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Vibration Sensor Data Denoising Using a Time-Frequency Manifold for Machinery Fault Diagnosis

机译:时频流形的振动传感器数据降噪用于机械故障诊断

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摘要

Vibration sensor data from a mechanical system are often associated with important measurement information useful for machinery fault diagnosis. However, in practice the existence of background noise makes it difficult to identify the fault signature from the sensing data. This paper introduces the time-frequency manifold (TFM) concept into sensor data denoising and proposes a novel denoising method for reliable machinery fault diagnosis. The TFM signature reflects the intrinsic time-frequency structure of a non-stationary signal. The proposed method intends to realize data denoising by synthesizing the TFM using time-frequency synthesis and phase space reconstruction (PSR) synthesis. Due to the merits of the TFM in noise suppression and resolution enhancement, the denoised signal would have satisfactory denoising effects, as well as inherent time-frequency structure keeping. Moreover, this paper presents a clustering-based statistical parameter to evaluate the proposed method, and also presents a new diagnostic approach, called frequency probability time series (FPTS) spectral analysis, to show its effectiveness in fault diagnosis. The proposed TFM-based data denoising method has been employed to deal with a set of vibration sensor data from defective bearings, and the results verify that for machinery fault diagnosis the method is superior to two traditional denoising methods.
机译:来自机械系统的振动传感器数据通常与对机械故障诊断有用的重要测量信息相关联。然而,实际上,背景噪声的存在使得难以从感测数据中识别故障特征。本文将时频流形(TFM)概念引入传感器数据去噪中,并提出了一种用于可靠机械故障诊断的新型去噪方法。 TFM签名反映了非平稳信号的固有时频结构。所提出的方法旨在通过使用时频合成和相空间重构(PSR)合成来合成TFM来实现数据去噪。由于TFM在噪声抑制和分辨率增强方面的优势,因此去噪后的信号将具有令人满意的去噪效果,并保持固有的时频结构。此外,本文提出了一种基于聚类的统计参数来评估该方法,并提出了一种新的诊断方法,称为频率概率时间序列(FPTS)频谱分析,以证明其在故障诊断中的有效性。提出的基于TFM的数据去噪方法已被用于处理来自轴承故障的一组振动传感器数据,并且结果证明,该方法在机械故障诊断中优于两种传统的去噪方法。

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