Abstract

An intelligent shearer drum height regulating method is the key technology for mining at an unmanned coalface. In this study, a novel intelligent decision-making method of shearer drum height regulating is proposed, which makes a decision by selective ensemble the Kernel Extreme Learning Machine (KELM) with a self-learning ability. In this approach, the shearing coal process of the shearer is characterized based on the extended finite state machine. Transfer attributes are introduced to establish the decision information system of shearer drum height regulating. Then, propose a neighborhood rough reduction method is proposed to generate distinctive attribute subsets, which is applied to train the base classifiers based on the online KELM. Finally, we introduce an accuracy-guided forward search and post-pruning strategy to select part of the base classifiers for constructing an efficient and effective ensemble system of the shearer drum lifting prediction. For evaluating the proposed method, four evaluation metrics are used: accuracy, precision, recall rate and the F1-score, which are the most popular metrics for evaluating the performance of a classifier. We use the ten-fold cross validation method to optimize the hyperparameters. The proposed method is compared in two different scenarios: 1) three different classes of base classifier algorithms which including the Support Vector Machines (SVM), Support Vector Machines (CART) and K-NearestNeighbor (KNN) are used, and 2) two traditional ensemble methods including the bagging and random subspace. The proposed method is performed on the field datasets and the experimental results reveal that the method is effective in comparison to other approaches for shearer drum lifting prediction.

Highlights

  • IntroductionBACKGROUND As the coal mining depth of underground increases, the disasters such as gas explosion, rock collapse and water inrush occur frequently in the process of the coal mining, which seriously threaten the lives of coal miners in full mechanized coalface [1]

  • To further improve the accuracy of the base classifier and enhance the generalization performance with complex coal seam, we propose a KELM-SDHR classifier model based on KELM

  • Our comparison method is as follows: In Section D.1, we show the neighborhood data reduction subset based on the domain-granulated rough set; in Section D.2, we report the classification results of different base classifiers on the domain data set; in Section D.3, the relationship between the number of base classifiers and different ensemble classification performance indicators is shown; in Section D.4, the ensemble classification method proposed in this paper is compared with the traditional ensemble classification method, and the classification results of the integrated system under the two sets of attribute spaces are presented

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Summary

Introduction

BACKGROUND As the coal mining depth of underground increases, the disasters such as gas explosion, rock collapse and water inrush occur frequently in the process of the coal mining, which seriously threaten the lives of coal miners in full mechanized coalface [1] To improve this situation, the unmanned fully mechanized coal mining method is considered as an effective. The intelligent shearer, one of the main equipment in fully mechanized coalface, is a key equipment when using this method It has always been difficult for the shearer drum height intelligent regulating to realize the intelligence of the shearer, since the natural occurrence boundary of coal seams is very irregular due to sinking roof rocks and rising floor rocks frequently.

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