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Prediction of buried minelike target radar signatures using wideband electomagnetic modeling

机译:使用宽带电磁建模预测埋地矿的埋地雷达签名

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Current ground penetrating radars (GPR) have been tested for land mine detection, but they have generally been costly and have poor performance. Comprehensive modeling and experimentation must be done to predict the electromagnetic (EM) signatures of mines to access the effect of clutter on the EM signature of the mine, and to understand the merit and limitations of using radar for various mine detection scenarios. This modeling can provide a basis for advanced radar design and detection techniques leading to superior performance. Lawrence Livermore National Laboratory (LLNL) has developed a radar technology that when combined with comprehensive modeling and detection methodologies could be the basis of an advanced mine detection system. Micropower Impulse Radar (MIR) technology exhibits a combination of properties, including wideband operation, extremely low power consumption, extremely small size and low cost, array configurability, and noise encoded pulse generation. LLNL is in the process of developing an 'optimal' processing algorithm to use with the MIR sensor. In this paper, we use classical numerical models to obtain the signature of mine-like targets and examine the effect of surface roughness on the reconstructed signals. These results are then qualitatively compared to experimental data.
机译:目前地面穿透雷达(GPR)已经测试了土地矿山检测,但它们通常成本高,性能差。必须进行综合建模和实验,以预测地雷的电磁(EM)签名,以获得杂乱对矿井EM签名的效果,并了解各种矿山检测场景的使用雷达的优点和限制。该建模可以为先进的雷达设计和检测技术提供良好的性能。 Lawrence Livermore国家实验室(LLNL)制定了一种雷达技术,当与综合建模和检测方法结合起来,可以是先进的矿井检测系统的基础。 MicroPower脉冲雷达(MIR)技术表现出特性的组合,包括宽带操作,极低功耗,极小尺寸和低成本,阵列可配置性和噪声编码脉冲产生。 LLNL正在开发与MIR传感器一起使用的“最佳”处理算法。在本文中,我们使用经典的数值模型来获得越野靶标的签名,并检查表面粗糙度对重建信号的影响。然后与实验数据相比,这些结果被定性。

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