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Condition monitoring on grinding wheel wear using wavelet analysis and decision tree C4.5 algorithm

机译:基于小波分析和决策树C4.5算法的砂轮磨损状态监测

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A new online grinding wheel wear monitoring approach to detect a worn out wheel, based on acoustic emission (AE) signals processed by discrete wavelet transform and statistical feature extraction carried out using statistical features such as root mean square and standard deviation for each wavelet decomposition level and classified using tree based knowledge representation methodology decision tree C4.5 data mining techniques is proposed. The methodology was validate with AE signal data obtained in Aluminium oxide 99 A(38A) grinding wheel which is used in three quarters of majority grinding operations under different grinding conditions to validate the proposed classification system. The results of this scheme with respect to classification accuracy were discussed.
机译:一种新的在线砂轮磨损监测方法,该方法基于离散小波变换处理的声发射(AE)信号并使用统计特征(例如每个小波分解级别的均方根和标准偏差)进行统计特征提取来检测磨损的车轮提出了基于树的知识表示方法决策树C4.5数据挖掘技术进行分类的方法。该方法通过在氧化铝99 A(38A)砂轮中获得的AE信号数据进行了验证,该数据用于不同磨削条件下四分之三的多数磨削操作中,以验证所提出的分类系统。讨论了该方案关于分类准确性的结果。

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