과제정보
본 논문은 2021년 해양수산부 재원으로 해양수산과학기술진흥원(과제번호20210659)의 지원을 받아 수행되었으며, 이에 감사드립니다. 또한 항 내 시설물 촬영 및 지원에 협조해주신 ◯◯항만공사에 감사드립니다.
참고문헌
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