The monitoring of rotating machinery has now become a fundamental activity in the industry, given the high criticality in production processes. Extracting useful information from relevant signals is a key factor for effective monitoring: studies in the areas of Informative Frequency Band selection (IFB) and Feature Extraction/Selection have demonstrated to be effective approaches. However, in general, typical methods in such areas focuses on identifying bands where impulsive excitations are present or on analyzing the relevance of the features after its signal extraction: both approaches lack in terms of procedure automation and efficiency. Typically, the approaches presented in the literature fail to identify frequencies relevant for the vibration analysis of a rotating machinery; moreover, with such approaches features can be extracted from irrelevant bands, leading to additional complexity in the analysis. To overcome such 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. The results are presented through a relevance ranking and can be visually analyzed through a heatmap. The effectiveness of the approach is validated in a synthetically created dataset and two real dataset, showing that the BRF is able to identify the bands that present relevant information for the analysis of rotating machinery.
翻译:鉴于生产过程的高度关键性,对旋转机制的监测现已成为该行业的一项基本活动,鉴于生产过程的高度关键性,从有关信号中提取有用的信息是有效监测的一个关键因素:对信息频谱选择和地貌提取/选择领域的研究证明是有效的办法,然而,一般来说,这些领域的典型方法侧重于确定有冲动性刺激的频段,或分析信号提取后特征的相关性:这两种方法在程序自动化和效率方面都缺乏。一般而言,文献中介绍的方法未能确定与旋转机制振动分析有关的频率;此外,这些方法特征可以从无关的频段中提取,从而导致分析的更多复杂性。为克服这些问题,本研究报告提出了称作“带相关性因素”的新方法。BRF旨在自动选择所有相关频段,用于对光谱摄取的旋转机器进行振动分析:其结果通过相关等级显示,并通过热映分析进行视觉分析。该方法的有效性在合成生成的数据集中得到验证,同时在两个旋转的频段上显示能够进行真实分析的磁段。