加权PCA残差空间的加速度传感器故障诊断
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TH825;TU441

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国家自然科学基金青年基金资助项目(62102316);国家重点研发计划资助项目(2018YFC0705604);中国博士后科学基金资助项目(2021M690838)


Accelerometer Fault Diagnosis with Weighted PCA Residual Space
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    摘要:

    针对加速度传感器在健康监测系统恶劣工作环境下易发生故障的问题,提出一种基于残差空间主元加权统计量的传感器故障诊断方法。首先,将传感器故障采用故障方向和故障幅度向量来表征,并求取传感器故障在残差空间的投影;其次,通过理论推导得出平方预测误差(squared prediction error,简称SPE)统计量与残差空间主向量中各元素呈平方关系,将各元素作为SPE统计量的非线性加权系数;然后,结合贝叶斯推论,采用加权后的SPE统计量计算累积贡献率,并将其作为传感器故障定位的指标。三跨连续梁数值算例结果表明,传统方法对两类常见的增益和偏差故障诊断率分别为5.45%和3.43%,所提方法的诊断率分别为69.8%和100%,且在两种传感器故障类型下均能准确定位故障传感器;意大利帕尔马Lamberti实桥测试数据的算例表明,所提方法对增益故障的诊断率达到77.58%,且能正确定位发生故障的传感器通道。

    Abstract:

    Aiming at the problem that the accelerometer is prone to fault under the harsh working environment of the health monitoring system, a principal weighted statistic method for principal components analysis (PCA) residual space is proposed. Firstly, the sensor fault response is characterized by the fault direction and the fault magnitude vector, and the projection of the sensor fault in the residual space is obtained. Secondly, through theoretical derivation, the squared prediction error (SPE) statistic is squared with the elements in the residual space main vector, these elements are used as nonlinear weighting coefficients of SPE statistic. Then the cumulative contribution rate as an indicator of sensor fault location is calculated by Bayesian inference. The applicability of the proposed method is verified by simulating common sensor gain and bias fault. The three-span continuous beam model is used as a numerical example. The calculation results show that the traditional principal component analysis method has a diagnostic rate of 5.45% and 3.43% respectively for common gain failure and deviation fault, however, the proposed method in this paper increases its diagnostic rate to 69.8% and 100%. At the same time, the faulty sensor can be accurately located under both sensor faults. The real bridge example of the Lamberti Bridge in Parma shows that the proposed method has a diagnostic rate of 77.58% for gain fault and can correctly locate the faulty sensor channel.

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  • 在线发布日期: 2021-10-31
  • 出版日期: 2021-10-30
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