Novel method of informative frequency band selection for vibration signal using nonnegative matrix factorization of short-time fourier transform

J. Wodecki, P. Kruczek, A. Wyłomańska, A. Bartkowiak, R. Zimroz
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引用次数: 6

Abstract

The problem of local damage detection in rotating machines is currently the highly important subject of interest. In the literature one can find many different strategies. One of the most common approaches is the vibration signal analysis aiming at informative frequency band selection. In case of simply structured signals classic methods (e.g. spectral kurtosis) are sufficient and return clear information about the damage. However, in real-world cases the signal is usually much more complicated. Indeed, such signals consist of many different components, for instance: damage-related cyclic impulses, high energy non-cyclic impulses not related to damage or heavy-tailed background noise etc. Hence, there is a growing need for robust damage detection methods. In this paper a novel method of informative frequency band selection is proposed. It utilizes the approach of Non-negative Matrix Factorization applied to time-frequency signal representation. The described algorithm is evaluated using simulated signal containing several different components, that resembles real-life vibration signal from copper ore crusher. Using the obtained structure of informative frequency band it is possible to filter particular components out of the original signal.
基于短时傅里叶变换非负矩阵分解的振动信号信息频带选择新方法
旋转机械的局部损伤检测是目前研究的热点问题。在文献中,我们可以找到许多不同的策略。其中最常用的一种方法是针对信息频带选择的振动信号分析。对于结构简单的信号,经典方法(如谱峰度)就足够了,可以返回关于损伤的清晰信息。然而,在现实世界中,信号通常要复杂得多。事实上,这些信号由许多不同的成分组成,例如:与损伤相关的循环脉冲,与损伤无关的高能非循环脉冲或重尾背景噪声等。因此,越来越需要强大的损伤检测方法。本文提出了一种新的信息频段选择方法。它将非负矩阵分解的方法应用于时频信号的表示。采用模拟信号对所述算法进行了评估,该信号包含几个不同的分量,与铜矿破碎机的实际振动信号相似。利用得到的信息频带结构,可以从原始信号中过滤出特定的成分。
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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