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An Efficient Signal Processing Tool for Impedance-based Structural Health Monitoring

机译:用于基于阻抗的结构健康监测的高效信号处理工具

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Various experimental studies have demonstrated that an impedance-based approach to structural health monitoring can be an effective means of damage detection. Using the self-sensing and active-sensing capabilities of piezoelectric materials, the electromechanical impedance response can be monitored to provide a qualitative indication of the overall health of a structure. Although impedance analyzers are commonly used to collect such data, they are bulky and impractical for long-term field implementation, so a smaller and more portable device is desired. However, impedance measurements often contain a sizeable number of data points, and a smaller device may not possess enough memory to store the required information, particularly for real-time analysis. Therefore, the amount of data used to assess the integrity of a structure must be significantly reduced. A new type of cross correlation analysis, for which impedance data is instantaneously correlated between different sensor sets and different frequency ranges, as opposed to be correlated to pre-stored baseline data, is proposed to drastically reduce the amount of data to a single correlation coefficient and provide a quantitative means of detecting damage relative to the sensor positions. The proposed analysis is carried out on a 3-story representative structure and its efficiency is demonstrated.
机译:各种实验研究表明,基于阻抗的结构健康监测方法可以是损坏检测的有效方法。使用压电材料的自感应和主动感应功能,可以监测机电阻抗响应,以提供结构总体健康状况的定性指示。尽管通常使用阻抗分析仪来收集此类数据,但是对于长期的现场实施而言,它们却体积庞大且不切实际,因此需要一种更小巧,更便携的设备。但是,阻抗测量通常包含相当数量的数据点,并且较小的设备可能没有足够的内存来存储所需的信息,特别是对于实时分析。因此,必须大大减少用于评估结构完整性的数据量。提出了一种新型的互相关分析,针对该互相关分析,阻抗数据在不同的传感器组和不同的频率范围之间瞬时相关,而不是与预先存储的基线数据相关,从而将数据量大大减少到单个相关系数并提供定量检测相对于传感器位置的损坏的方法。所提出的分析是在3层代表结构上进行的,并证明了其效率。

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