Risk assessment of mine water inrush based on Semi-Supervised Deep Learning Model

Author:

Zhang Ye1,Tang Shoufeng1

Affiliation:

1. China University of Mining and Technology

Abstract

Abstract

To establish an effective coal mine floor water inrush prediction model, a semi-supervised model based on improved tri-training is presented. By using unlabeled data, the semi supervised model solves the limitation of limited labeled data in the water inrush dataset. Since water inrush characteristics have varying effects on accident occurrence, this paper proposes a mutual information Drop-SAE as the fundamental classifier for the semi-supervised model. The correlation between features and targets is assessed using mutual information, and features with weak correlation have their weights reset to zero to reduce the influence of irrelevant features on prediction accuracy. By contrasting water inrush incidents and model prediction results in typical North Chinese mining areas with real mining areas in Lianghuai, the superiority of this approach was confirmed. The results obtained demonstrate that, in contrast to conventional prediction techniques, the model presented in this article has an accuracy of 91.43%, whereas SAE's accuracy is 82.86%. In comparison to models that have been proposed recently (like IWOA-SVM), this model exhibits a 3% improvement in accuracy. The research results can be used in the prediction of water inrush, combining deep learning with semi-supervised models. The results have theoretical and practical significance.

Publisher

Research Square Platform LLC

Reference22 articles.

1. 、Shi LQ, Han J. Floor water inrush mechanism and prediction. China University of Mining and Technology Press, Xuzhou 2004

2. Application of improved CART algorithm in prediction of water inrush from coal seam floor;、Du Chunlei Zhang;Industry and Mine Automation,2014

3. Principal component logistic regression analysis in application of water outbursts from coal seam floor;、Liu Weitao Liao;Journal of Liaoning Technical University,2015

4. Prediction of water inrush from seam floor based on binomial logistic regression model and CART tree;、Liu Zaibin Jin;Coal Geology & Exploration,2009

5. 、Liu Zaibin, Jin Dewu, Liu Qisheng. Prediction of water inrush through coal floors based on data mining classification technique. Procedia Earth & Planetary Science 2011.3:166–174. https://doi.org/10.1016/j.proeps.2011.09.079

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