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Methodologies for model-free data interpretation of civil engineering structures

机译:土木工程结构的无模型数据解释方法

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Structural health monitoring (SHM) has the potential to provide quantitative and reliable data on the real condition of structures, observe the evolution of their behaviour and detect degradation. This paper presents two methodologies for model-free data interpretation to identify and localize anomalous behaviour in civil engineering structures. Two statistical methods based on (ⅰ) moving principal component analysis and (ⅱ) robust regression analysis are demonstrated to be useful for damage detection during continuous static monitoring of civil structures. The methodologies are tested on numerically simulated elements with sensors for a range of noise in measurements. A comparative study with other statistical analyses demonstrates superior performance of these methods for damage detection. Approaches for accommodating outliers and missing data, which are commonly encountered in structural health monitoring for civil structures, are also proposed. To ensure that the methodologies are scalable for complex structures with many sensors, a clustering algorithm groups sensors that have strong correlations between their measurements. Methodologies are then validated on two full-scale structures. The results show the ability of the methodology to identify abrupt permanent changes in behavior.
机译:结构健康监测(SHM)可能提供有关结构实际状况的定量和可靠数据,观察其行为的演变并检测退化。本文提出了两种方法,用于无模型数据解释,以识别和定位土木工程结构中的异常行为。两种基于(ⅰ)移动主成分分析和(ⅱ)稳健回归分析的统计方法被证明可用于对土木结构进行连续静态监测期间的损伤检测。该方法论在带有传感器的数值模拟元素上进行了测试,以测量各种噪声。与其他统计分析的比较研究表明,这些方法在损坏检测中具有优越的性能。还提出了适应异常值和丢失数据的方法,这些方法通常在土木结构的结构健康监测中遇到。为了确保该方法可扩展为具有许多传感器的复杂结构,聚类算法对传感器之间的测量之间具有很强的相关性进行了分组。然后在两个全面结构上验证方法。结果表明该方法能够识别行为的突然永久性变化。

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