Water consumption prediction and influencing factor analysis based on PCA-BP neural network in karst regions: a case study of Guizhou Province

被引:0
|
作者
Zhicheng Yang
Bo Li
Huang Wu
MengHua Li
Juan Fan
Mengyu Chen
Jie Long
机构
[1] Guizhou University,Key Laboratory of Karst Georesources and Environment, Ministry of Education
[2] Guizhou University,College of Resource and Environmental Engineering
[3] Xi’an University of Science and Technology,College of Geology and Environment
[4] Chinese Research Academy of Environmental Sciences,State Key Laboratory of Environmental Criteria and Risk Assessment
关键词
Karst region; Water consumption prediction; Principal component analysis; BP neural network prediction; Influencing factor;
D O I
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中图分类号
学科分类号
摘要
Water consumption prediction is an integral part of water resource planning and management. Constructing a highly precise water consumption prediction model is of great significance for promoting regional water resource planning and high-quality development of the socio-economy. This paper focuses on the case of the typical karst region in Guizhou Province in China. Based on data on water consumption and its influencing factors spanning 2000–2020, the principal component analysis method was applied to reduce the dimensionality of 16 influencing factors of water consumption in Guizhou; the principal components extracted were used as input samples of the BP neural network and a PCA-BP neural network water consumption prediction model was conducted to predict water consumption of Guizhou Province in the next 10 years. The results show that the mean absolute error and mean relative error of prediction based on the constructed PCA-BP neural network were 2.8% and 2.9%, respectively, with superior performance in terms of prediction error and trends compared with other models. This paper discusses the main influencing factors of water consumption and analyzes their influence on the water consumption forecasting model so that the parameters of the water consumption forecasting model can be selected more efficiently and provide a reference for regional water consumption analysis and water resource planning and management.
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页码:33504 / 33515
页数:11
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