基于振动数据集的面铣刀状态监测贝叶斯优化判别分析模型

Naman S. Bajaj, A. Patange, R. Jegadeeshwaran, Kaushal A. Kulkarni, Rohan S. Ghatpande, Atharva M. Kapadnis
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引用次数: 25

摘要

随着工业4.0的出现,通过采用数据分析、云计算、物联网、机器学习(ML)和人工智能等技术,将旋转机器部件的自我监控概念化。刀具状态监测是预测性维修的重要研究领域,因为刀具状态影响着整个加工过程及其经济性。最近,机器学习技术被用于对工具的运行状况进行分类。这些技术可以节省成本,并帮助行业采用面向未来的解决方案。其中一种被称为判别分析(DA)的技术必须进行检验,特别是在中药方面。由于其计算成本较低,运行时间较短,因此在TCM中使用它们将确保刀具的有效使用并减少维护时间。本文提出了一种贝叶斯优化判别分析模型,将刀具状态划分为用户自定义的三类。数据收集使用内部设计和开发的数据采集(DAQ)模块设置在一个垂直加工中心(VMC)。使用贝叶斯优化搜索合并了超参数调优,发现给出最佳模型的参数是“线性的”,达到了93.3%的精度。这项研究证实了机器学习技术在中医领域的可行性,并使用贝叶斯优化算法对模型进行微调,使其为工业做好准备。
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A Bayesian Optimized Discriminant Analysis Model for Condition Monitoring of Face Milling Cutter Using Vibration Datasets
With the advent of industry 4.0, which conceptualizes self-monitoring of rotating machine parts by adopting techniques like data analytics, cloud computing, Internet of things, machine learning (ML), and artificial intelligence. The significant research area in predictive maintenance is tool condition monitoring (TCM) as the tool condition affects the overall machining process and its economics. Lately, machine learning techniques are being used to classify the tool’s condition in operation. These techniques are cost saving and help industries with adopting future-proof solutions for their operations. One such technique called discriminant analysis (DA) must be examined particularly for TCM. Owing to its less-expensive computation and shorter run times, using them in TCM will ensure the effective use of the cutting tool and reduce maintenance times. This article presents a Bayesian optimized discriminant analysis model to classify and monitor the tool condition into three user-defined classes. The data are collected using an in-house designed and developed data acquisition (DAQ) module setup on a Vertical Machining Center (VMC). The hyperparameter tuning has been incorporated using Bayesian optimization search, and the parameter that gives the best model was found out to be “linear,” achieving an accuracy of 93.3%. This study confirms the feasibility of machine learning techniques like DA in the field of TCM and using Bayesian optimization algorithms to fine-tune the model, making it industry ready.
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来源期刊
CiteScore
3.80
自引率
9.10%
发文量
25
期刊最新文献
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