Band Relevance Factor (BRF): A novel automatic frequency band selection method based on vibration analysis for rotating machinery.

Lucas Costa Brito, Gian Antonio Susto, Jorge Nei Brito, Marcus Antonio Viana Duarte
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Abstract

Monitoring rotating machinery has become a fundamental activity in the industry given the high criticality in production processes. Extracting useful information from signals is a key factor for effective monitoring. Several studies in the areas of Informative Frequency Selection bands (IFB) and Feature Extraction/Selection have demonstrated the need to identify the bands of interest in vibration signals. However, typical methods in these areas focus on identifying bands where impulsive excitations are present or analyzing the relevance of features after signal extraction. Therefore, they do not focus on other regions that may be related to changes in the dynamic behavior of machines or faults. Furthermore, the methods generally require parameter adjustments and are not automatic. To overcome these problems, the present study proposes a new approach called Band Relevance Factor (BRF). BRF aims to perform an automatic selection of all relevant frequency bands for a vibration analysis of a rotating machine based on spectral entropy. In other words, automatically identify all frequency bands that are related to changes in the behavior of the machines or faults. The results are presented through a relevance ranking and can be visually analyzed through a heatmap. The effectiveness of the approach is validated on a synthetically dataset and on two real datasets, showing that BRF is capable of automatically identifying bands that present relevant information for the analysis of rotating machinery.

频带相关因子 (BRF):基于旋转机械振动分析的新型自动频带选择方法。
鉴于旋转机械在生产过程中的高度重要性,对其进行监控已成为工业领域的一项基本活动。从信号中提取有用信息是有效监测的关键因素。在信息频率选择带 (IFB) 和特征提取/选择领域的多项研究表明,有必要识别振动信号中的相关频带。然而,这些领域的典型方法侧重于识别存在脉冲激励的频段,或在信号提取后分析特征的相关性。因此,这些方法并不关注可能与机器动态行为或故障变化相关的其他区域。此外,这些方法一般都需要调整参数,而且不是自动的。为了克服这些问题,本研究提出了一种名为 "频带相关因子"(BRF)的新方法。BRF 的目的是根据频谱熵自动选择旋转机械振动分析的所有相关频段。换言之,自动识别与机器行为或故障变化相关的所有频段。结果通过相关性排序呈现,并可通过热图进行直观分析。该方法的有效性在一个合成数据集和两个真实数据集上得到了验证,表明 BRF 能够自动识别提供旋转机械分析相关信息的频段。
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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