自适应波束形成快速欧几里德方向搜索算法的性能评价

T. Jamel
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引用次数: 2

摘要

本文对移动通信应用中的快速欧几里德方向搜索自适应波束形成算法的性能评价进行了新的研究。性能评价主要从干扰抑制能力、均方系数偏差(MSD)和均方误差(MSE)三个方面考察了窗长参数(L)对算法性能的影响。采用加性高斯白噪声(AWGN)模型进行性能评价。除此之外,还采用其他自适应算法进行了性能评价。它们是LMS、NLMS和RLS算法。对阵列中8元自适应波束形成的仿真结果表明,最佳窗长参数(L)为10,当窗长参数(L)增加大于10或小于10时,性能开始下降。在干扰抑制能力、最小均方系数偏差(MSD)和最小均方误差(MSE)方面均优于LMS、NLMS算法,且与RLS算法相似。
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Performance evaluation of the fast euclidean direction search algorithm for adaptive beamforming applications
This paper presents a new study of the performance evaluation of Fast Euclidean Direction Search (FEDS) adaptive beamforming algorithm for mobile communications application. The performance evaluation focuses on the effect of window length parameter (L) of the FEDS algorithm on the FEDS performance in terms of interference suppression capability, Mean Square coefficients Deviation (MSD), and Mean Square Error (MSE). The performance evaluation was evaluated in an Additive White Gaussian Noise (AWGN) model. Moreover, the performance evaluation was carried out using other adaptive algorithms beside the FEDS. These are LMS, NLMS, and RLS algorithms. The simulation results of adaptive beamforming with eight elements in the array showed that the best window length parameter (L) is ten and when the window length parameter (L) has increased more than ten or less, then the performance begins to deteriorate. In addition, the FEDS had better performance in terms of interference suppression capability, minimum Mean Square coefficients Deviation (MSD) and minimum Mean Square Error (MSE) compared with LMS, NLMS algorithms and similar to the RLS algorithm.
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