隧道工程探地雷达数据的相关属性分析

Kunwei Feng, Yonghui Zhao, Jiansheng Wu, S. Ge
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引用次数: 6

摘要

近十年来,探地雷达在隧道混凝土衬砌缺陷检测中的成功案例比比皆是。由于隧道中数据采集条件的限制,通常很难获得高质量的数据,这可能会降低解释结果的可靠性。在噪声较大的背景中突出深反射事件是一个很大的挑战。属性分析是研究信号多属性的一种重要工具。本文提出了探地雷达剖面解释的互相关属性分析方法。它将一个痕迹与周围的痕迹进行比较,以确定相似程度。提高了探测目标反射波与周围介质的差值,便于探测到原探地雷达时廓线中无法探测到的异常。对合成探地雷达数据和真实探地雷达数据进行了不同时间窗和采样点的比较。数值仿真结果表明,互相关属性分析可以有效地抑制背景噪声、低频干扰和倍数。应用实例表明,属性分析是检测隧道衬砌后注浆层分布的有效方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Cross-correlation attribute analysis of GPR data for tunnel engineering
Successful GPR cases related to defects detection to concrete liners of tunnels can be found in the last ten years. Generally, it was very difficult to get high quality data due to the limited data acquisition condition in tunnel, which might decrease the reliability of interpretation results. It is a great challenge to highlight the deep reflection events from the background with strong noise. Attribute analysis is an important tool that focused on the multi-properties of the signal. Here, cross-correlation attribute analysis has been proposed for GPR profile interpretation. It compares one trace with surrounding traces to determine degrees of similarity. improves the difference between the reflected wave from detection target and its surrounding mediums, which makes it easy to detect the anomaly that couldn't be found in original GPR time profile. A comparison between different kinds of time windows and sampling points is discussed to synthetic and real GPR data. Numerical simulation results shows that cross-correlation attribute analysis can effectively suppress background noises, low frequency disturbances and multiples. Application to the real data shows attribute analysis proved to be an effective method to detect the distribution of grouting layer behind tunnel lining.
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