Optimal Pattern Synthesis of Linear Antenna Arrays Using Modified Grey Wolf Optimization Algorithm

Q3 Engineering
N. Lakhlef, H. Oudira, C. Dumond
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引用次数: 4

Abstract

The aim of this work is to show the effectiveness of a new algorithm named as modified grey wolf optimization (MGWO) algorithm to determine the optimum combination parameters values of a linear antenna array which is widely used in the communication systems. The selection part of the classical GWO has been modified by adopting the competitive exclusion selection inspired from genetic algorithm. The objective to be attained is a directional array factor with a very low level of lateral lobs. To this effect, a Gaussian function centered at 90° with the total absence of secondary lobs is considered as a desired diagram in our simulation. To matches the desired pattern as closely as possible, we considered the optimization of interspacing elements, weights amplitude and phase excitation of the linear antenna array factor. It has been demonstrated that the performance of a printed linear antenna array depends on all parameters, in which simultaneous optimization is imperative to maximize its characteristics. The obtained results show the effectiveness and the flexibility of the proposed algorithm in terms of minimized lateral lobe level compared to PSO algorithm and the convergence speed towards the desired solution.
基于改进的灰太狼优化算法的线性天线阵列最优方向图综合
本文的目的是展示一种新算法——改进的灰狼优化(MGWO)算法在确定通信系统中广泛使用的线性天线阵列的最佳组合参数值方面的有效性。采用遗传算法启发的竞争排斥选择对经典GWO的选择部分进行了改进。要达到的目标是具有非常低水平的侧向lobs的定向阵列因子。为此,在我们的模拟中,以90°为中心、完全不存在次级lobs的高斯函数被认为是所需的图。为了尽可能接近地匹配所需的图案,我们考虑了线性天线阵列因子的间隔元素、权重振幅和相位激励的优化。已经证明,印刷线性天线阵列的性能取决于所有参数,其中同时优化是最大化其特性的必要条件。所获得的结果表明,与PSO算法相比,所提出的算法在最小化旁瓣水平方面具有有效性和灵活性,并且向所需解的收敛速度也很快。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Instrumentation Mesure Metrologie
Instrumentation Mesure Metrologie Engineering-Engineering (miscellaneous)
CiteScore
1.70
自引率
0.00%
发文量
25
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