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Performance of Logistic Model Tree Classifier using Statistical Features for Fault Diagnosis of Single Point Cutting Tool

机译:基于统计特征的Logistic模型树分类器对单点刀具故障诊断的性能

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Objective: A variety of tool condition monitoring techniques in modern manufacturing system plays a key role in estimating the tool wear which can save the machine downtime and increase the cutting tool utilization. Tool wear compromises dimensional accuracy and affects the precision, tolerance and surface finish. An active condition monitoring system of tool health is required for superior productivity. Method/Analysis: In this experimental study, the accelerometer was used to acquire the vibration signal during the turning operation in a lathe machine with good and fault simulated single point cutting tool. The signals are acquired for all combinations of spindle speeds, feed rates, depth of cuts and tool wear level. In this study, 3 different spindle speeds, feed rates and depth of cuts, and 4 different tool wear levels were considered. Statistical features were extracted from the acquired signal and substantial features were recognized using a decision tree algorithm. The identified substantial statistical features were considered in classifying signals using logistic model tree classifier. Findings: The classification accuracy obtained for all the signals combined (i.e., variable spindle speeds, feed rates, depth of cuts and tool wear levels) were found to be 74.27%. The classification accuracy achieved was improved through simplifying the model by considering feed rate and depth of cut as variable factor. The accuracy of the classification was found to be in the range of 82-86%. Further, the classification accuracy was found to increase to the range of 82-93%, when considering the depth of cut alone as variable factor. Application/Improvement: The utilization of logistic model tree to identify the tool wear level in a single point cutting tool during turning operation was comprehensively analysed in this study. The performance of the classifier on fault diagnosis of single point cutting tool and its improvement by reducing the complexity of the model was discussed.
机译:目的:现代制造系统中的各种刀具状态监测技术在估计刀具磨损方面起着关键作用,可以节省机器停机时间并提高切削刀具利用率。刀具磨损会损害尺寸精度,并影响精度,公差和表面光洁度。需要具有刀具健康状态的主动状态监视系统,以提高生产率。方法/分析:在本实验研究中,使用加速度计获取具有良好和故障模拟单点切削刀具的车床在车削过程中的振动信号。对于主轴转速,进给速度,切削深度和刀具磨损水平的所有组合都将获取信号。在这项研究中,考虑了3种不同的主轴转速,进给速率和切削深度,以及4种不同的刀具磨损水平。从采集的信号中提取统计特征,并使用决策树算法识别实质特征。在使用逻辑模型树分类器对信号进行分类时,会考虑已识别的大量统计特征。结果:发现所有组合信号的分类精度(即可变主轴速度,进给速度,切削深度和刀具磨损程度)为74.27%。通过将进给速度和切深作为变量因素简化模型,可以提高分类精度。发现分类的准确性在82-86%的范围内。此外,当单独考虑切割深度作为可变因素时,发现分类精度提高到82-93%的范围。应用/改进:在本研究中,全面分析了逻辑模型树在车削操作过程中识别单点切削刀具磨损程度的用途。讨论了分类器在单点刀具故障诊断中的性能以及通过降低模型的复杂度而进行的改进。

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