative perception layer, collaborative control layer, and collaborative evaluation layer. The incorporation of collaborative perception expands the perception range of a single agent, and improves the early warning ability of the agents for the obstacles. Neural networks (NNs) are employed to approximate the cost function and the optimal controller of each agent, where the NN weight matrices are collaboratively optimized to achieve global optimal performance. The distinction of the proposed control strategy is that cooperation of the agents is embodied not only in the input of NNs (in a collaborative perception layer) but also in their weight updating procedure (in the collaborative evaluation and collaborative control layers). Comparative simulations are carried out to demonstrate the effectiveness and performance of the proposed RL‐based cooperative control scheme.
Funder
China Postdoctoral Science Foundation
National Natural Science Foundation of China
Guangdong Basic and Applied Basic Research Foundation
Subject
Electrical and Electronic Engineering,Industrial and Manufacturing Engineering,Mechanical Engineering,Aerospace Engineering,Biomedical Engineering,General Chemical Engineering,Control and Systems Engineering