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Abstract The block erection using a crane such as a gantry crane and a floating crane is one of the most important processes in the production of ships and offshore structures. To mount the block with the correct position and angle, it is important to control the block accurately not to occur the unexpected movement like rotation. However, it is difficult to apply the existing control theory to the block lifting operation because the movement of the block is controlled indirectly with the control of various objects such as the crane and wire ropes. To solve this problem, a block control method based on deep reinforcement learning is proposed in this study. The proposed method is easier to control the block with wire ropes and to consider irregular external force than existing control theory. In this study, the angle and angular velocity of the lifting block and the hoisting speed of each wire rope that can affect the motion of the block are set as states of reinforcement learning, and the hoisting speed that is the control object is set as an action of reinforcement learning. The reward function of reinforcement learning is designed to increase when the angle of the block decrease and the speed of the block is close to the target speed. In this study the policy gradient method which is a kind of policy-based methods of deep reinforcement learning is used to solve the problem with continuous states and action. To check the applicability and feasibility of the proposed method, The block lifting simulation is performed using the existing control theory and the proposed method. We compared the proposed method with the existing control theory. The result shows that the proposed method can minimize the motion of the lifting block more effectively than the existing control theory.
Publication Date 2019-08-28

Do-Hyun Chun, Myung-Il Roh, Hye-Won Lee, Seung-Ho Ham, "A Crane Movement Control for Stability of Block Erection Based on Deep Reinforcement Learning", MIM(International Federation of Automatic Control) 2019, Berlin, Germany, 2019.08.28-30


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번호 분류 제목 Publication Date
476 Domestic Conference 김동우, 노명일, 전도현, 우선홍, 김진혁, 김용태, 이혜원, "멤브레인형 액화가스 화물창 1차방벽 최적 형상 개발을 위한 딥러닝 기반 구조 안전성 예측 방법", 2023년도 대한조선학회 춘계학술발표회, 부산, pp. 22-23, 2023.05.02-04 file 2023-05-03
475 Domestic Conference 김하연, 노명일, 하지상, 조영민, 이혜원, "센서 데이터를 활용한 해상 장애물의 개선된 추적 방법", 2023년도 대한조선학회 춘계학술발표회, 부산, pp. 436, 2023.05.02-04 file 2023-05-04
474 Domestic Conference 하지상, 노명일, 공민철, 김기수, "장비 및 배관의 다단계 최적화를 활용한 선박의 기관실 배치 방법", 2023년도 대한조선학회 춘계학술발표회, 부산, pp. 311, 2023.05.02-04 file 2023-05-02
473 Domestic Conference 김진혁, 노명일, 여인창, "설계 요구 조건을 고려한 MLP 기반 상선의 선형 변환 방법", 2023년도 대한조선학회 춘계학술발표회, 부산, pp. 309-310, 2023.05.02-04 file 2023-05-04
472 Domestic Conference 조영민, 노명일, 전도현, 하지상, 이혜원, 유동훈, 진은석, "개선된 센서 데이텨 연관 및 융합 방법", 2023년도 대한조선학회 춘계학술발표회, 부산, pp. 261, 2023.05.02-04 file 2023-05-03
471 Domestic Conference 공민철, 노명일, 한인수, 김미진, 김정연, "P&ID 내 객체 및 문자 인식 방법", 2023년도 대한조선학회 춘계학술발표회, 부산, pp. 313-314, 2023.05.02-04 file 2023-05-04
470 Domestic Conference 여인창, 노명일, 공민철, 전도현, 하지상, 유동훈, 진은석, "선박의 자동 접이안을 위한 서라운드 뷰 생성 방법", 2023년도 대한조선학회 춘계학술발표회, 부산, pp.315-316, 2023.05.02-04 file 2023-05-04
469 Domestic Conference 전도현, 노명일, 이혜원, 유동훈, 진은석 "입력 데이터의 불확실성과 복잡한 조우 상황을 고려한 충돌 위험도 평가 방법", 2023년도 대한조선학회 춘계학술발표회, 부산, pp. 442, 2023.05.02-04 file 2023-05-04
468 Domestic Conference 노명일, "자율운항선박을 위한 핵심 AI 기술", 2023년도 스마트전기선박연구회 동계학술발표회, 대전, 2023.02.23-24 file 2023-02-23
467 Domestic Conference 김동우, 노명일, 전도현, 우선홍, 이혜원, 김용태, "딥 러닝을 이용한 멤브레인 타입 LNG선 화물창의 1차 방벽의 형상 최적화 방법 ", 2023년도 한국CDE학회 동계학술발표회, 평창, pp. 275, 2023.02.08-11 file 2023-02-10
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