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Fault Detection of Reciprocating Compressors using a Model from Principles Component Analysis of Vibrations

机译:基于振动原理分量分析模型的往复式压缩机故障检测

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摘要

Traditional vibration monitoring techniques have found it difficult to determine a set of effective diagnostic features due to the high complexity of the vibration signals originating from the many different impact sources and wide ranges of practical operating conditions. In this paper Principal Component Analysis (PCA) is used for selecting vibration feature and detecting different faults in a reciprocating compressor. Vibration datasets were collected from the compressor under baseline condition and five common faults: valve leakage, inter-cooler leakage, suction valve leakage, loose drive belt combined with intercooler leakage and belt loose drive belt combined with suction valve leakage. A model using five PCs has been developed using the baseline data sets and the presence of faults can be detected by comparing the T2 and Q values from the features of fault vibration signals with corresponding thresholds developed from baseline data. However, the Q -statistic procedure produces a better detection as it can separate the five faults completely.
机译:传统的振动监测技术已经发现,由于来自许多不同冲击源的振动信号的高度复杂性和广泛的实际操作条件,难以确定一组有效的诊断功能。在本文中,主成分分析(PCA)用于选择振动特征并检测往复式压缩机中的不同故障。在基准条件和五个常见故障下,从压缩机收集了振动数据集:阀泄漏,冷却器间泄漏,吸气阀泄漏,传动带松动和中间冷却器泄漏以及传动带松动的皮带带吸气阀泄漏。已经使用基线数据集开发了使用五台PC的模型,并且可以通过将故障振动信号特征的T2和Q值与从基线数据得出的相应阈值进行比较,来检测故障的存在。但是,Q统计过程可以更好地检测出,因为它可以完全分离出五个故障。

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  • 年度 2012
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  • 原文格式 PDF
  • 正文语种 {"code":"en","name":"English","id":9}
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