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Key technologies of ship remote control system in inland waterways under ship-shore cooperation conditions北大核心CSCD
引用本文:马枫,陈晨,刘佳仑,王绪明,严新平.Key technologies of ship remote control system in inland waterways under ship-shore cooperation conditions北大核心CSCD[J].中国舰船研究,2022(5):125-133.
作者姓名:马枫  陈晨  刘佳仑  王绪明  严新平
作者单位:1.武汉理工大学智能交通系统研究中心430063;2.武汉工程大学计算机科学与工程学院430205;3.武汉工程大学国家水运安全工程技术研究中心430063;4.南京智慧水运科技有限公司210028;5.湖北东湖实验室420202;
基金项目:国家自然科学基金资助项目(52171352);国家重点研发计划资助项目(2021YFB1600404);湖北省教育厅科学技术研究计划青年人才资助项目(Q20211502)。
摘    要:[Objective ] To meet the requirements of remotely controlling ship in curved, narrow and crowded inland waterways, this paper proposes an approach that consists of CNN-based algorithms and knowledge based models under ship-shore cooperation conditions. [Method]On the basis of analyzing the characteristics of ship-shore cooperation, the proposed approach realizes autonomous perception of the environment with visual simulation at the core and navigation decision-making control based on deep reinforcement learning, and finally constructs an artificial intelligence system composed of image deep learning processing, navigation situation cognition, route steady-state control and other functions. Remote control and short-time autonomous navigation of operating ships are realized under inland waterway conditions, and remote control of container ships and ferries is carried out. [Results]The proposed approach is capable of replacing manual work by remote orders or independent decision-making, as well as realizing independent obstacle avoidance, with a consistent deviation of less than 20 meters. [Conclusions]The developed prototype system carries out the remote control operation demonstration of the above ship types in such waterways as the Changhu Canal Shenzhou line and the Yangtze River, proving that a complete set of algorithms with a CNN and reinforcement learning at the core can independently extract key navigation information, construct obstacle avoidance and control awareness, and lay the foundation for inland river intelligent navigation systems. © 2022 Journal of Clinical Hepatology. All rights reserved.

关 键 词:远程驾驶  智能船舶  自主航行  深度强化学习  船岸协同
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