멀티에이전트 강화학습 기반 다중 무인수상선의 편대 제어 및 충돌회피Formation Control and Collision Avoidance of Multiple USVs Based on Multi-agent Reinforcement Learning
- Other Titles
- Formation Control and Collision Avoidance of Multiple USVs Based on Multi-agent Reinforcement Learning
- Authors
- 구자평; 김기훈; 정종대
- Issue Date
- 12월-2024
- Publisher
- 제어·로봇·시스템학회
- Keywords
- collision avoidance; multi-agent reinforcement learning; .; unmanned surface vehicle; formation control
- Citation
- 제어.로봇.시스템학회 논문지, v.30, no.12, pp 1398 - 1405
- Pages
- 8
- Journal Title
- 제어.로봇.시스템학회 논문지
- Volume
- 30
- Number
- 12
- Start Page
- 1398
- End Page
- 1405
- URI
- https://www.kriso.re.kr/sciwatch/handle/2021.sw.kriso/10595
- ISSN
- 1976-5622
2233-4335
- Abstract
- In this study, we developed a reinforcement learning-based approach for the cooperative navigation of unmanned surface vehicles (USVs) in marine environments. Specifically, we addressed the formation control and collision avoidance of USVs. To achieve this, we used a virtual leader to coordinate the reference position of each USV so as to maintain a specific formation shape. Additionally, we designed a dedicated reward function within a reinforcement learning framework to simultaneously maintain given formations and maximize collision avoidance. The models were then trained and tested in simulation environments with various obstacles. We evaluated three algorithms for formation control performance and obstacle avoidance: deep Q-network (DQN), multi-agent proximal policy optimization (MAPPO), and multi-agent deep deterministic policy gradient (MADDPG). The results showed that the MAPPO algorithm has higher success rates in collision avoidance and better formation maintenance compared with DQN and MADDPG.
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