基于人工神经网络非线性回归的探地雷达数据分析

Reyhan Yurt, H. Torpi
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引用次数: 1

摘要

本文定义了一个探地雷达问题,并利用CST三维全波电磁仿真环境对其进行了建模。将不同半径的目标放置在不同深度的土壤中,利用c波段传统喇叭天线对孔径上的定点进行时域求解,得到反射归一化功率。此外,在没有目标的情况下,对相同的点进行模拟,并使用背景减法算法来消除土壤反射措施和其他影响,如噪声,地面异常。然后用非线性回归函数对所有一维时间信号即a扫描数据得到双曲线,得到一个归一化功率幅值作为输出。利用这些输出,使用不同的人工神经网络(ANN)来预测埋藏物体的近似后向散射归一化功率幅值。最后,本文提出的非线性回归算法构建了从探地雷达b扫描图像中约简后的一维信号。所构建的网络能够与目标规格和反射信号的功率相关联,并对结果进行了讨论。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Ground Penetrating Radar Data Analysis with Nonlinear Regression on Artificial Neural Network
Herein, a Ground Penetrating Radar (GPR) problem is defined and modelled with CST 3-D full-wave electromagnetic (EM) simulation environment. The target which has various radius is placed at different depth of soil, then reflected normalized power is obtained by using C-Band conventional horn antenna for determined points on the aperture with the help of time domain solver. Also, without target simulations are applied for the same points and background subtraction algorithm is used to eliminate soil reflection measures and other effects like noise, ground anomalies. After that, nonlinear regression function is used to obtain hyperbola for all 1-D time signals in other words A-scan data, so that one normalized power amplitude of value as an output is received. With these outputs, different Artificial Neural Networks (ANN) are worked to predict approximate backscattering normalized power amplitudes from the buried objects. Finally, the presented nonlinear regression algorithm constructs 1-D signals which are reduced from B-scan GPR images. The constructed networks can be able to correlate with the target specifications and power of the reflected signals and results are discussed.
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