Tool Remaining Useful Life Prediction in Robotic Machining of Composite Materials Based on Mechanical Vibrations

Jose O. Savazzi, S. Shiki, G. Barbosa, David A. Guerra-Zubiaga
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Abstract

The development of materials and methods used in the aircraft manufacturing industry has been advancing in order to provide a reliable and light aircraft. The use of composite materials becomes indispensable, meanwhile, the processing of this kind of material must be studied to obtain the higher manufacturing efficiency and the best quality of the final product. Industry 4.0 concepts as internet of things, cloud computing and others can be used to fulfil these demands. In this sense, this study aims to create a remaining useful life prediction model for the tools used on the machining of composite materials with robotic manipulators. This task is performed by monitoring and analyzing the mechanical vibrations of the motor assembly and the cutting tool, then reducing the consumption of this material and ensuring the quality and surface integrity of the finished parts. The self-awareness of the process is improved by combining signal processing algorithms and statistical techniques to assist the constant monitoring of the tool wear. In this sense, a digital model is constantly updated aiming the optimization of the cutting process. In the conclusions of the paper, the advantages and drawbacks of the proposed methodology are presented.
基于机械振动的复合材料机器人加工刀具剩余使用寿命预测
为了提供可靠的轻型飞机,飞机制造业中使用的材料和方法的发展一直在推进。复合材料的使用是必不可少的,同时,必须研究这种材料的加工,以获得更高的制造效率和最终产品的最佳质量。物联网、云计算等工业4.0概念可以用来满足这些需求。从这个意义上说,本研究的目的是建立一个剩余使用寿命预测模型,用于机械臂加工复合材料的刀具。这项任务是通过监测和分析电机组件和刀具的机械振动来完成的,从而减少这种材料的消耗,并确保成品零件的质量和表面完整性。通过结合信号处理算法和统计技术来辅助工具磨损的持续监测,提高了过程的自我意识。从这个意义上说,数字模型不断更新,旨在优化切割过程。在本文的结论中,提出了该方法的优点和缺点。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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