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Synthesis of Sparse Concentric Ring Arrays Based on Fitness-Associated Differential Evolution Algorithm

机译:基于健身相关差分算法的稀疏同心环阵列的合成

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In this paper, fitness-associated differential evolution (FITDE) algorithm is proposed and applied to the synthesis of sparse concentric ring arrays under constraint conditions, whose goal is to reduce peak sidelobe level. In unmodified differential evolution (DE) algorithm, crossover probability is constant and remains unchanged during the whole optimization process, resulting in the negative effect on the population diversity and convergence speed. Therefore, FITDE is proposed where crossover probability can change according to certain information. Firstly, the population fitness variance is introduced to the traditional differential evolution algorithm to adjust the constant crossover probability dynamically. The fitness variance in the earlier iterations is relatively large. Under this circumstance, the corresponding crossover probability shall be small to speed up the exploration process. As the iteration progresses, the fitness variance becomes small on the whole and the crossover probability should be set large to enrich population diversity. Thereby, we construct three variation strategies of crossover probability according to the above changing trend. Secondly, FITDE is tested on benchmark functions, and the best one of the three strategies is determined according to the test results. Finally, sparse concentric ring arrays are optimized using FITDE, of which the results are compared with reference algorithms. The optimization results manifest the advantageous effectiveness of FITDE.
机译:本文提出了健身相关的差分演化(FITDE)算法并应用于约束条件下的稀疏同心环阵列的合成,其目标是降低峰旁瓣级。在未改性的差分演进(DE)算法中,交叉概率是恒定的,并且在整个优化过程中保持不变,导致对群体多样性和收敛速度的负面影响。因此,提出了FITDE,其中交叉概率可以根据某些信息改变。首先,将人口适应性方差引入传统的差分演进算法,以动态调整恒定的交叉概率。早期迭代中的健身方差相对较大。在这种情况下,相应的交叉概率应小于加快勘探过程。随着迭代的进展,整体上的健身方差变小,并且交叉概率应设置大以丰富人口多样性。因此,根据上述变化趋势,我们构建了三个交叉概率的变化策略。其次,FITDE在基准函数上进行测试,并且根据测试结果确定了三种策略中最好的一个。最后,使用FITDE优化了稀疏的同心环阵列,其中将结果与参考算法进行比较。优化结果表明了FITDE的有利效果。

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