동적 환경에서의 강화학습기반 자율 수중 차량 변침점 생성 알고리즘에 관한 연구
Reinforcement Learning-Based Autonomous Underwater Vehicle Waypoint Generation Algorithm in Dynamic Environments
  • 노지민
  • 이현수
  • 송일석
  • 김승환
  • 김영대
  • ... 박수현
  • 외 1명
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초록

This paper proposes a method to optimize the autonomous torpedo maneuver path for reaching the target of torpedoes, which are explosive projectile weapons in naval operations. For flexible maneuvering of torpedoes, movement in various directions is considered. Also, the obstacles in the actual marine environment and the minimization of the waypoint that occurs when the angle of the torpedoes is changed considered to increase the efficiency of torpedo maneuvering. Consequently, this study presents the environment that reflects the action of the torpedo in various directions according to the maximum rotation angle. Torpedo maneuver strategy is formulated by applying a Markov Decision Process based reinforcement learning algorithm, Q-Learning. Compared to the general Q-Learning algorithm, the superiority of the proposed algorithm is assessed and its applicability in the actual marine environment, through the success rate of reaching the target point and the number of waypoints.

키워드

Autonomous underwater vehicle(AUV)Impact AngleReinforcement learningWaypoint
제목
동적 환경에서의 강화학습기반 자율 수중 차량 변침점 생성 알고리즘에 관한 연구
제목 (타언어)
Reinforcement Learning-Based Autonomous Underwater Vehicle Waypoint Generation Algorithm in Dynamic Environments
저자
노지민이현수송일석김승환김영대박수현김중헌
DOI
10.7840/kics.2025.50.5.712
발행일
2025-05
유형
Article
저널명
한국통신학회논문지
50
5
페이지
712 ~ 721