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Missing data estimation method for time series data in structure health monitoring systems by probability principal component analysis

机译:缺少概率主成分分析的结构健康监测系统中的时间序列数据的数据估计方法

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摘要

Missing time series data in a structural health monitoring system remains a problem in some real-time applications, such as the calculation of cable force. To solve this problem, several algorithms have been proposed to impute missing data. However, studies on extracting temporal correlations from different dimensions to improve imputation have rarely been conducted. In this study, a matrix containing correlations between days and within one day is constructed, and an amputation method based on principal component analysis (PCA) is extended to reconstruct the matrix. We extend PCA in the form of probability-that is, probabilistic principal component analysis (PPCA) to avoid overfitting. The performance of the proposed method is systematically evaluated in two different scenarios: random missing data scenario and continuous missing data scenario. The results indicate that fully extracting temporal correlations from measured values can improve the estimation of missing values. PPCA also outperforms PCA in two scenarios, particularly the continuous missing data scenario, suggesting that the probability framework can enhance the accuracy of imputation. Thus, the imputation errors can be markedly improved if temporal correlations from different dimensions are appropriately considered.
机译:结构健康监测系统中缺少的时间序列数据在某些实时应用中仍然存在问题,例如电缆力的计算。为了解决这个问题,已经提出了几种算法来赋予缺失数据。然而,关于从不同尺寸提取时间相关性以改善估算的研究很少进行。在该研究中,构造了一天和一天内的含有相关的基质,并且延伸了基于主成分分析(PCA)的截肢方法以重建矩阵。我们以概率的形式扩展PCA - 即概率主成分分析(PPCA),以避免过度装备。在两个不同的场景中系统地评估所提出的方法的性能:随机丢失的数据场景和持续丢失的数据场景。结果表明,完全提取来自测量值的时间相关可以改善缺失值的估计。 PPCA在两种情况下也优于PCA,特别是持续缺失的数据场景,表明概率框架可以提高估算的准确性。因此,如果适当考虑来自不同尺寸的时间相关性,则可以显着改善归纳误差。

著录项

  • 来源
    《Advances in Engineering Software》 |2020年第11期|102901.1-102901.13|共13页
  • 作者单位

    Institute of Urban Smart Transportation & Safety Maintenance Shenzhen University Shenzhen 518060 China College of Civil and Transportation Engineering Shenzhen University Shenzhen 518060 China;

    Institute of Urban Smart Transportation & Safety Maintenance Shenzhen University Shenzhen 518060 China College of Civil and Transportation Engineering Shenzhen University Shenzhen 518060 China;

    Institute of Urban Smart Transportation & Safety Maintenance Shenzhen University Shenzhen 518060 China College of Civil and Transportation Engineering Shenzhen University Shenzhen 518060 China;

    Institute of Urban Smart Transportation & Safety Maintenance Shenzhen University Shenzhen 518060 China College of Civil and Transportation Engineering Shenzhen University Shenzhen 518060 China;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Missing data; Data recovery; Temporal correlation; Fusion;

    机译:缺失数据;数据恢复;时间相关;融合;

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