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Abrupt variance and discernibility analyses of multi-sensor signals for fault pattern extraction

机译:故障模式提取中多传感器信号的突变和可辨性分析

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摘要

High performance sensors and data logging technologies have enabled us to monitor the operational states of systems and predict fault occurrences. Because a large number of sensors are monitored, it is important to identify significant sensor signals for detecting faults. As signal behaviors become increasingly scattered and complex, it is difficult to investigate the gradient relationship with the operational states of a system; therefore, we analyze the abrupt variance and the discernibility index of multi-sensor signals by extending the conventional statistical variance and the Fisher criterion. Based on the two novel characteristics of sensor signals, we select the most significant sensors to detect abnormal cylinder temperature and engine knocking. Thus, the proposed analyses lead to improved detection results when the multi-sensor signals existed in multiple overlapping regions regardless of the operational states.
机译:高性能传感器和数据记录技术使我们能够监视系统的运行状态并预测故障的发生。由于监视大量传感器,因此识别重要的传感器信号以检测故障非常重要。随着信号行为变得越来越分散和复杂,很难研究与系统工作状态之间的梯度关系。因此,我们通过扩展传统的统计方差和Fisher准则来分析多传感器信号的突然方差和可分辨指数。基于传感器信号的两个新颖特征,我们选择最重要的传感器来检测异常的汽缸温度和发动机爆震。因此,当多传感器信号存在于多个重叠区域而不考虑操作状态时,所提出的分析导致改进的检测结果。

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