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Prediction of Coal Seam Permeability by Hybrid Neural Network Prediction Model.

Authors :
Wang, Jian
Zhao, Mifu
Wang, Bowen
Wang, Yahua
Yang, Gang
Ma, Tengfei
Xu, Jiafang
Source :
Journal of Energy Engineering. Aug2024, Vol. 150 Issue 4, p1-7. 7p.
Publication Year :
2024

Abstract

Coalbed methane (CBM) productive efficiency and coal mine disasters such as gas outbursts and water inrush are closely correlated with coal seam permeability. Effective prediction of coal seam permeability can provide guidance for CBM production and prevention of coal mine disasters. In this research, a hybrid neural network prediction model integrating a genetic algorithm, an adaptive boosting algorithm, and a back propagation neural network was developed to predict coal seam permeability. Additional momentum and variable learning rate algorithms were used to improve the learning rate and accuracy of the model, and the model structure was optimized, including the number of hidden layer nodes and the transfer function. The input parameters of the prediction model included gas pressure, compressive strength, reservoir temperature, and effective stress. The corresponding output parameter was coal seam permeability. The correlation between the parameters was calculated. Additionally, a comparative analysis between the proposed prediction model and four other prediction models was carried out to demonstrate the advantages of the proposed model. The results indicated that the correlations between compressive strength, gas pressure, reserve temperature, effective stress, and coal seam permeability were 0.334, −0.148 , −0.406 , and −0.785 , respectively. The proposed prediction model had high accuracy compared with the other prediction models, and its coefficient of determination and root mean squared error were 0.999 and 0.021. Thus, the model can predict coal seam permeability more accurately. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
07339402
Volume :
150
Issue :
4
Database :
Academic Search Index
Journal :
Journal of Energy Engineering
Publication Type :
Academic Journal
Accession number :
177928584
Full Text :
https://doi.org/10.1061/JLEED9.EYENG-5358