刀具状态监测声发射信号的统计分析

G. Pontuale, F. Farrelly, A. Petri, L. Pitolli
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引用次数: 24

摘要

分析了声发射信号在机械车床加工中刀具状态监测中的统计特性。在这两种情况下,时间序列数据和各种刀具磨损水平的均方根(RMS)值显示出与老化有关的特征。特别是,原始数据的直方图显示了交叉值以上的幂律分布,其中较新的切削刀具与较旧的切削刀具相比,显示出更多的较大事件。在实际应用中,基于均方根值的统计更为可行,对均方根值的分析也揭示了与年龄相关的歧视性特征。实验均方根直方图遵循β (β)分布的假设也得到了检验。模拟β函数的残差表明,寻找一个更适合实验分布的拟合函数是可取的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A statistical analysis of acoustic emission signals for tool condition monitoring (TCM)
The statistical properties of acoustic emission signals for tool condition monitoring (TCM) applications in mechanical lathe machining are analyzed in this paper. Time series data and root mean square (RMS) values at various tool wear levels are shown to exhibit features that can be put into relation with aging in both cases. In particular, the histograms of raw data show power-law distributions above a cross-over value, in which newer cutting tools exhibit more numerous larger events compared with more worn-out ones. For practical purposes, statistics based on RMS values are more feasible, and the analysis of these also reveals discriminating age-related features. The assumption that experimental RMS histograms follow a Beta (β) distribution has also been tested. The residuals of the modeling β functions indicate that the search for a more appropriate fitting function for the experimental distribution is desirable.
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