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Online Prediction Methodology on Grinding Wheel Wear Using Wavelet Analysis and Datamining Techniques

机译:基于小波分析和数据挖掘技术的砂轮磨损在线预测方法

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摘要

A novel approach on grinding wheel wear prediction to detect a worn out wheel is proposed in this paper, using PCA-DA, PLS-DA and Naive Byes data mining techniques from acoustic emission (AE) signals processed by discrete wavelet transform. The statistical features were extracted from the wavelet co efficient carried out for each wavelet decomposition level. The proposed approach was validated with AE signal data collected in Aluminium oxide 99A(38A) grinding wheel which is used in many of the common grinding operations in general practice under different grinding conditions. Validation results of the proposed data mining techniques for different machining conditions with respect to classification accuracy were discussed.
机译:本文提出了一种新颖的方法,利用PCA-DA,PLS-DA和Naive Byes数据挖掘技术从离散小波变换处理后的声发射(AE)信号中进行砂轮磨损预测,以检测出磨损的砂轮。从对每个小波分解级别进行的小波系数估计中提取统计特征。该建议方法已通过在氧化铝99A(38A)砂轮中收集的AE信号数据进行了验证,该数据用于不同实践中在许多常规磨削操作中的许多常见磨削操作。讨论了针对不同加工条件的分类精度所提出的数据挖掘技术的验证结果。

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