用混合计算方法估计单快照的振幅和到达方向

F. Zaman, J. A. Khan, Z. Khan, I. Qureshi
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引用次数: 9

摘要

本文研究了用混合计算方法联合估计均匀线阵远场源的振幅和到达方向。该方法利用基于粒子群优化的群体智能作为全局优化器,辅以模式搜索技术作为快速局部搜索技术。基于均方误差的适应度函数定义了期望响应和估计响应之间的误差,根据振幅和到达方向对自适应参数进行优化。对这个函数的兴趣是由于它易于实现,效率和概念简单。它由极大似然导出,只需要单个快照收敛。该算法具有较强的鲁棒性,即使在低信噪比的情况下也能产生较好的结果,并且对阵列中天线单元数量的要求相对较少。与粒子群算法和模式搜索算法相比,混合算法的搜索结果要好得多。根据阵列中不同数量的传感器和不同数量的源对阵列的冲击,讨论了一些测试用例。基于蒙特卡罗仿真及其优越的统计分析,验证了该方案的准确性和可靠性。
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An application of hybrid computing to estimate jointly the amplitude and Direction of Arrival with single snapshot
In this paper, utilization of hybrid computational approach is evaluated for the joint estimation of amplitude and Direction of Arrival of far field sources impinging on a uniform linear array. In this hybrid approach, swarm intelligence based on Particle swarm optimization is exploited as a global optimizer assisted with pattern search technique as a rapid local search technique. The optimization of adaptive parameters depending upon the amplitudes and direction of arrival is performed using the fitness function based on Mean Square Error that defines an error between desired response and estimated response. The interest in this function is due to its ease in implementation, efficiency and simplicity of concept. It is derived from Maximum Likelihood and requires only single snapshot to converge. The proposed algorithm is robust enough to produce fairly good results even in the presence of low signal-to-Noise Ratio and requires relatively less number of antenna elements in the array. The results of hybrid technique are much better as compared to Particle Swarm Optimization and pattern search alone. A number of test cases are discussed on the basis of different number of sources impinging on the array with different number of sensors in the array. The accuracy and reliability of the proposed scheme is tested on the basis of Monte-Carlo simulations and its superior statistical analysis.
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