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Applications of Compressive Sensing Technique in Structural Health Monitoring

机译:压缩传感技术在结构健康监测中的应用

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Compressive sampling also called compressive sensing (CS) is a emerging information theory proposed recently. CS provides a new sampling theory to reduce data acquisition, which says that sparse or compressible signals can be exactly reconstructed from highly incomplete random sets of measurements. CS broke through the restrictions of the Shannon theorem on the sampling frequency, which can use fewer sampling resources, higher sampling rate and lower hardware and software complexity to obtain the measurements. Not only for data acquisition, CS also can be used to find the sparse solutions for linear algebraic equation problem. In this paper, the applications of CS for SHM are presented including acceleration data acquisition, lost data recovery for wireless sensor and moving loads distribution identification. The investigation results show that CS has good application potential in SHM.
机译:压缩采样也称为压缩感应(CS)是最近提出的新兴信息理论。 CS提供了一种新的采样理论来减少数据采集,这表示可以从高度不完整的随机测量集重建稀疏或可压缩信号。 CS通过Shannon定理对采样频率的限制进行了破坏,可以使用更少的采样资源,更高的采样率和更低的硬件和软件复杂性来获得测量。不仅可以用于数据采集,CS还可用于找到线性代数方程问题的稀疏解。在本文中,提出了CS对SHM的应用,包括加速数据采集,丢失无线传感器的数据恢复和移动负载分布识别。调查结果表明,CS在SHM中具有良好的应用潜力。

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