Prediction of Daily Water Supply Using Neuro Genetic Hybrid Model

뉴로 유전자 결합모형을 이용한 상수도 1일 급수량 예측

  • 이경훈 (전남대학교 토목공학과) ;
  • 강일환 (경호엔지니어링(주) 상하수도부) ;
  • 문병석 (서남대학교 토목공학과) ;
  • 박진금 (대한주택공사 광주전남본부)
  • Received : 2005.04.25
  • Accepted : 2005.07.25
  • Published : 2005.08.31

Abstract

Existing models that predict of Daily water supply include statistical models and neural network model. The neural network model was more effective than the statistical models. Only neural network model, which predict of Daily water supply, is focused on estimation of the operational control. Neural network model takes long learning time and gets into local minimum. This study proposes Neuro Genetic hybrid model which a combination of genetic algorithm and neural network. Hybrid model makes up for neural network's shortcomings. In this study, the amount of supply, the mean temperature and the population of the area supplied with water are use for neural network's learning patterns for prediction. RMSE(Root Mean Square Error) is used for a MOE(Measure Of Effectiveness). The comparison of the two models showed that the predicting capability of Hybrid model is more effective than that of neural network model. The proposed hybrid model is able to predict of Daily water, thus it can apply real time estimation of operational control of water works and water drain pipes. Proposed models include accidental cases such as a suspension of water supply. The maximum error rate between the estimation of the model and the actual measurement was 11.81% and the average error was lower than 1.76%. The model is expected to be a real-time estimation of the operational control of water works and water/drain pipes.

Keywords

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