基于机器学习的数控铣削加工中刀具磨损预测

Saeed Shurrab, Abdulkarem Almshnanah, R. Duwairi
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引用次数: 4

摘要

刀具寿命和刀具磨损对任何加工活动都有重要影响,并直接影响被加工零件的质量、加工设备的性能以及生产率和成本。本研究旨在研究六种监督学习算法在计算机数控(CNC)铣削操作中预测刀具状态的性能,该算法使用一种新型的CNC内部数据形式,消除了在加工过程中安装传感设备以获取数据的需要。采用的监督学习算法包括决策树、人工神经网络、支持向量机、k近邻、逻辑回归和朴素贝叶斯。结果表明,决策树、人工神经网络、k近邻和支持向量机的总体分类准确率均大于85%,而逻辑回归和朴素贝叶斯的总体分类准确率分别为57.1%和60.1%。此外,朴素贝叶斯能够从测试集中正确预测刀具的磨损情况,尽管其总体精度较低。此外,从决策树算法中提取特征重要性和决策规则,因为它在调查影响工具状态的最重要特征方面达到了最高的总体精度得分。结果表明,只有三个特征对刀具状态的影响最大,并采用决策规则来研究这些特征对刀具磨损的影响程度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Tool Wear Prediction in Computer Numerical Control Milling Operations via Machine Learning
Tool life and tool wear contribute significantly to any machining activity and directly affect the quality of the machined part, machining device performance as well as the production rates and costs. This research aims to investigate the performance of six supervised learning algorithms in predicting the cutting tool condition in Computer Numerical Control (CNC) milling operations using a novel form of CNC internal data that eliminate the need for sensory devices installation during the machining process for data acquisition purposes. The employed supervised learning algorithms include Decision Tree, Artificial Neural Network, Support Vector Machine, k-Nearest Neighbor, Logistic Regression and Naive Bayes. The results showed that Decision Tree, Artificial Neural Network, K-Nearest Neighbors and Support Vector Machine achieved overall classification accuracy greater than (85%) while Logistic Regression and Naive Bayes achieved overall classification accuracy of (57.1%) and (60.1%) respectively. Further, naive Bayes was able to correctly predict the cutting tool as worn from the test set despite its lower overall accuracy. In addition, features importance and decision rules were extracted from the Decision Tree algorithm as it achieved the highest overall accuracy score to investigate the most important features that influence the tool condition. The result showed that only three features have the highest influence on the tool condition while decision rules were used to investigate the value of these features to cause the cutting tools to be worn.
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