Prediction algorithm of coal and gas outburst based on IPSO-Powell optimized SVM

In view of problems of coal and gas outburst prediction algorithm based on support vector machine(SVM) that prediction accuracy and reliability are not high, classification of nonlinear data is not considered when selecting kernel function, and extraction effect of influence factors of coal and gas...

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Main Authors: WU Yaqin, LI Huijun, XU Danni
Format: Article
Language:zho
Published: Editorial Department of Industry and Mine Automation 2020-04-01
Series:Gong-kuang zidonghua
Subjects:
Online Access:http://www.gkzdh.cn/article/doi/10.13272/j.issn.1671-251x.2019110018
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author WU Yaqin
LI Huijun
XU Danni
author_facet WU Yaqin
LI Huijun
XU Danni
author_sort WU Yaqin
collection DOAJ
description In view of problems of coal and gas outburst prediction algorithm based on support vector machine(SVM) that prediction accuracy and reliability are not high, classification of nonlinear data is not considered when selecting kernel function, and extraction effect of influence factors of coal and gas outburst with nonlinear distribution is poor, a coal and gas outburst prediction algorithm which combines improved particle swarm optimization (IPSO) algorithm with Powell algorithm(IPSO-Powell) to optimize SVM was proposed. Firstly, main control factors of coal and gas outburst, namely initial velocity of gas emission, gas pressure, mining depth, gas content and failure type of coal body is extracted through grey correlation analysis and used as input samples of the algorithm. Then, IPSO algorithm is used to improve precocious convergence of particle swarm optimization (PSO), and Powell algorithm is used to search the local optimal solution, the penalty coefficient and Gaussian kernel function parameters of the SVM algorithm are optimized, the optimal parameter combination of SVM is obtained. Finally, the main control factors of coal and gas outburst are input to the SVM for classification , and compared with the actual test set classification results to achieve coal and gas outburst prediction. The simulation results show that compared with the SVM algorithm, GA-SVM algorithm and PSO-SVM algorithm, the application of IPSO-Powell optimized SVM algorithm for coal and gas outburst prediction has higher prediction accuracy, and improves the computational efficiency of the SVM solution process, which can meet the accuracy and reliability requirement of coal and gas outburst prediction with an accuracy rate of 95.9%.
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spelling doaj.art-4289c73f2d664685b0975233b82f82592022-12-21T19:17:57ZzhoEditorial Department of Industry and Mine AutomationGong-kuang zidonghua1671-251X2020-04-01464465310.13272/j.issn.1671-251x.2019110018Prediction algorithm of coal and gas outburst based on IPSO-Powell optimized SVMWU YaqinLI HuijunXU DanniIn view of problems of coal and gas outburst prediction algorithm based on support vector machine(SVM) that prediction accuracy and reliability are not high, classification of nonlinear data is not considered when selecting kernel function, and extraction effect of influence factors of coal and gas outburst with nonlinear distribution is poor, a coal and gas outburst prediction algorithm which combines improved particle swarm optimization (IPSO) algorithm with Powell algorithm(IPSO-Powell) to optimize SVM was proposed. Firstly, main control factors of coal and gas outburst, namely initial velocity of gas emission, gas pressure, mining depth, gas content and failure type of coal body is extracted through grey correlation analysis and used as input samples of the algorithm. Then, IPSO algorithm is used to improve precocious convergence of particle swarm optimization (PSO), and Powell algorithm is used to search the local optimal solution, the penalty coefficient and Gaussian kernel function parameters of the SVM algorithm are optimized, the optimal parameter combination of SVM is obtained. Finally, the main control factors of coal and gas outburst are input to the SVM for classification , and compared with the actual test set classification results to achieve coal and gas outburst prediction. The simulation results show that compared with the SVM algorithm, GA-SVM algorithm and PSO-SVM algorithm, the application of IPSO-Powell optimized SVM algorithm for coal and gas outburst prediction has higher prediction accuracy, and improves the computational efficiency of the SVM solution process, which can meet the accuracy and reliability requirement of coal and gas outburst prediction with an accuracy rate of 95.9%.http://www.gkzdh.cn/article/doi/10.13272/j.issn.1671-251x.2019110018prediction of coal and gas outburstmain control factorgrey correlation analysissupport vector machineimproved particle swarm optimizationpowell algorithm
spellingShingle WU Yaqin
LI Huijun
XU Danni
Prediction algorithm of coal and gas outburst based on IPSO-Powell optimized SVM
Gong-kuang zidonghua
prediction of coal and gas outburst
main control factor
grey correlation analysis
support vector machine
improved particle swarm optimization
powell algorithm
title Prediction algorithm of coal and gas outburst based on IPSO-Powell optimized SVM
title_full Prediction algorithm of coal and gas outburst based on IPSO-Powell optimized SVM
title_fullStr Prediction algorithm of coal and gas outburst based on IPSO-Powell optimized SVM
title_full_unstemmed Prediction algorithm of coal and gas outburst based on IPSO-Powell optimized SVM
title_short Prediction algorithm of coal and gas outburst based on IPSO-Powell optimized SVM
title_sort prediction algorithm of coal and gas outburst based on ipso powell optimized svm
topic prediction of coal and gas outburst
main control factor
grey correlation analysis
support vector machine
improved particle swarm optimization
powell algorithm
url http://www.gkzdh.cn/article/doi/10.13272/j.issn.1671-251x.2019110018
work_keys_str_mv AT wuyaqin predictionalgorithmofcoalandgasoutburstbasedonipsopowelloptimizedsvm
AT lihuijun predictionalgorithmofcoalandgasoutburstbasedonipsopowelloptimizedsvm
AT xudanni predictionalgorithmofcoalandgasoutburstbasedonipsopowelloptimizedsvm