A Support Vector Machine Based Prediction on Sensitivity to Coal Ash Blast for Different Degrees of Deterioration

J. Sensors Pub Date : 2022-08-08 DOI:10.1155/2022/7604338
J. Zhang, Qingxia Wang, Wannian Guo, L. Li
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Abstract

Coal ash blast is a potential hazard that causes serious disasters in coal mines. In explosion control, research work on coal ash sensitivity prediction is of practical importance to improve accuracy, reduce blindness of explosion protection measures, and strengthen targets. The potential and destructive characteristics of coal ash blast vary greatly from coal to coal, especially in coal mines with complex and changing environments, where the characteristics of coal ash blast show great variability under the influence of various factors. In addition, due to the lack of systematic and comprehensive understanding of the occurrence mechanism of coal ash blast, it is necessary to conduct systematic research on the occurrence mechanism of coal ash blast. Current coal ash blast sensitivity summarizes and concludes prediction methods to create reliable predictions for coal ash blast. A new general learning method, support vector machine (SVM), has been developed, which provides a unified framework for solving limited sample training problems and can better solve small sample training problems. With the purpose of determining the coal mine problem and coal ash sensitivity prediction sensitivity indicators and thresholds, the SVM method is used to set the sensitivity function of each prediction indicator, and the sensitivity of each prediction indicator for the proposed study mine is expressed quantitatively. The experimental results show that the prediction accuracy of SVM for positive and negative categories is 15.6% higher than that of BP neural network and 35.1% higher than that of Apriori algorithm. Therefore, the prediction effectiveness of the SVM algorithm is proved. Therefore, it is practical to adopt SVM method for prediction on sensitivity to coal ash blast and apply the latest statistical learning theory SVM to predict the risk of coal ash.
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基于支持向量机的不同变质程度煤灰爆破敏感性预测
煤灰爆是煤矿生产中造成严重灾害的潜在危险。在爆炸控制中,研究煤灰敏感性预测对提高爆炸控制的准确性、降低防爆措施的盲目性、强化目标性具有重要的现实意义。不同煤种的粉煤灰爆破潜力和破坏特性差异很大,特别是在环境复杂多变的煤矿中,在各种因素的影响下,粉煤灰爆破特性表现出很大的变异性。此外,由于对粉煤灰鼓风赋存机理缺乏系统、全面的认识,有必要对粉煤灰鼓风赋存机理进行系统的研究。总结和总结了目前灰风敏感性的预测方法,以建立可靠的灰风预测。支持向量机(SVM)是一种新的通用学习方法,它为解决有限样本训练问题提供了统一的框架,并能更好地解决小样本训练问题。为了确定煤矿问题及煤灰敏感性预测的敏感性指标和阈值,利用支持向量机方法设置各预测指标的敏感性函数,定量表达拟研究煤矿各预测指标的敏感性。实验结果表明,SVM对正负类的预测准确率比BP神经网络提高15.6%,比Apriori算法提高35.1%。从而证明了支持向量机算法的预测有效性。因此,采用支持向量机方法预测煤灰爆炸的敏感性,并应用最新的统计学习理论支持向量机预测煤灰的风险是可行的。
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