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Discussion on the prediction of engineering cost based on improved BP neural network algorithm

With the continuous improvement of the social and economic level, the investment in fixed assets in the whole society is increasing steadily, while the phenomenon of uncontrollable investment is becoming more and more serious. Therefore, it is very important to increase the investment estimate in th...

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Published in:Journal of intelligent & fuzzy systems 2019-01, Vol.37 (5), p.6091-6098
Main Authors: Wang, Bin, Dai, Jing
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Language:English
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description With the continuous improvement of the social and economic level, the investment in fixed assets in the whole society is increasing steadily, while the phenomenon of uncontrollable investment is becoming more and more serious. Therefore, it is very important to increase the investment estimate in the early stage of the project construction. Based on this, in this paper, by studying the BP neural network, a mathematical model of the prediction of engineering cost based on the improved BP neural network model was proposed; then, taking a 15-storey tall building in a residential district as a prediction object, by collecting and sorting out engineering cost data similar to the predicted object, the improved BP neural network model was estimated and trained; finally, the prediction of the engineering cost data for the project was carried out, and the actual results were compared with the estimation results of the traditional prediction model; thus, the speediness and accuracy of the proposed improved BP neural network model in the field of the prediction of engineering cost were verified.
doi_str_mv 10.3233/JIFS-179193
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subjects Algorithms
Continuous improvement
Engineering
Investment
Mathematical models
Model accuracy
Neural networks
Prediction models
Residential areas
Tall buildings
title Discussion on the prediction of engineering cost based on improved BP neural network algorithm
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