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Data-driven methods for threshold determination in time-series based damage detection

机译:基于时间序列损伤检测的阈值确定的数据驱动方法

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摘要

Structural vibration monitoring has received a lot of attention from the research community in the past few years. The objective is to create automatic structural assessment techniques that can be realized through programmed vibration analysis. Till now many vibration-based damage features have been proposed, yet to truly automate the damage identification process, reliable damage threshold construction techniques are also need. In this paper, two data-driven methods based on resampling and nearest neighbor rule are applied for threshold construction for damage features from autoregression (AR) analysis of vibration signals. Both threshold calculation techniques are rooted in empirical feature probability estimation. The proposed thresholds are then tested on features extracted acceleration measurements collected from a 5 DOF test specimen. The resampling method is applied to Mahalanobis distance of AR model coefficients, while the nearest neighbor rule is used on a combination of coefficient distance feature and the residual autocorrelation feature. Both methods perform well in this case study.
机译:在过去几年中,结构振动监测从研究界得到了很多关注。目的是通过编程振动分析来创造可以实现的自动结构评估技术。到目前为止已经提出了许多基于振动的损坏特征,但是真正自动化损坏识别过程,还需要可靠的损坏阈值施工技术。在本文中,应用了基于重采样和最接近邻居规则的数据驱动方法,用于振动信号的自回归(AR)分析的损坏特征的阈值结构。阈值计算技术都源于经验特征概率估计。然后测试所提出的阈值,在提取从5 DOF试样收集的加速度测量的特征上进行测试。重采样方法应用于AR模型系数的mahalanobis距离,而最近的邻居规则用于系数距离特征和残余自相关特征的组合。两种方法在这种情况下表现良好。

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