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GPR Raw-Data Analysis to Detect Crack Using Order Statistic Filtering

机译:GPR原始数据分析,使用顺序统计滤波检测裂纹

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Ground penetrating radar (GPR) uses data collected with the aid of electromagnetic waves transmitted into a structure by antenna to assess and monitor the structural health of many different kinds of civil infrastructure. With GPR technology promoting their system with promises of the achievement of in excess of 1000 sample points per scan, this research demonstrated on the basis of the Nyquist theorem that 256 sample points per scan provided equally reliable inspection results. Furthermore, 256 sample points per scan GPR data were further analyzed by order statistic filtering with neural networks to locate cracks within concrete materials. The results showed that the neural network order statistic filters are effective in their use of detecting cracks in noisy environments using 256 sample points per scan GPR data.
机译:探地雷达(GPR)使用通过天线将电磁波传输到建筑物中而收集的数据评估和监视许多不同种类的民用基础设施的结构健康状况。随着GPR技术的推广,其系统有望实现每次扫描超过1000个采样点,这项研究基于Nyquist定理证明,每次扫描256个采样点可提供同样可靠的检查结果。此外,每次扫描GPR数据的256个采样点通过神经网络的顺序统计滤波进一步分析,以定位混凝土材料中的裂缝。结果表明,神经网络顺序统计过滤器在每次扫描GPR数据使用256个采样点的嘈杂环境中检测裂缝方面有效。

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