Digital Twin Framework for Lathe Tool Condition Monitoring in Machining of Aluminium 5052

Pub Date : 2023-05-12 DOI:10.14429/dsj.73.18650
S. Ganeshkumar, Bipin Kumar Singh, R. Suresh Kumar, Anandakumar Haldorai
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 Digital Twin (DT) is a virtual representation of a product system that exhibits the properties and analyzes the system’s functions. The significant impact of DT extends to several fields, which increases productivity and reduces wastage. This article focuses on developing a Digital twin model of a Lathe machine for Tool Condition Monitoring (TCM). DT implementation in industries is challenging due to simulating online cutting forces and wear. Even though several pieces of research have been carried out in the prediction of tool conditions using machine learning, Artificial Neural network models, only a few pieces of research have been made in digital twins for TCM. This article provides the technique for implementing the DT model of a lathe tool. The feasibility of the DT Model framework is verified by a case study of the turning process with a CNC Lathe machine while machining of Aluminium 5052 workpiece using Titanium Nitride coated tool inserts. The sensor’s data are acquired and fed to the microcontroller for real-time data acquisition. The real-time dataset is processed in the DT model for monitoring and predicting the tool conditions. The tool wear classification using the DT model is achieved. Developing the Digital Twin model in machining increases productivity and assists in predictive maintenance.
 
 
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Abstract

Digital Twin (DT) is a virtual representation of a product system that exhibits the properties and analyzes the system’s functions. The significant impact of DT extends to several fields, which increases productivity and reduces wastage. This article focuses on developing a Digital twin model of a Lathe machine for Tool Condition Monitoring (TCM). DT implementation in industries is challenging due to simulating online cutting forces and wear. Even though several pieces of research have been carried out in the prediction of tool conditions using machine learning, Artificial Neural network models, only a few pieces of research have been made in digital twins for TCM. This article provides the technique for implementing the DT model of a lathe tool. The feasibility of the DT Model framework is verified by a case study of the turning process with a CNC Lathe machine while machining of Aluminium 5052 workpiece using Titanium Nitride coated tool inserts. The sensor’s data are acquired and fed to the microcontroller for real-time data acquisition. The real-time dataset is processed in the DT model for monitoring and predicting the tool conditions. The tool wear classification using the DT model is achieved. Developing the Digital Twin model in machining increases productivity and assists in predictive maintenance.
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铝5052加工中车床刀具状态监测的数字孪生框架
& # x0D;& # x0D;& # x0D;数字孪生(DT)是产品系统的虚拟表示,它展示了系统的属性并分析了系统的功能。DT的重大影响延伸到几个领域,它提高了生产率并减少了浪费。本文重点研究了机床状态监测(TCM)的数字孪生模型的开发。由于需要模拟在线切削力和磨损,DT在工业中的实施具有挑战性。尽管在使用机器学习、人工神经网络模型预测工具条件方面进行了几项研究,但在中医数字孪生方面只进行了几项研究。本文提供了一种实现车床刀具DT模型的技术。以数控车床上使用氮化钛涂层刀具加工5052铝合金工件的车削过程为例,验证了DT模型框架的可行性。传感器的数据被采集并提供给单片机进行实时数据采集。在DT模型中对实时数据集进行处理,用于监测和预测工具状态。利用DT模型实现了刀具磨损分类。在加工中开发数字孪生模型可以提高生产率,并有助于预测性维护。 & # x0D;& # x0D;
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