Using swarm intelligence optimization algorithms to predict the height of fractured water-conducting zone

Author:

Zhao Dekang12345,Li Zhenghao1,Feng Guorui145,Wang Fulong1,Hao Chenwei1,He Yaming6,Dong Shuning2ORCID

Affiliation:

1. College of Mining Engineering, Taiyuan University of Technology, Taiyuan, China

2. Xi’an Research Institute Co. Ltd, China Coal Technology and Engineering Group Corp, Xi’an, China

3. School of Qilu Transportation, Shandong University, Jinan, China

4. Key Laboratory of Shanxi Province for Mine Rock Strata Control and Disaster Prevention, Taiyuan, China

5. Shanxi Province Research Center of Green Mining Engineering Technology, Taiyuan, China

6. Changzhi Xinjian Coal Industry Co. Ltd, Changzhi, China

Abstract

The accurate calculation of the height of fractured water-conducting zone (FWCZ) is of great significance for mine optimization design, water disaster prevention, and safety production of the coal mines. In this article, a height-prediction model of FWCZ based on extreme learning machine (ELM) is proposed. To address the issues of low prediction accuracy and challenging parameter optimization, we optimized the ELM model using the gray-wolf optimization algorithm (GOA), whale optimization algorithm (WOA), and salp optimization algorithm (SOA). These optimization algorithms mitigate the issues of slow convergence, poor stability, and local optimality associated with traditional neural networks. The mining depth, mining height, overburden strata structure, working face length, and coal seam dip angle are selected as the main controlling factors for the height of FWCZ. A total of 42 fields-measured samples are collected and divided into 2 subsets for training and validating with a ratio of 36/6. The prediction capability of GOA-ELM, WOA-ELM, and SOA-ELM models are evaluated and compared, and the results show that the calculation results of the three models are optimized compared with the ELM model. The prediction capability of GOA and WOA are similar, while the prediction results of SOA-ELM are better than the other two models, and the relative errors of the test sets are all less than 10%. Therefore, the SOA-ELM model is finally applied to predict the height of FWCZ formed after the mining of No.15 coal seam in Xinjian Coal Mine. Finally, we verified the prediction results using measured data from the borehole television detection instrument, which showed good consistency. This provides further evidence of the effectiveness of the swarm intelligence optimization algorithm in predicting the height of FWCZ.

Funder

Key projects of the Joint Fund of the National Natural Science Foundation of China

Distinguished Youth Funds of National Natural Science Foundation of China

Shanxi Province Science and Technology Major Project Funds

Shanxi Province Basic Research Plan Project

This research was financially supported by Youth Funds of National Natural Science Foundation of China

Major Science and Technology Projects of Shanxi Province

Publisher

SAGE Publications

Subject

Energy Engineering and Power Technology,Fuel Technology,Nuclear Energy and Engineering,Renewable Energy, Sustainability and the Environment

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