Litcius/Paper detail

A Multi-AUV Maritime Target Search Method for Moving and Invisible Objects Based on Multi-Agent Deep Reinforcement Learning

Guangcheng Wang, Fenglin Wei, Yu Jiang, Minghao Zhao, Kai Wang, Hong Qi

2022Sensors36 citationsDOIOpen Access PDF

Abstract

Target search for moving and invisible objects has always been considered a challenge, as the floating objects drift with the flows. This study focuses on target search by multiple autonomous underwater vehicles (AUV) and investigates a multi-agent target search method (MATSMI) for moving and invisible objects. In the MATSMI algorithm, based on the multi-agent deep deterministic policy gradient (MADDPG) method, we add spatial and temporal information to the reinforcement learning state and set up specialized rewards in conjunction with a maritime target search scenario. Additionally, we construct a simulation environment to simulate a multi-AUV search for the floating object. The simulation results show that the MATSMI method has about 20% higher search success rate and about 70 steps shorter search time than the traditional search method. In addition, the MATSMI method converges faster than the MADDPG method. This paper provides a novel and effective method for solving the maritime target search problem.

Topics & Concepts

Reinforcement learningComputer scienceSet (abstract data type)Artificial intelligenceSearch and rescueSearch problemUnderwaterConstruct (python library)Search algorithmObject (grammar)State (computer science)Computer visionReal-time computingAlgorithmRobotGeographyArchaeologyProgramming languageRobotic Path Planning AlgorithmsOptimization and Search ProblemsDistributed Control Multi-Agent Systems