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A vibration model residual-based sequential probability ratio test framework for structural health monitoring

机译:基于振动模型的基于残差的顺序概率比测试框架

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摘要

The goal of this study is the introduction and experimental assessment of a sequential probability ratio test framework for vibration-based structural health monitoring. This framework is based on a combination of binary and multihypothesis versions of the statistically optimal sequential probability ratio test and employs the residual sequences obtained through a single stochastic time series model of the healthy structure. The full list of properties and capabilities of the sequential probability ratio test is for the first time presented and explored in the context of vibration-based damage diagnosis. The approach postulated in this framework is shown to achieve early and robust damage detection, identification (classification), and quantification based on predetermined sampling plans, which are both analytically and experimentally compared and assessed. The framework's performance is determined a priori via the use of the analytical expressions of the operating characteristic and average sample number functions in combination with baseline data records. It is shown to require, on average, a minimal number of signal samples in order to reach a decision compared to fixed sample size most powerful tests. The effectiveness of the proposed approach is validated and experimentally assessed via its application to a lightweight aluminum truss structure.
机译:这项研究的目的是介绍和实验评估基于振动的结构健康监测的顺序概率比测试框架。该框架基于统计最优顺序概率比率检验的二进制和多假设版本的组合,并采用了通过健康结构的单个随机时间序列模型获得的残差序列。顺序概率比测试的性能和性能的完整清单是首次在基于振动的损伤诊断中进行介绍和探索。在此框架中假定的方法被证明可实现基于预定采样计划的早期且强大的损坏检测,识别(分类)和量化,并通过分析和实验进行比较和评估。框架的性能是通过使用运行特征和平均样本数函数的分析表达式结合基线数据记录来事先确定的。与固定样本大小的最强大测试相比,它显示平均需要最少数量的信号样本才能做出决定。通过将其应用于轻型铝桁架结构,该方法的有效性得到了验证和实验评估。

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