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A Kalman-filter based time-domain analysis for structural damage diagnosis with noisy signals

机译:基于卡尔曼滤波器的时域分析,用于含噪声信号的结构损伤诊断

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摘要

In this paper, a procedure is presented for the time-domain analysis of noise-contaminated vibration signals for global structural damage diagnosis. It extends from a previously established acceleration response-only time-domain Auto-Regressive- with-eXogenous input (ARX) model, where the "process" is defined such that the acceleration response at a given degree of freedom (dof) is regarded as the "input", while the accelerations at other dofs are the "state" with which the "measurements" are associated. The novel idea in the present procedure is to retrieve the intrinsic input-output set from noisy signals by using the Kalman filter, so that the underlying physical system is best presented to the subsequent diagnosis operation. The theoretical basis of representing the system by pairing the raw measured input and the filtered response through the Kalman filter is discussed. When such raw input and filtered response signals are fed into the reference ARX model, the error feature becomes indicative of the change of the physical system. By analyzing the residual error, the damage status of the structure can be diagnosed. Applications to numerical and experimental examples demonstrate that the approach is effective in tackling the noises, and both the occurrence and relative extent of damage can be assessed with an appropriate damage feature. (c) 2006 Elsevier Ltd. All rights reserved.
机译:本文提出了一种程序,用于时域分析受噪声污染的振动信号,以进行整体结构损伤诊断。它是从先前建立的带有异质输入的仅具有加速度响应的时域自动回归模型(ARX)扩展而来的,其中定义了“过程”,以便将给定自由度(dof)下的加速度响应视为“自由度”是“输入”,而其他自由度处的加速度是与“测量”相关联的“状态”。本过程中的新颖思想是通过使用卡尔曼滤波器从噪声信号中检索本征输入输出集,以便将基础物理系统最好地呈现给后续诊断操作。讨论了通过将原始测量输入与通过卡尔曼滤波器的滤波响应进行配对来表示系统的理论基础。当将这种原始输入和滤波后的响应信号馈入参考ARX模型时,错误特征将指示物理系统的变化。通过分析残留误差,可以诊断出结构的损坏状态。在数值和实验示例中的应用表明,该方法可以有效地解决噪声问题,并且可以通过适当的破坏特征来评估破坏的发生和相对程度。 (c)2006 Elsevier Ltd.保留所有权利。

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