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Particle learning in online tool wear diagnosis and prognosis

机译:在线工具磨损诊断和预测中的粒子学习

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摘要

Automated Tool condition monitoring is critical in intelligent manufacturing to improve both productivity and sustainability of manufacturing operations. Estimation of tool wear in real-time for critical machining operations can improve part quality and reduce scrap rates. This paper proposes a probabilistic method based on a Particle Learning (PL) approach by building a linear system transition function whose parameters are updated through online in-process observations of the machining process. By applying PL, the method helps to avoid developing a complex closed form formulation for a specific tool wear model. It increases the robustness of the algorithm and reduces the time complexity of computation. The application of the PL approach is tested using experiments performed on a milling machine. We have demonstrated one-step and two-step look ahead tool wear state prediction using online indirect measurements obtained from vibration signals. Additionally, the study also estimates remaining useful life (RUL) of the cutting tool inserts. (C) 2017 The Society of Manufacturing Engineers. Published by Elsevier Ltd. All rights reserved.
机译:自动化的工具状态监控对于智能制造至关重要,它可以提高生产率和制造运营的可持续性。实时估算关键加工操作的刀具磨损可以提高零件质量并降低废品率。本文提出了一种基于粒子学习(PL)方法的概率方法,方法是建立一个线性系统转移函数,该函数的参数通过对加工过程的在线过程中观察进行更新。通过应用PL,该方法有助于避免针对特定的刀具磨损模型开发复杂的封闭形式配方。它增加了算法的鲁棒性并降低了计算的时间复杂度。 PL方法的应用是通过在铣床上进行的实验进行测试的。我们已经演示了使用从振动信号获得的在线间接测量结果进行的一步和两步的前瞻性刀具磨损状态预测。此外,研究还估计了切削刀具刀片的剩余使用寿命(RUL)。 (C)2017年制造工程师学会。由Elsevier Ltd.出版。保留所有权利。

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