基于距离相关和熵的损伤检测传感器选择集成

Jimmy Tjen, Genrawan Hoendarto, Tony Darmanto
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引用次数: 4

摘要

本文提出了一种新的集成主成分分析(PCA)算法,利用结构的历史数据来检测结构是否存在损伤。本文的主要贡献有两点:首先,从相关分析中推导出距离相关系数的传感器选择算法,在不影响模型精度和故障检测灵敏度的情况下减少传感器数量;然后,将基于距离相关的主成分分析与基于熵的主成分分析相结合,提出了一种集成主成分分析算法,该算法可用于结构损伤检测,提高了原有方法的鲁棒性。在三种不同的故障情况下对所提出的算法进行了验证,证明了所提出的集成主成分分析算法优于以往的方法,在提高故障检测灵敏度和模型预测精度的同时,还提供了检测故障的最敏感传感器子集的信息。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Ensemble of the Distance Correlation-Based and Entropy-Based Sensor Selection for Damage Detection
In this paper, a novel ensemble Principal Component Analysis (PCA) algorithm is proposed to detect the presence of damage by exploiting the structure's historical data. In particular, there are 2 main contributions highlighted in this paper: First, a sensor selection algorithm is derived from the distance correlation coefficient from the correlation analysis, to reduce the number of sensors without affecting the model accuracy and fault detection sensitivity. Next, a novel technique based on the combination of the distance correlation-based and the previously introduced entropy-based PCA, is derived, to generate the ensemble PCA algorithm, which can be used to detect structural damages and improves the robustness of the previous methods. The presented algorithms are validated on three different damage cases, providing evidence that the proposed ensemble PCA algorithm outperforms the previous approaches, in the sense that it improves the fault detection sensitivity and model prediction accuracy, while also offering information on the most sensitive subset of sensors in detecting faults.
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