首页期刊视频编委会征稿启事出版道德声明审稿流程读者订阅论文查重联系我们English
引用本文
  • 余德涛,蔡晶晶,王飞翔,等.基于循环回溯寻优算法的稀疏阵列优化[J].电讯技术,2026,66(5): - .    [点击复制]
  • YU Detao,CAI Jingjing,WANG Feixiang,et al.Sparse Array Optimization Based on Iterative Backtracking Optimization Algorithm[J].,2026,66(5): - .   [点击复制]
【HTML】 【打印本页】 【下载PDF全文】 查看/发表评论下载PDF阅读器关闭

←前一篇|后一篇→

过刊浏览    高级检索

本文已被:浏览 0次   下载 0 本文二维码信息
码上扫一扫!
基于循环回溯寻优算法的稀疏阵列优化
余德涛,蔡晶晶,王飞翔,李文旭
0
(1.西安电子科技大学 电子工程学院,西安 710071;2.信息工程大学 信息系统工程学院,郑州 450001;3.中国电子科技集团公司第十二研究所,北京 100015)
摘要:
稀疏阵列优化通过抑制阵列天线旁瓣电平,可增强天线系统的空间分辨率、抗干扰能力等。目前多采用智能阵列优化算法,但算法中常存在着收敛效率低和局部最优解等问题。针对上述问题,提出了一种基于循环回溯寻优的稀疏阵列优化算法。该算法以不同阵元数量的阵列方向图作为解搜索空间,以最低峰值旁瓣电平(Peak Sidelobe Level,PSLL)作为搜索择优标准,从阵元数量较少阵列状态(低阶态)搜索到阵元数量较多阵列状态(高阶态)后再回到低阶态,每次寻优用当前最优解代替历史最优解,使得PSLL趋近于全局最优解。仿真实验表明,在同等实验条件下,相比于其他优化算法,所提算法降低了PSLL 0.23~5.71 dB;在相同迭代次数下,相较其他优化算法减少了0.88~1.65 s寻优时间。
关键词:  稀疏阵列优化  模拟退火算法  循环回溯优化
DOI:10.20079/j.issn.1001-893x.241216001
基金项目:中国电子科技集团公司第十二研究所稳定支持科研经费资助项目
Sparse Array Optimization Based on Iterative Backtracking Optimization Algorithm
YU Detao,CAI Jingjing,WANG Feixiang,LI Wenxu
(1.School of Electronic Engineering,Xidian University,Xi’an 710071,China;2.School of Information System Engineering,Information Engineering University,Zhengzhou 450001,China;3.The 12th Research Institute of China Electronics Technology Group Corporation,Beijing 100015,China)
Abstract:
The sparse array optimization enhances the spatial resolution and anti-interference ability of the antenna system by depressing the side-lobe level of the array antenna.The intelligent array optimization algorithms are mostly used nowadays,but they often suffer from low convergence efficiency and local optimization solution problems.For above problems,a sparse array optimization algorithm based on the iterative backtracking strategy is proposed.The proposed algorithm takes the array patterns of arrays with different numbers of elements as the solution searching space and the lowest peak sidelobe level(PSLL) as the optimization criterion of searching,and searches from the array status of less array elements(low-order status) to the array status of more array elements(high-order status),and then back to the low-order status.The historical optimal solution is always replaced by the current optimal solution in each round of optimization,which makes the PSLL approach the global optimal solution.Simulations prove that,the proposed algorithm decreases the PSLL,0.23 dB to 5.71 dB compared with other optimization algorithms in the same simulation conditions.Furthermore,it decreases the optimization time 0.88 s to 1.65 s compared with other optimization algorithms in the same number of iterations.
Key words:  sparse array optimization  simulated annealing algorithm  iterative backtracking optimization
安全联盟站长平台