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An adaptive SPC approach for multi-sensor fusion and monitoring of time-varying processes

机译:多传感器融合的自适应SPC方法和时变过程的监控

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摘要

The effort to achieve in-process manufacturing process monitoring capabilities that are compliant with industrial implementation constraints is leading to a continuously growing development of multi-sensor approaches. In this frame, sensor fusion techniques may allow the achievement of required monitoring performances in terms of reliability and robustness to both disturbance factors and changing cutting conditions, and the approach becomes even more attractive when exploitable information is already available on-board, like spindle and axis drive currents and power signals. The paper presents a study aimed at dealing with the problem of monitoring the condition of the tool by using Multivariate Statistical Process Control (SPC) techniques to extract the relevant information content from multiple current signals acquired from spindle and axis drives. Usage of features that are as far as possible independent from cutting parameters, coupled with adaptive control charting methods, is proposed to cope with non-steady state conditions and signal pattern modification with different dynamics. Both static and adaptive Principal Component Analysis (PCA) based approaches are discussed, for tool breakage detection in milling of hard-to-cut materials.
机译:实现符合工业实施限制的过程制造过程监测能力的努力导致多传感器方法的不断增长的发展。在该帧中,传感器融合技术可以允许在对扰动因子的可靠性和鲁棒性方面实现所需的监测性能,并且在载有利用信息时,这种方法变得更具吸引力,如主轴和主轴轴驱动电流和电源信号。本文提出了一种研究,旨在通过使用多元统计过程控制(SPC)技术来处理工具的状况的问题,以从从主轴和轴驱动器获取的多个电流信号中提取相关信息内容。尽可能独立于切割参数的特征的使用,以及与自适应控制图表方法的切割参数,以应对具有不同动力学的非稳态状态和信号模式修改。讨论了基于静态和自适应主成分分析(PCA)的方法,用于铣削淬火材料的工具破损检测。

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