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A Novel Modification of PSO Algorithm for SML Estimation of DOA

机译:用于DOA SML估计的PSO算法的新改进

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摘要

This paper addresses the issue of reducing the computational complexity of Stochastic Maximum Likelihood (SML) estimation of Direction-of-Arrival (DOA). The SML algorithm is well-known for its high accuracy of DOA estimation in sensor array signal processing. However, its computational complexity is very high because the estimation of SML criteria is a multi-dimensional non-linear optimization problem. As a result, it is hard to apply the SML algorithm to real systems. The Particle Swarm Optimization (PSO) algorithm is considered as a rather efficient method for multi-dimensional non-linear optimization problems in DOA estimation. However, the conventional PSO algorithm suffers two defects, namely, too many particles and too many iteration times. Therefore, the computational complexity of SML estimation using conventional PSO algorithm is still a little high. To overcome these two defects and to reduce computational complexity further, this paper proposes a novel modification of the conventional PSO algorithm for SML estimation and we call it Joint-PSO algorithm. The core idea of the modification lies in that it uses the solution of Estimation of Signal Parameters via Rotational Invariance Techniques (ESPRIT) and stochastic Cramer-Rao bound (CRB) to determine a novel initialization space. Since this initialization space is already close to the solution of SML, fewer particles and fewer iteration times are needed. As a result, the computational complexity can be greatly reduced. In simulation, we compare the proposed algorithm with the conventional PSO algorithm, the classic Altering Minimization (AM) algorithm and Genetic algorithm (GA). Simulation results show that our proposed algorithm is one of the most efficient solving algorithms and it shows great potential for the application of SML in real systems.
机译:本文解决了降低到达方向(DOA)随机最大似然(SML)估计的计算复杂性的问题。 SML算法以其在传感器阵列信号处理中DOA估计的高精度而闻名。但是,由于SML标准的估计是多维非线性优化问题,因此其计算复杂度很高。结果,很难将SML算法应用于实际系统。对于DOA估计中的多维非线性优化问题,粒子群优化(PSO)算法被认为是一种相当有效的方法。但是,传统的PSO算法存在两个缺陷,即粒子过多和迭代次数过多。因此,使用常规PSO算法进行SML估计的计算复杂度仍然很高。为了克服这两个缺陷并进一步降低计算复杂度,本文提出了对传统的PSO算法进行SML估计的一种新颖修改,我们将其称为Joint-PSO算法。修改的核心思想在于它使用通过旋转不变技术(ESPRIT)和随机Cramer-Rao界(CRB)估计信号参数的解决方案来确定新的初始化空间。由于此初始化空间已经接近SML的解决方案,因此需要更少的粒子和更少的迭代时间。结果,可以大大降低计算复杂度。在仿真中,我们将提出的算法与常规PSO算法,经典的交替最小化(AM)算法和遗传算法(GA)进行了比较。仿真结果表明,本文提出的算法是最有效的求解算法之一,在实际系统中具有SML应用潜力。

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