基于贝叶斯谱估计的旋转电机诊断方法研究

W. Doorsamy, W. Cronje
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引用次数: 4

摘要

预测性维护理念正在迅速成为工业规范,其中电机的预测和诊断是必不可少的。该技术的效率和可靠性在很大程度上取决于测量精度和分析。频率分析通常用于状态监测目的的测量解释。本文对旋转电机状态监测中的频率分析技术进行了研究。比较了各种谱估计技术在早期故障诊断中的不同性能特点。该研究包括对贝叶斯谱估计方法的评估,以及更传统的方法,如标准周期图、韦尔奇和音乐方法。该调查使用了一个基于轴电压的机器状态监测的例子,用于偏心的具体情况。研究结果表明,虽然贝叶斯方法在故障诊断中是非常规的,但它具有非常强的鲁棒性,并且表现出非常适合应用的特性。
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A study on Bayesian spectrum estimation based diagnostics in electrical rotating machines
Predictive maintenance philosophy is fast becoming a norm in industry, where prognostics and diagnostics in electrical machines are essential. The efficiency and reliability of the technique being utilized depend profoundly on measurement accuracy and analysis. Frequency analysis is commonly used in the interpretation of measurements for condition monitoring purposes. This paper presents a study of techniques in frequency analysis in condition monitoring of electrical rotating machines. Different performance characteristics of various spectral estimation techniques are compared for application in incipient fault diagnosis. The study includes an evaluation of a Bayesian spectral estimation method together with more conventional practices such as the standard periodogram, Welch and Music methods. The investigation uses an example of shaft voltage based condition monitoring in machines for a specific case of eccentricity. Results of the study indicate that the Bayesian method, although unconventional in fault diagnostics, is exceptionally robust and exhibits qualities well-suited to the application.
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