Classification of Lathe’s Cutting Tool Wear Based on an Autonomous Machine Learning Model

被引:0
|
作者
Thiago E. Fernandes
Matheus A. M. Ferreira
Guilherme P. C. de Miranda
Alexandre F. Dutra
Matheus P. Antunes
Marcos V. G. R. da Silva
Eduardo P. de Aguiar
机构
[1] Federal University de Juiz de Fora,Department of Industrial and Mechanical Engineering
关键词
Autonomous learning; Empirical data analyses; Machine learning; Machining processes;
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中图分类号
学科分类号
摘要
Machining processes are of considerable significance to industries such as aviation, power generation, oil, and gas since a significant part of the industrial mechanical components went through a machining process during its manufacturing. Therefore, using worn cutting tools can lead to operational interruptions, accidents, and potential economic losses during these processes. Concerning these consequences, real-time monitoring can result in cost reduction, along with productivity and safety increase. This paper aims to discuss an autonomous model based on the self-organized direction-aware data partitioning algorithm and machine learning techniques, including time series feature extraction based on scalable hypothesis tests, to solve this problem. The model proposed in this work was tested in a data set recorded in a real machining system at the Manufacturing Processes Laboratory of the Federal University of Juiz de Fora in collaboration with the Laboratory of Industrial Automation and Computational Intelligence. This model can identify the patterns that distinguish the cutting tool operations as adequate or inadequate, achieving satisfactory performances in all cases presented in this work and potentially allowing to prevent faulty pieces fabrication.
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页码:167 / 182
页数:15
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