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Defects Classification of Steel Cord Conveyor Belt Based on Rough Set and Multi-class v-SVM

机译:基于粗糙集和多类v-SVM的钢丝绳输送带缺陷分类

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Because of steel cord conveyor belt with high load operating and complex conditions of coal mine, it is prone to cause conveyor belt horizontal rupture. It will bring tremendous hazards for coal mine production. Twelve time domain features of joints signals, broken wires signals and abrasion signals for steel cord conveyor belt were extracted with weak magnetic detection system. The algorithm of combining rough set based on information entropy with multiclass v-SVM based on binary tree was proposed to classify the three categories signals. The experiment results show that rough set reduction algorithm based on information entropy can effectively achieve feature reduction and classification speed of multiclass v - SVM classification algorithm based on binary tree can be improved by rough set feature reduction without changing classification accuracy.
机译:由于钢丝绳输送带工作负荷高,煤矿条件复杂,容易引起输送带水平断裂。它将给煤矿生产带来巨大的危害。利用弱磁检测系统提取了钢丝绳输送带接头信号,断线信号和磨损信号的十二个时域特征。提出了一种基于信息熵的粗糙集与基于二叉树的多类v-SVM相结合的算法,对三类信号进行分类。实验结果表明,基于信息熵的粗糙集约简算法可以有效地实现特征约简,在不改变分类精度的情况下,通过粗糙集特征约简可以提高基于二叉树的多类v-SVM分类算法的分类速度。

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