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Threshold Optimization Of Decentralized Cfar Detection In Weibull Clutter Using Genetic Algorithms

机译:遗传算法在威布尔杂波检测中的阈值优化

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摘要

The use of genetic algorithms (GAs) tool for the solution of distributed constant false alarm rate (CFAR) detection for Weibull clutter statistics is considered. An approximate expression of the probability of detection (P_D) of the ordered statistics CFAR (OS-CFAR) detector in Weibull clutter is derived. Optimal threshold values of distributed maximum likelihood CFAR (ML-CFAR) detectors and distributed OS-CFAR detectors with a known shape parameter of the background statistics are obtained using GA tool. For the distributed ML-CFAR detection, we consider also the case when the shape parameter is unknown of the Weibull distribution. A performance assessment is carried out, and the results are compared and given as a function of the shape parameter and of system parameters.
机译:考虑了使用遗传算法(GAs)工具解决威布尔杂波统计数据的分布式恒定虚警率(CFAR)检测的解决方案。推导了威布尔杂波中有序统计CFAR(OS-CFAR)检测器的检测概率(P_D)的近似表达式。使用GA工具获得具有已知背景统计形状参数的分布式最大似然CFAR(ML-CFAR)检测器和OS-CFAR分布式检测器的最佳阈值。对于分布式ML-CFAR检测,我们还考虑了Weibull分布的形状参数未知的情况。进行性能评估,并将结果作为形状参数和系统参数的函数进行比较和给出。

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