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A Robust Functional-Data-Analysis Method for Data Recovery in Multichannel Sensor Systems

机译:一种健壮的功能数据分析方法,用于多通道传感器系统中的数据恢复

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摘要

Multichannel sensor systems are widely used in condition monitoring for effective failure prevention of critical equipment or processes. However, loss of sensor readings due to malfunctions of sensors and/or communication has long been a hurdle to reliable operations of such integrated systems. Moreover, asynchronous data sampling and/or limited data transmission are usually seen in multiple sensor channels. To reliably perform fault diagnosis and prognosis in such operating environments, a data recovery method based on functional principal component analysis (FPCA) can be utilized. However, traditional FPCA methods are not robust to outliers and their capabilities are limited in recovering signals with strongly skewed distributions (i.e., lack of symmetry). This paper provides a robust data-recovery method based on functional data analysis to enhance the reliability of multichannel sensor systems. The method not only considers the possibly skewed distribution of each channel of signal trajectories, but is also capable of recovering missing data for both individual and correlated sensor channels with asynchronous data that may be sparse as well. In particular, grand median functions, rather than classical grand mean functions, are utilized for robust smoothing of sensor signals. Furthermore, the relationship between the functional scores of two correlated signals is modeled using multivariate functional regression to enhance the overall data-recovery capability. An experimental flow-control loop that mimics the operation of coolant-flow loop in a multimodular integral pressurized water reactor is used to demonstrate the effectiveness and adaptability of the proposed data-recovery method. The computational results illustrate that the proposed method is robust to outliers and more capable than the existing FPCA-based method in terms of the accuracy in recovering strongly skewed signals. In addition, turbofan engine data are also analyzed to verify the capability of t- e proposed method in recovering non-skewed signals.
机译:多通道传感器系统广泛用于状态监视中,可有效防止关键设备或过程的故障。然而,由于传感器的故障和/或通信而导致的传感器读数的损失长期以来一直是这种集成系统的可靠操作的障碍。此外,通常在多个传感器通道中看到异步数据采样和/或有限的数据传输。为了在这样的操作环境中可靠地执行故障诊断和预测,可以利用基于功能主成分分析(FPCA)的数据恢复方法。但是,传统的FPCA方法对异常值不具有鲁棒性,并且在恢复具有严重偏斜分布(即,缺乏对称性)的信号时,其功能受到限制。本文提供了一种基于功能数据分析的鲁棒数据恢复方法,以增强多通道传感器系统的可靠性。该方法不仅考虑了信号轨迹的每个通道的可能偏斜的分布,而且还能够利用可能稀疏的异步数据来恢复单个和相关传感器通道的丢失数据。特别是,使用中位数函数而不是经典的均值函数来对传感器信号进行鲁棒的平滑处理。此外,使用多变量功能回归对两个相关信号的功能得分之间的关​​系进行建模,以增强总体数据恢复能力。模拟多模压集成水反应堆中的冷却剂-流量回路的运行的实验流量控制回路用于证明所提出的数据恢复方法的有效性和适应性。计算结果表明,该方法对异常值具有鲁棒性,并且在恢复强烈偏斜信号的准确性方面比现有的基于FPCA的方法更有能力。此外,还对涡轮风扇发动机数据进行了分析,以验证所提方法在恢复非偏斜信号方面的能力。

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