Litcius/Paper detail

Multi-Agent Coverage Path Planning via Proximity Interaction and Cooperation

Lei Jiao, Zhihong Peng, Lele Xi, Shuxin Ding, Jinqiang Cui

2022IEEE Sensors Journal31 citationsDOI

Abstract

In multi-agent systems, the decision of an agent will be affected by the behaviors of others. Therefore, from the perspective of an agent, the situation is uncertain and random. Inspired by the social behaviors in the biological world, a novel multi-agent coverage path planning algorithm is proposed. Based on the positions of agents, the problem is decoupled, which can effectively reduce the dimension of the decision space. The behavior-guide-point is introduced to guide agents in making decisions, and a new motion mode is presented. To avoid falling into the local optimum, a cooperation mechanism is designed, which can improve the adaptability of the system. Through proximity interaction, the prediction results obtained via the model predictive control (MPC) technology are fused, evaluated, and sorted within the neighborhood, based on which decisions are gained. The proposed algorithm can handle emergencies in unknown environments such as body damage and moving obstacles, and can also be applied to heterogeneous systems. Simulation shows that compared with other algorithms, it has advantages in terms of the makespan and the coverage repetition rate.

Topics & Concepts

Computer scienceAdaptabilityMotion planningPerspective (graphical)Multi-agent systemDimension (graph theory)Mathematical optimizationPath (computing)Distributed computingAutonomous agentArtificial intelligenceMathematicsRobotPure mathematicsEcologyProgramming languageBiologyRobotic Path Planning AlgorithmsDistributed Control Multi-Agent SystemsReinforcement Learning in Robotics