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Monitoring on Crop Condition using Remote Sensing and Model

원격탐사와 모델을 이용한 작황 모니터링

  • Lee, Kyung-do (National Institute of Agricultural Science, Rural Development Administration) ;
  • Park, Chan-won (National Institute of Agricultural Science, Rural Development Administration) ;
  • Na, Sang-il (National Institute of Agricultural Science, Rural Development Administration) ;
  • Jung, Myung-Pyo (National Institute of Agricultural Science, Rural Development Administration) ;
  • Kim, Junhwan (National Institute of Agricultural Science, Rural Development Administration)
  • 이경도 (농촌진흥청 국립농업과학원) ;
  • 박찬원 (농촌진흥청 국립농업과학원) ;
  • 나상일 (농촌진흥청 국립농업과학원) ;
  • 정명표 (농촌진흥청 국립농업과학원) ;
  • 김준환 (농촌진흥청 국립식량과학원)
  • Received : 2017.10.25
  • Accepted : 2017.10.26
  • Published : 2017.10.30

Abstract

The periodic monitoring of crop conditions and timely estimation of crop yield are of great importance for supporting agricultural decision-makings, as well as for effectively coping with food security issues. Remote sensing has been regarded as one of effective tools for crop condition monitoring and crop type classification. Since 2010, RDA (Rural Development Administration) has been developing technology for monitoring on crop condition using remote sensing and model. These special papers address recent state-of-the-art of remote sensing and geospatial technologies for providing operational agricultural information, such as, crop yield estimation methods using remote sensing data and process-oriented model, crop classification algorithm, monitoring and prediction of weather and climate based on remote sensing data,system design and architecture of crop monitoring system, history on rice yield forecasting method.

농작물 작황 추정은 생산량 예측을 통한 수급 조절, 가격 예측, 농가 소득 보전을 위한 정책 수립 등에 중요한 판단자료로 활용된다. 급변하는 국내외 여건에서 작물의 안정생산과 식량안보, 생태계 지속성 평가를 위해 원격탐사 등 국가차원의 미래기술 개발 노력이 요구되고 있다. 농촌진흥청은 2010년부터 국내외 주요 곡물생산지대 작황 평가를 위한 원격탐사, 작물모형, 농업기상 분야 원천기술 개발을 위해 노력해왔다. 본 특별호는 농촌진흥청에서 지난 8년간 국내외 작황 평가를 위해 수행해 온 원격탐사, 작물모형, 농업기상 분야의 연구개발 성과 및 연계된 이들 분야 간 융복합 연구 수행 현황을 정리하고 향후 연구 방향을 제시하고자 발간하게 되었다.

Keywords

References

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