RESEARCH ON CLASSIFICATION AND PREDICTION METHOD OF RURAL RESIDENTS’ACCEPTANCE FOR CLEAN HEATING BASED ON MULTI-FACTOR WEIGHT ANALYSIS

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作者
Zhu, Kexin [1 ]
Luo, Xi [2 ,3 ]
Liu, Xiaojun [1 ,3 ]
Gao, Yaru [1 ]
机构
[1] School of Management, Xi’an University of Architecture & Technology, Xi’an,710055, China
[2] School of Building Services Science and Engineering, Xi’an University of Architecture & Technology, Xi’an,710055, China
[3] State Key Laboratory of Green Building, Xi’an,710055, China
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D O I
10.19912/j.0254-0096.tynxb.2023-0977
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摘要
In this study,a classification model based on multi-factor weight analysis(K-means-EWM-BP)is proposed to forecast the acceptability of clean heating for rural residents. Firstly,rural residents are classified based on data from a field survey by taking gender,age,education level,and total annual household income as clustering characteristics. Secondly,on the basis of classification,multi-factor weight analysis is carried out on the influence factors of the acceptability of clean heating of various rural residents. Finally,the K-mean-EWM-BP model is constructed to forecast and verify the acceptability of clean heating for rural residents.The results show that:1)the rural residents can be divided into three categories,with 31% influenced by education level (category 1),43% by annual household income(category 2),and 26% by gender(category 3). 2)The forecasted acceptance rate of clean heating for rural residents in category 1 is 95%,the forecasted acceptance rate of clean heating for rural residents in category 2 is 100%,and the forecasted acceptance rate of clean heating for rural residents in category 3 is 72%. 3)The K-means-EWM-BP model achieves an accuracy of 91.43% in forecasting the acceptance rate of clean heating by farmers,surpassing both the EWM-BP model(with an accuracy of 87.14%)and the BP model(with an accuracy of 80%). Meanwhile,the root mean square error of the K-means-EWM-BP model declines by 0.01 and 0.06 relative to the EWM-BP model and the BP model,respectively. © 2024 Science Press. All rights reserved.
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页码:249 / 255
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