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Erschienen in: Water Resources Management 6/2021

13.04.2021

An Ensemble-Learning-Based Method for Short-Term Water Demand Forecasting

verfasst von: Haidong Huang, Zhixiong Zhang, Fengxuan Song

Erschienen in: Water Resources Management | Ausgabe 6/2021

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Abstract

Short-term water demand forecasting has always been a hot research topic in the field of water distribution systems, and many researchers have developed a wide variety of methods based on different prediction periodicities. However, few studies have paid attention to using ensemble learning methods for short-term water demand forecasting. In this study, an ensemble-learning-based method was developed to forecast short-term water demand. The proposed method consists of two models: an equal-dimension and new-information model and an ensemble learning model. The purpose of the equal-dimension and new-information model is to update data for modelling periodically, while the ensemble learning model is used for water demand forecasting. To evaluate the forecasting performance, the proposed method was applied to a data set obtained from a real-world water distribution system and compared with the single back-propagation neural network (BPNN) model and the seasonal autoregressive integrated moving average (SARIMA) model. The results show that the proposed method improves both the accuracy and stability of water demand prediction. The proposed method has the potential to provide a promising alternative for short-term water demand forecasting.

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Metadaten
Titel
An Ensemble-Learning-Based Method for Short-Term Water Demand Forecasting
verfasst von
Haidong Huang
Zhixiong Zhang
Fengxuan Song
Publikationsdatum
13.04.2021
Verlag
Springer Netherlands
Erschienen in
Water Resources Management / Ausgabe 6/2021
Print ISSN: 0920-4741
Elektronische ISSN: 1573-1650
DOI
https://doi.org/10.1007/s11269-021-02808-4

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