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Ensemble and individual noise reduction method for induction-motor signature analysis

机译:用于感应电动机特征分析的整体和个体降噪方法

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Unlike a fixed-frequency power supply, the voltage supplying an inverter-fed motor is heavily corrupted by noises, which are produced from high-frequency switching leading to noisy stator currents. To extract useful information from stator-current measurements, a theoretically sound and robust de-noising method is required. The effective filtering of these noises is difficult with certain frequency-domain techniques, such as Fourier transform or Wavelet analysis, because some noises have frequencies overlapping with those of the actual signals, and some have high noise-to-frequency ratios. In order to analyze the statistical signatures of different types of signals, a certain number is required of the individual signals to be de-noised without sacrificing the individual characteristic and quantity of the signals. An ensemble and individual noised reduction (EINR) method is proposed as the extension of the common averaging method for induction-motor signature analysis. The signals after de-noising by the proposed EINR method will preserve the individual characteristics. A number of signals are selected as an ensemble part in the proposed EINR method and are employed as the “profile” to de-noise other individual signals. The case study presented in this paper demonstrates the merits of the proposed EINR method for induction-motor signature analysis.
机译:与固定频率电源不同,为逆变器供电的电动机提供的电压会受到噪声的严重破坏,这些噪声是由高频开关产生的,从而导致定子电流嘈杂。为了从定子电流测量中提取有用的信息,需要一种理论上合理且鲁棒的降噪方法。使用某些频域技术(例如傅立叶变换或小波分析)很难有效过滤这些噪声,因为某些噪声的频率与实际信号的频率重叠,而某些噪声的频率比很高。为了分析不同类型信号的统计特征,需要在不牺牲信号的单个特征和数量的情况下对单个信号进行一定数量的降噪处理。提出了整体个体降噪(EINR)方法,作为感应电动机特征分析常用平均方法的扩展。通过提出的EINR方法进行去噪后的信号将保留各个特征。在提议的EINR方法中,许多信号被选为整体部分,并被用作“轮廓”以对其他单个信号进行去噪。本文介绍的案例研究证明了所提出的EINR方法用于感应运动特征分析的优点。

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