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Structural damage detection for in-service highway bridge under operational and environmental variability

机译:运行和环境变化下在役公路桥梁的结构损伤检测

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Structural health monitoring has drawn significant attention in the past decades with numerous methodologies and applications for civil structural systems. Although many researchers have developed analytical and experimental damage detection algorithms through vibration-based methods, these methods are not widely accepted for practical structural systems because of their sensitivity to uncertain environmental and operational conditions. The primary environmental factor that influences the structural modal properties is temperature. The goal of this article is to analyze the natural frequency-temperature relationships and detect structural damage in the presence of operational and environmental variations using modal-based method. For this purpose, correlations between natural frequency and temperature are analyzed to select proper independent variables and inputs for the multiple linear regression model and neural network model. In order to capture the changes of natural frequency, confidence intervals to detect the damages for both models are generated. A long-term structural health monitoring system was installed on an in-service highway bridge located in Meriden, Connecticut to obtain vibration and environmental data. Experimental testing results show that the variability of measured natural frequencies due to temperature is captured, and the temperature-induced changes in natural frequencies have been considered prior to the establishment of the threshold in the damage warning system. This novel approach is applicable for structural health monitoring system and helpful to assess the performance of the structure for bridge management and maintenance.
机译:在过去的几十年中,结构健康监测以大量的方法和应用于民用结构系统的应用引起了人们的极大关注。尽管许多研究人员已经通过基于振动的方法开发了分析和实验损伤检测算法,但是由于这些方法对不确定的环境和操作条件敏感,因此并未被实际的结构系统广泛接受。影响结构模态特性的主要环境因素是温度。本文的目的是使用基于模态的方法分析自然频率与温度之间的关系,并在存在操作和环境变化的情况下检测结构损坏。为此,分析固有频率与温度之间的相关性,以为多元线性回归模型和神经网络模型选择适当的独立变量和输入。为了捕获固有频率的变化,生成了用于检测两个模型损坏的置信区间。在康涅狄格州梅里登的一座在役公路桥梁上安装了长期结构健康监测系统,以获取振动和环境数据。实验测试结果表明,由于温度引起的测量固有频率的可变性已被捕获,并且在损坏预警系统中确定阈值之前已考虑了温度引起的固有频率变化。这种新颖的方法适用于结构健康监测系统,有助于评估桥梁管理和维护的结构性能。

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