Acknowledgement
이 논문은 2022년도 정부(해양수산부)의 재원으로 해양수산과학기술진흥원-과학기술기반 해양환경영향평가 기술개발사업 지원을 받았으며 (KIMST-20210427), 환경부의 재원으로 한국환경산업기술원의 환경보건디지털 조사기반 구축 기술개발사업의 지원을 받아 연구되었습니다(2021003330001(NTIS: 1485017948))
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