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Controlled Monte Carlo data generation for statistical damage identification employing Mahalanobis squared distance

机译:使用马氏距离平方距离的受控蒙特卡洛数据生成,用于统计损伤识别

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摘要

The use of Mahalanobis squared distance–based novelty detection in statistical damage identification has become increasingly popular in recent years. The merit of the Mahalanobis squared distance–based method is that it is simple and requires low computational effort to enable the use of a higher dimensional damage-sensitive feature, which is generally more sensitive to structural changes. Mahalanobis squared distance–based damage identification is also believed to be one of the most suitable methods for modern sensing systems such as wireless sensors. Although possessing such advantages, this method is rather strict with the input requirement as it assumes the training data to be multivariate normal, which is not always available particularly at an early monitoring stage. As a consequence, it may result in an ill-conditioned training model with erroneous novelty detection and damage identification outcomes. To date, there appears to be no study on how to systematically cope with such practical issues especially in the context of a statistical damage identification problem. To address this need, this article proposes a controlled data generation scheme, which is based upon the Monte Carlo simulation methodology with the addition of several controlling and evaluation tools to assess the condition of output data. By evaluating the convergence of the data condition indices, the proposed scheme is able to determine the optimal setups for the data generation process and subsequently avoid unnecessarily excessive data. The efficacy of this scheme is demonstrated via applications to a benchmark structure data in the field.
机译:近年来,在统计损伤识别中使用基于Mahalanobis平方距离的新颖性检测已变得越来越流行。基于Mahalanobis平方距离的方法的优点在于,它简单易行,所需的计算工作量少,因此可以使用尺寸较高的损伤敏感特征,该特征通常对结构变化更敏感。基于Mahalanobis平方距离的距离识别也被认为是现代感测系统(例如无线传感器)的最合适方法之一。尽管具有这样的优点,但是该方法在输入要求方面相当严格,因为它假定训练数据是多元正态的,尤其在早期监测阶段并不总是可用的。结果,这可能导致病态的训练模型出现错误的新颖性检测和损伤识别结果。迄今为止,似乎还没有关于如何系统地应对此类实际问题的研究,特别是在统计损害识别问题的背景下。为了满足这一需求,本文提出了一种受控数据生成方案,该方案基于蒙特卡洛模拟方法,并添加了一些控制和评估工具来评估输出数据的状况。通过评估数据条件索引的收敛性,所提出的方案能够确定用于数据生成过程的最佳设置,从而避免不必要的过多数据。通过在现场对基准结构数据的应用证明了该方案的有效性。

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