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Optimization of thinned arrays using stochastic Immunity Genetic Algorithm

机译:随机免疫遗传算法优化减薄阵列

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In this paper we propose a novel genetic algorithm called immunity genetic algorithm (IGA) based on stochastic crossover evolution to solve the synthesis problem of thinned arrays. Our crossover operator is a variant of the known GA operator. A new expression of the array factor for a specific number of elements N is expressed as a linear discrete cosine transform (DCT). Using IGA to generate thousands of array bit patterns and the DCT to compute the fitness function will result in a very high speed computation compared to traditional computation techniques. This high performance allows us to find a good approximation of the absolute minimum SLL of synthesized thinned arrays. Simulation results of this novel array signal processing technique show the effectiveness for pattern synthesis with low SLL.
机译:在本文中,我们提出了一种基于随机交叉演化的新型遗传算法,称为免疫遗传算法(IGA),以解决细化阵列的综合问题。我们的交叉算子是已知GA算子的变体。针对特定数量的元素N的数组因子的新表达式表示为线性离散余弦变换(DCT)。与传统的计算技术相比,使用IGA生成数千个阵列位模式并使用DCT计算适应度函数将导致非常高速的计算。如此高的性能使我们能够找到合成的细化阵列的绝对最小SLL的良好近似值。这种新颖的阵列信号处理技术的仿真结果显示了低SLL模式合成的有效性。

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