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메타분석을 적용한 드론 기반 해안 쓰레기 모니터링 기준 마련에 관한 연구

A Study on Establishment of Drone-Based Coastal Debris Monitoring Standards Using Meta-Analysis

  • Bo-Ram KIM (Korea Institute of Ocean Science & Technology) ;
  • Hyun-Woo CHOI (Korea Institute of Ocean Science & Technology) ;
  • Chol-Young LEE (Korea Institute of Ocean Science & Technology) ;
  • Tae-Hoon KIM (Korea Institute of Ocean Science & Technology)
  • 투고 : 2024.02.15
  • 심사 : 2024.03.15
  • 발행 : 2024.03.31

초록

국내 해안 쓰레기 모니터링은 노동 집약적 방식과 한정적인 조사 범위로 세밀한 분포 확인이 어렵다. 따라서 해안 쓰레기 자료수집의 효율성 증대를 위해 원격탐사 기법을 이용한 연구가 이루어지고 있다. 하지만 국내 원격탐사 기반 해안 쓰레기 모니터링 방안에 대한 기준이 미흡한 실정이다. 본 연구에서는 국내 연구 결과를 기초로 메타분석 방법을 적용하여 원격탐사체 중 드론을 이용한 해안 쓰레기 모니터링 연구 19건에 대해 모니터링 방법과 결과에 대해 분석하였다. 모니터링 방법을 대상으로 데이터 수집 방법, 수집 데이터 정보, 모니터링 대상지 정보에 대해 분석하였으며, 모니터링 결과를 대상으로 모니터링 실태, 탐지대상 및 활용모델에 대해 분석하였다. 또한, 메타분석 결과를 바탕으로 드론을 이용한 해안 쓰레기 모니터링 수행 시 고려 항목과 권장 항목, 수행 기준에 대한 모니터링 기준 항목을 제시하였다. 본 연구 결과를 통해 드론을 이용한 해안 쓰레기 모니터링 운용 기준 마련에 필요한 조건 및 기준을 정의하였으며, 추후 외국 사례 분석 및 현장 적용 결과를 추가하여 국가 차원의 원격탐사체를 이용한 해안 쓰레기 모니터링 지침 마련이 가능할 것으로 보인다.

Domestic coastal debris monitoring encounters challenges due to labor-intensive methods and limited survey scope. Consequently, research is utilizing remote sensing techniques to enhance efficiency in data collection. However, standards for domestic remote sensing based monitoring methods remain insufficient. In this study, we conducted a meta-analysis of 19 coastal debris monitoring studies utilizing drones and other remote sensing devices. We analyzed data collection methods, collected data information, monitoring target details, monitoring status, detection targets, and utilization models. Based on our meta-analysis results, we proposed monitoring criteria, recommended items, and performance standards for monitoring coastal debris using drones. Our findings define necessary conditions and standards for establishing operational guidelines for coastal debris monitoring using drones. Furthermore, we anticipate that incorporating foreign case analyses and field application results will enable the development of national-level guidelines for coastal debris monitoring utilizing remote sensing devices.

키워드

과제정보

이 논문은 한국해양과학기술원의 재원으로 "해양 생태계에 미치는 플라스틱 쓰레기의 영향 평가 기술개발" 사업 지원을 받아 수행된 연구임(PEA0204).

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