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首页> 外文期刊>Wireless personal communications: An Internaional Journal >Comparative Analysis of ML-PSO DOA Estimation with Conventional Techniques in Varied Multipath Channel Environment
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Comparative Analysis of ML-PSO DOA Estimation with Conventional Techniques in Varied Multipath Channel Environment

机译:不同多径通道环境中常规技术ML-PSO DOA估计的比较分析

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In the field of array signal processing, direction of arrival (DOA) estimation is a prime area of research. DOA estimation and adaptive beamforming (ABF) are the main issues in smart antennas, which dynamically find the direction of desired and interfering users and finds the optimum weights for beamforming. There are numerous spectral and eigen structure algorithms for estimating the direction of narrow band sources. However, in a complex multipath channel environment, received signals from different directions are fully or partially correlated, which prevents the applications of high resolution techniques to estimate the direction of incoming signals. Maximum likelihood (ML) is an efficient technique for DOA estimation in a low signal to noise ratio (SNR) and coherent channel environment. In this paper, we use particle swarm optimization (PSO) for estimating ML solution by optimizing complex non linear multimodal function over a high dimensional space in linear arrays. PSO-ML estimator has been compared with conventional DOA estimation techniques in uncorrelated, partially correlated and coherent channel environment. The performance of PSO-ML estimator and conventional algorithms are analyzed in varying partially correlated channel environment. The simulation results demonstrate that PSO based estimator gives superior statistical performance.
机译:在阵列信号处理领域,到达方向(DOA)估计是研究的主要原因。 DOA估计和自适应波束形成(ABF)是智能天线中的主要问题,它动态地找到了所需和干扰用户的方向,并找到波束成形的最佳权重。有许多光谱和特征结构算法,用于估计窄带源的方向。然而,在复杂的多径信道环境中,来自不同方向的接收信号完全或部分相关,这防止了高分辨率技术的应用来估计输入信号的方向。最大可能性(ML)是对低信噪比(SNR)和相干信道环境中的DOA估计的有效技术。在本文中,我们使用粒子群优化(PSO)来估计ML解决方案,通过在线性阵列中的高尺寸空间优化复杂的非线性多模函数来估计ML解决方案。已经将PSO-M1估计器与传统的DOA估计技术进行了比较,但是在不相关的,部分相关的和相干的通道环境中。在不同部分相关的信道环境中分析了PSO-M1估计器和常规算法的性能。仿真结果表明,基于PSO的估计器提供了卓越的统计性能。

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