地下隧道探测阵列处理

P. Xie, S. Grant, N. Putnam, N. Anderson, A. Nasseri-Moghaddam
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引用次数: 0

摘要

本文研究了许多应用于实际情况的地球物理算法所面临的挑战,如瑞利波的衰减分析(AARW)。AARW在探测浅埋地下隧道方面显示出巨大的前景。然而,地下异常(包括各向异性异常)和仪器对自然条件的敏感性会大大降低该技术的实用性。第一个应用的度量估计每个检测结果的置信水平。第二个处理子数组中的记录数据,作为过滤器去除假警报。第三种方法扫描所有检测并搜索具有最高累积置信度的群集。通过一个案例研究,证明了AARW以及后处理质量控制措施的有效性。该工作为工程人员提供了一种简单、有效、可靠地确定隧道位置的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Array processing for underground tunnel detection
This paper investigates challenges faced by many geophysical algorithms applied to real-world cases such as the Attenuation Analysis of Rayleigh Waves (AARW). AARW shows great promise in terms of detecting shallow underground tunnels. However, in-situ subsurface anomalies, including those due to anisotropy, and instrument sensitivity to natural conditions can significantly degrade the utility of this technique. The first applied measure estimates the confidence level of each detection result. The second processes the recorded data in sub-arrays, acting as a filter to remove false alarms. The third scans all detections and searches the cluster with the highest cumulative confidence level. A case study is presented to demonstrate the effectiveness of AARW along with post-processing quality control measures. This work provides engineering practitioners with a simple and efficient method to reliably determine tunnel locations.
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