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Structural damage identification based on self-fitting ARMAX model and multi-sensor data fusion

机译:基于自适应ARMAX模型和多传感器数据融合的结构损伤识别

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摘要

Statistical time series methods have proven to be a promising technique in structural health monitoring, since it provides a direct form of data analysis and eliminates the requirement for domain transformation. Latest research in structural health monitoring presents a number of statistical models that have been successfully used to construct quantified models of vibration response signals. Although a majority of these studies present viable results, the aspects of practical implementation, statistical model construction and decision-making procedures are often vaguely defined or omitted from presented work. In this article, a comprehensive methodology is developed, which essentially utilizes an auto-regressive moving average with exogenous input model to create quantified model estimates of experimentally acquired response signals. An iterative self-fitting algorithm is proposed to construct and fit the auto-regressive moving average with exogenous input model, which is capable of integrally finding an optimum set of auto-regressive moving average with exogenous input model parameters. After creating a dataset of quantified response signals, an unlabelled response signal can be identified according to a 'closest-fit' available in the dataset A unique averaging method is proposed and implemented for multi-sensor data fusion to decrease the margin of error with sensors, thus increasing the reliability of global damage identification. To demonstrate the effectiveness of the developed methodology, a steel frame structure subjected to various bolt-connection damage scenarios is tested. Damage identification results from the experimental study suggest that the proposed methodology can be employed as an efficient and functional damage identification tool.
机译:统计时间序列方法已被证明是结构健康监测中的一种有前途的技术,因为它提供了直接的数据分析形式,并且消除了对域转换的需求。结构健康监测的最新研究提出了许多统计模型,这些统计模型已成功用于构建振动响应信号的量化模型。尽管这些研究中的大多数提出了可行的结果,但实际执行,统计模型构建和决策程序方面往往被模糊地定义或从所提出的工作中省略。在本文中,开发了一种全面的方法,该方法主要利用自回归移动平均值和外源输入模型来创建对实验获得的响应信号的量化模型估计。提出了一种迭代自拟合算法来构造和拟合具有外生输入模型的自回归移动平均值,该算法能够整体地找到具有外生输入模型参数的自回归移动平均值的最佳集合。创建量化响应信号的数据集后,可以根据数据集中可用的“最接近”来识别未标记的响应信号。提出并实施了一种独特的平均方法,用于多传感器数据融合,以减少传感器的误差范围,从而提高了整体损害识别的可靠性。为了证明所开发方法的有效性,测试了经受各种螺栓连接损坏情况的钢框架结构。实验研究的损伤识别结果表明,所提出的方法可以用作一种有效且功能齐全的损伤识别工具。

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