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다중선형회귀분석에 의한 계절별 저수지 유입량 예측 KCI 등재

Forecasting of Seasonal Inflow to Reservoir Using Multiple Linear Regression

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한국환경과학회지 (Journal of Environmental Science International)
한국환경과학회 (The Korean Environmental Sciences Society)
초록

Reliable long-term streamflow forecasting is invaluable for water resource planning and management which allocates water supply according to the demand of water users. Forecasting of seasonal inflow to Andong dam is performed and assessed using statistical methods based on hydrometeorological data. Predictors which is used to forecast seasonal inflow to Andong dam are selected from southern oscillation index, sea surface temperature, and 500 hPa geopotential height data in northern hemisphere. Predictors are selected by the following procedure. Primary predictors sets are obtained, and then final predictors are determined from the sets. The primary predictor sets for each season are identified using cross correlation and mutual information. The final predictors are identified using partial cross correlation and partial mutual information. In each season, there are three selected predictors. The values are determined using bootstrapping technique considering a specific significance level for predictor selection. Seasonal inflow forecasting is performed by multiple linear regression analysis using the selected predictors for each season, and the results of forecast using cross validation are assessed. Multiple linear regression analysis is performed using SAS. The results of multiple linear regression analysis are assessed by mean squared error and mean absolute error. And contingency table is established and assessed by Heidke skill score. The assessment reveals that the forecasts by multiple linear regression analysis are better than the reference forecasts.

목차
Abstract
 1. 서 론
 2. 자료 및 방법
  2.1. 예측인자 선정방법
 3. 결과 및 고찰
  3.1. 예측인자 선정결과
  3.2. 다중선형회귀분석에 의한 예측 결과 및 평가
 4. 결 론
 참 고 문 헌
저자
  • 강재원(충남대학교 국제수자원연구소) | Jaewon Kang (International Water Resources Research Institute, Chungnam National University) Corresponding author