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Structural Identification for Mobile Sensing with Missing Observations

机译:缺少观测值的移动传感的结构识别

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摘要

There are many occasions in structural health monitoring (SHM) on which collected data sets contain missing observations. Such instances may occur as a result of failed communications or packet losses in a wireless sensor network or as a result of sensing and sampling methodsfor example, mobile sensing. By implementing modified expectation and maximization steps, structural identification using expectation maximization (STRIDE) is capable of processing data in these circumstances and is the first modal identification technique to formally accept data with missing observations. This paper presents the STRIDE algorithm, a statistical perspective of missing data, and new STRIDE equations that account for missing observations. Expectation step (E-step) equations are given explicitly for both partially observed time steps and those not fully observed. The maximization step (M-step) provides state-space parameter updates in terms of available observations and missing-data state-variable statistics. This paper also discusses the performance and convergence behavior of STRIDE with missing data. Finally, two applications are presented to exemplify common use in network reliability and mobile sensing, both using data collected at the Golden Gate Bridge. This paper proves that sensor network data containing a significant amount of missing observations can be used to achieve a comprehensive modal identification. A successful real-world identification with simulated mobile sensors quantifies the preservation of spatial information, establishing the benefits of this type of network and emphasizing a line of inquiry for future SHM implementations.
机译:在结构健康监视(SHM)中,有许多情况下收集的数据集包含缺少的观察结果。此类情况可能是由于无线传感器网络中的通信失败或数据包丢失而导致的,也可能是由于传感和采样方法(例如,移动传感)导致的。通过实施修改后的期望值和最大化步骤,使用期望值最大化(STRIDE)的结构识别能够在这些情况下处理数据,并且是第一种形式化识别技术,可以正式接受缺少观察值的数据。本文介绍了STRIDE算法,缺失数据的统计视角以及说明缺失观测值的新STRIDE方程。对于部分观察到的时间步长和未完全观察到的时间步长,明确给出了期望步长(E步长)方程。最大化步骤(M步骤)根据可用观测值和丢失数据状态变量统计信息提供状态空间参数更新。本文还讨论了缺少数据时STRIDE的性能和收敛行为。最后,提出了两个应用程序,以举例说明在网络可靠性和移动感测中的常见用法,这两个应用程序都使用在金门大桥处收集的数据。本文证明,包含大量缺失观测值的传感器网络数据可用于实现全面的模态识别。通过模拟移动传感器成功地在现实世界中进行识别,可以量化空间信息的保存,从而建立这种类型的网络的优势,并强调对未来SHM实施的询问。

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