Multivariable Time Series Forecasting for Urban Water Demand Based on Temporal Convolutional Network Combining Random Forest Feature Selection and Discrete Wavelet Transform

被引:0
作者
Jun Guo
Hui Sun
Baigang Du
机构
[1] Wuhan University of Technology,School of Mechanical and Electronic Engineering
[2] Hubei Digital Manufacturing Key Laboratory,undefined
来源
Water Resources Management | 2022年 / 36卷
关键词
Multivariate time series prediction; Urban water demand; Temporal convolutional network;
D O I
暂无
中图分类号
学科分类号
摘要
Urban water demand forecasting is crucial to reduce the waste of water resources and environmental protection. However, the non-stationarity and non-linearity of the water demand series under the influence of multivariate makes water demand prediction one of the long-standing challenges. This paper proposes a new hybrid forecasting model for urban water demand forecasting, which includes temporal convolution neural network (TCN), discrete wavelet transform (DWT) and random forest (RF). In order to improve the model’s forecasting abilities, the RF method is used to rank the factors and remove the less important factors. The dimension of raw data is reduced to improve calculating efficiency and accuracy. Then, the original water demand series is decomposed into different characteristic sub-series of multiple variables with better-behavior by DWT to weaken the fluctuation of original series. At the core of the proposed model, TCN is utilized to establish appropriate prediction models. Finally, to test and validate the proposed model, a real-world multivariate dataset from a water plant in Suzhou, China, is used for comparison experiments with the most recent state-of-the-art models. The results show that the mean absolute percentage error (MAPE) of the proposed model is 1.22% which is smaller than the other benchmark models. The proposed model indicates the only 2.2% of the prediction results have a relative error of more than 5%. It shows that the reliable results of the proposed model can be a superior tool for urban water demand forecasting.
引用
收藏
页码:3385 / 3400
页数:15
相关论文
共 112 条
[21]  
da Silva GBL(2019)Wavelet-exponential smoothing: a new hybrid method for suspended sediment load modeling Environ Process 6 93-149
[22]  
Guo G(2017)A geospatially-enabled web tool for urban water demand forecasting and assessment of alternative urban water management strategies Environ Modell Softw 97 141-876
[23]  
Liu S(2020)Exploring Water Consumption in Dhaka City Using Instrumental Variables Regression Approaches Environ Process 7 8-undefined
[24]  
Wu Y(2019)A comparison of random forest variable selection methods for classification prediction modeling Expert Syst Appl 134 undefined-undefined
[25]  
Li J(2018)Thermal load forecasting in district heating networks using deep learning and advanced feature selection methods Energy 157 undefined-undefined
[26]  
Zhou R(2019)Multivariate temporal convolutional network: A deep neural networks approach for multivariate time series forecasting Electronics 8 undefined-undefined
[27]  
Zhu X(2020)Data-driven reduced order model with temporal convolutional neural network Comput Method Appl M 360 undefined-undefined
[28]  
Haque MM(2020)A novel deep learning framework: Prediction and analysis of financial time series using CEEMD and LSTM Expert Syst Appl 159 undefined-undefined
[29]  
de Souza AR(2019)A novel feature selection method based on global sensitivity analysis with application in machine learning-based prediction model Appl Soft Comput 85 undefined-undefined
[30]  
Hu S(undefined)undefined undefined undefined undefined-undefined