A hybrid Wavelet-CNN-LSTM deep learning model for short-term urban water demand forecasting

被引:0
|
作者
Zhengheng Pu
Jieru Yan
Lei Chen
Zhirong Li
Wenchong Tian
Tao Tao
Kunlun Xin
机构
[1] Tongji University,College of Environmental Science and Engineering
[2] Tongji University,Smart Water Joint Innovation RD Center
来源
Frontiers of Environmental Science & Engineering | 2023年 / 17卷
关键词
Short-term water demand forecasting; Long-short term memory neural network; Convolutional Neural Network; Wavelet multi-resolution analysis; Data-driven models;
D O I
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学科分类号
摘要
Short-term water demand forecasting provides guidance on real-time water allocation in the water supply network, which help water utilities reduce energy cost and avoid potential accidents. Although a variety of methods have been proposed to improve forecast accuracy, it is still difficult for statistical models to learn the periodic patterns due to the chaotic nature of the water demand data with high temporal resolution. To overcome this issue from the perspective of improving data predictability, we proposed a hybrid Wavelet-CNN-LSTM model, that combines time-frequency decomposition characteristics of Wavelet Multi-Resolution Analysis (MRA) and implement it into an advanced deep learning model, CNN-LSTM. Four models — ANN, Conv1D, LSTM, GRUN — are used to compare with Wavelet-CNN-LSTM, and the results show that Wavelet-CNN-LSTM outperforms the other models both in single-step and multi-steps prediction. Besides, further mechanistic analysis revealed that MRA produce significant effect on improving model accuracy.
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