DOI QR코드

DOI QR Code

Prediction of pollution loads in agricultural reservoirs using LSTM algorithm: case study of reservoirs in Nonsan City

  • Heesung, Lim (Department of Agricultural and Rural Engineering, Chungnam National University) ;
  • Hyunuk, An (Department of Agricultural and Rural Engineering, Chungnam National University) ;
  • Gyeongsuk, Choi (Department of Agricultural Civil Engineering, Institute of Agricultural Science & Technology, Kyungpook National University) ;
  • Jaenam, Lee (Department of Rural Research Institute, Korea Rural Community Corporation) ;
  • Jongwon, Do (Department of Rural Research Institute, Korea Rural Community Corporation)
  • 투고 : 2021.11.02
  • 심사 : 2022.03.24
  • 발행 : 2022.06.01

초록

The recurrent neural network (RNN) algorithm has been widely used in water-related research areas, such as water level predictions and water quality predictions, due to its excellent time series learning capabilities. However, studies on water quality predictions using RNN algorithms are limited because of the scarcity of water quality data. Therefore, most previous studies related to water quality predictions were based on monthly predictions. In this study, the quality of the water in a reservoir in Nonsan, Chungcheongnam-do Republic of Korea was predicted using the RNN-LSTM algorithm. The study was conducted after constructing data that could then be, linearly interpolated as daily data. In this study, we attempt to predict the water quality on the 7th, 15th, 30th, 45th and 60th days instead of making daily predictions of water quality factors. For daily predictions, linear interpolated daily water quality data and daily weather data (rainfall, average temperature, and average wind speed) were used. The results of predicting water quality concentrations (chemical oxygen demand [COD], dissolved oxygen [DO], suspended solid [SS], total nitrogen [T-N], total phosphorus [TP]) through the LSTM algorithm indicated that the predictive value was high on the 7th and 15th days. In the 30th day predictions, the COD and DO items showed R2 that exceeded 0.6 at all points, whereas the SS, T-N, and T-P items showed differences depending on the factor being assessed. In the 45th day predictions, it was found that the accuracy of all water quality predictions except for the DO item was sharply lowered.

키워드

과제정보

본 연구는 농림축산식품부의 재원 농림식품기술기획평가원의 농업기반 및 재해대응기술 개발사업(과제번호:321071-3)의 지원으로 수행되었습니다.

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