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Signal processing tools for non-stationary signals detection

机译:用于非平稳信号检测的信号处理工具

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In this paper we aim to compare the abilities and performances of signal processing tools to detect non-stationary signals coming from condition monitoring of electrical machines. From the vast amount of available tools, we focus on existing signal processing methods suitable for real applications for non-stationarities tracking and quantification over time which is particularly interesting in fault diagnosis. First, we assess the spectral kurtosis, a tool that gained much attention because of his capability to characterize transients masked by strong noises. In order to detect non-stationarities, other methods are evaluated such as the spectral subtraction through the short time Fourier transform or the Wiener filtering which can remove stationary components. The analytical framework of each tool is first presented. Non-stationary tests signals based on properties of vibration signals of bearings are proposed to compare effectiveness, advantages and drawbacks of each methods for non-stationarities detection. The purpose is to select a method that is best suited for each type of non-stationarity in order to improve the reliability of the detection.
机译:在本文中,我们旨在比较信号处理工具检测电机状态监测中的非平稳信号的能力和性能。从大量可用工具中,我们将重点放在适用于实际应用的现有信号处理方法上,以进行随时间推移的非平稳性跟踪和量化,这在故障诊断中尤其有趣。首先,我们评估频谱峰度,该工具由于具有表征强噪声掩盖的瞬态的能力而备受关注。为了检测非平稳性,评估了其他方法,例如通过短时傅立叶变换进行光谱相减或可以去除固定分量的维纳滤波。首先介绍每种工具的分析框架。提出了一种基于轴承振动信号特性的非平稳测试信号,以比较每种非平稳性检测方法的有效性,优缺点。目的是选择最适合每种类型的非平稳性的方法,以提高检测的可靠性。

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