基于ENC的智能分割处理及导航区域优化方法研究

Bing Li, Mingze Li, Zhigang Qi
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引用次数: 0

摘要

随着海洋资源的开发利用,智能导航的重要性日益凸显,而航区的智能优化是智能导航的关键。针对传统海图处理和航路选择中忽略水深和船舶状态的问题,提出了一种基于电子海图(ENC)的导航区域智能分割处理和优化框架。结合航海相关标准、船舶数据、海洋环境等,建立船舶允许航行水深与船舶吃水深度的关系模型,通过电子海图智能分割算法对航行区域进行优化,提高船舶航行的安全性。最后,通过实验验证了所提出的船舶导航区域优化框架的有效性。
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Research on Intelligent Segmentation Processing and Navigation Area Optimization methods Based on ENC
As marine resources are being exploited, intelligent navigation is becoming more important, and intelligent optimization of navigation areas is the key to intelligent navigation. In this paper, we propose a framework for intelligent segmentation processing and optimization of navigation areas based on electronic nautical charts (ENC), addressing the problem of ignoring the depth of the sea and the state of the vessel in traditional chart processing and route selection. Combined with navigation-related standards, ship data, marine environment, etc., we build a model for the relationship between the permissible water depth of navigation and the ship’s draft depth, and optimize the navigation area through the intelligent segmentation algorithm of electronic nautical charts, which helps to improve the safety of ship navigation. Finally, the effectiveness of the proposed ship navigation area optimization framework is verified through experiments.
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