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자율운항선박 도입을 위한 수치해도 데이터 활용 해상교통분석 개선방안
A Study on Improvement of Maritime Traffic Analysis Using Shape Format Data for Maritime Autonomous Surface Ships 원문보기

海洋環境安全學會誌 = Journal of the Korean society of marine environment & safety, v.28 no.6, 2022년, pp.992 - 1001  

황태웅 (목포해양대학교 해상운송시스템학부) ,  황태민 (목포해양대학교 해상운송시스템학부) ,  윤익현 (목포해양대학교 항해정보시스템학부)

초록
AI-Helper 아이콘AI-Helper

해상교통분석은 복잡해지는 해양환경에 따라 발생하는 문제해결을 위해 다방면으로 시행되고 있다. 하지만 4차 산업혁명으로부터 도래된 자율운항선박 개발 등의 해사분야 동향은 해상교통분석에도 변화가 필요함을 암시한다. 이에 해상교통분석의 개선점을 식별하고자 관련 연구를 분석하였으며, AIS데이터의 활용도가 높은 반면에 해도정보의 활용은 그 중요도에 비해 부족한 것으로 조사되었다. 이에 본 연구는 자율운항선박의 상용화에 대비한 해상교통분석의 개선점으로서 수치해도 데이터와 선박운항데이터인 AIS데이터를 복합적으로 활용하는 방법을 제시하였다. 연구결과로써 해상교통분석에 수치해도데이터를 활용하였을 때 추출 가능한 해상교통특성을 제시하였으며 이는 향후 자율운항선박의 도입을 위한 해상교통분석에 활용가능할 것으로 기대된다.

Abstract AI-Helper 아이콘AI-Helper

The maritime traffic analysis has been conducted in various ways to solve problems arising from the complex marine environment. However, recent trends in the maritime industry, such as the development of the maritime autonomous surface ships (MASS), suggest that maritime traf ic analysis needs chang...

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참고문헌 (62)

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