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Tool wear monitoring using naive Bayes classifiers

机译:使用朴素贝叶斯分类器进行刀具磨损监测

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摘要

A naive Bayes classifier method for tool condition monitoring is described. End-milling tests were performed at different spindle speeds and the cutting force was measured using a table-mounted dynamometer. The effect of tool wear on force features in the time and frequency domains was evaluated and used for training the classifier. The amount of tool wear was predicted using the naive Bayes classifier method. Two cases are presented. First, the tool wear is divided into discrete states based on the amount of flank wear and the probability of the tool wear being in any state is updated using force data. Second, a continuous case is considered and the probability density function of the tool flank wear width is updated. The results are discussed.
机译:描述了一种用于工具状态监控的朴素贝叶斯分类器方法。在不同的主轴转速下执行端铣测试,并使用台式测功机测量切削力。评估了工具磨损对时域和频域中力特征的影响,并将其用于训练分类器。使用朴素的贝叶斯分类器方法预测了工具的磨损量。提出了两种情况。首先,根据后刀面磨损量将刀具磨损分为离散状态,并使用力数据更新刀具处于任何状态的概率。其次,考虑连续情况,并更新刀具侧面磨损宽度的概率密度函数。讨论了结果。

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