基于深度学习的线性调频连续波LFM-CW近程雷达探测地下水含量

V. J. Ylaya, O. J. Gerasta, Jesrey Martin S. Macasero, Daryl P. Pongcol, Najie M. Pandian, R. R. Vicerra
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引用次数: 4

摘要

该研究旨在开发一种线性调频连续波LFM-CW近程雷达,用于深度学习探测地下水含量。在LabView中实现信号收发、信号处理和图形用户界面。根据设计方案制作的天线和水面用聚苯乙烯泡沫塑料盒封装,埋置1m、3m和5m,用于实验。实验还采用金属和塑料分别埋1m、3m和5m进行数据对比。研究人员挖了一个9×3×5m洞,并将其分为三个部分,埋有不同深度的物体。第一部分的尺寸为3×3×5m,有2×1金属板、2×1塑料板和2×1×0.5地下水位箱。该物体在距地面5米的深度处以三角形形式间隔1米。第二段为埋地物3×3×5m 2×1金属板、2×1塑料板、2×1×0.5地下水位箱,三者呈三角形,间隔1m,距地面深度3m。最后一段为埋地物3×3×5m 2×1金属板、2×1塑料板、2×1×0.5地下水位箱,三者呈三角形,间隔1m,距地面深度1m。结果表明,a扫描测量窗口具有不同的地下水位、金属和塑料的介电特性,并且使用优化的系统可以检测到大于1m的物体。深度学习方法能够从观察到的a扫描中证明解释结果。该研究建议使用更高的带宽和传输功率硬件来提高距离分辨率,这将能够探测较浅的物体。考虑具有更高指向性和增益的超宽带天线也可以提高系统的地下探测能力。
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Linear Frequency Modulated Continuous Wave LFM-CW Short-Range Radar for Detecting Subsurface Water Content With Deep Learning
The study is to develop a Linear Frequency Modulated Continuous Wave LFM-CW short-range radar for detecting subsurface water content with deep learning. Implementation of signal transmission/reception, signal processing, and graphical user interface in LabView. Fabrication of antenna from the design program and water table are enclosed with a Styrofoam box and buried 1m, 3m, and 5m respectively for the experiments. The experiments also involve metal and plastic buried 1m, 3m, and 5m, respectively, for data comparison. The researcher dug a 9×3×5m hole and divided it into three sections with buried objects of different deepness. The first section has a size of 3×3×5m with 2×1 metal plate, 2×1 plastic plate, and 2×1×0.5 water table box. The object is separated by 1m in a triangular manner at 5m depth from the ground. The second section has 3×3×5m with buried object 2×1 metal plate, 2×1 plastic plate, and 2×1×0.5 water table box separated by 1m in a triangular manner with 3m depth from the ground. The last section has 3×3×5m with buried object 2×1 metal plate, 2×1 plastic plate, and 2×1×0.5 water table box separated by 1m in a triangular manner with 1m depth from the ground. The results show a trend with regards to the A-scan measurement window characterizes the different dielectric properties of the water table, metal, and plastic and able to detect objects greater than 1m using the optimized systems. The deep learning method able to prove the interpreted result from the observed A-scan. The study recommends a higher bandwidth and transmitting power hardware to increased range resolution, which will be able to detect shallower objects. Consideration of ultrawideband antenna with higher directivity and gain can also improve the system subsurface detection.
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