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NTIS 바로가기한국농공학회논문집 = Journal of the Korean Society of Agricultural Engineers, v.61 no.1, 2019년, pp.107 - 120
김마가 (Department of Rural Systems Engineering, Seoul National University) , 최진용 (Department of Rural Systems Engineering, Research Institute of Agriculture and Life Sciences, Seoul National University) , 방재홍 (Department of Rural Systems Engineering, Seoul National University) , 이재주 (Rural Research Institute, Korea Rural Community Corporation)
Reservoir water level data identify the current water storage of the reservoir, and they are utilized as primary data for management and research of agricultural water. For the reservoir storage management, Korea Rural Community Corporation (KRC) installed water level stations at around 1,600 agricu...
핵심어 | 질문 | 논문에서 추출한 답변 |
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인공신경망 모형은 어떻게 구성되나요? | 인공신경망 모형은 뉴런과 시냅스로 이루어져 있는 인간의 뇌 구조를 단순화하여 만든 연산모델로 단순한 연산자들의 결합으로 구성되어 있다. 인공신경망 모형은 문제를 해결하기 위한 직접적인 지식이나 방법을 설정하지 않아도 주어진 자료를 통해 문제를 해결할 수 있으며 (Yeo et al. | |
수문 자료가 무엇인가요? | 수문 자료는 수자원을 이용하고 관리하기 위해 필요한 분석의 중요한 기초자료이며, 댐의 운영이나 홍수조절, 관개용수 관리 등 다양한 분야에 밀접하게 관련되어 있다. 특히 저수지 수위자료는 저수지 용량 곡선을 이용하여 저수용량을 산정하는 기준으로 사용되고 있으며 (Jeong and Kim, 2007), 저수지 운영 모형의 개발 (Shim et al. | |
저수지 수위계측 방식 두 가지는 무엇이며, 문제점은 무엇인가요? | 한국에서는 10만 톤이상의 저수용량을 가진 농업용 저수지에 대해 전국 약 1,600여개의 저수지 수위계측 장비가 설치되어 있다. 수위계측은 10분 단위 간격으로 이루어지며, 압력식 센서와 초음파식 센서를 사용하는 두 가지 방식이 있다. 그러나 압력식 센서의 경우 사통 내부로 토사물이 유입되거나 센서 부근에 퇴적된 토사 등으로 인해 이상치가 발생할 수 있으며, 초음파 센서의 경우 기온, 습도 등 환경 변화나 파랑, 센서 부근의 수초 등 장애물과 같은 물리적인 이유로 인한 이상치가 발생할 수 있다 (Bang et al., 2017). |
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