一种基于简化贝叶斯局部优化器的混合自适应差分进化算法用于天线的高效设计

IF 4.6 1区 计算机科学 Q1 ENGINEERING, ELECTRICAL & ELECTRONIC
Tian-Ye Gao;Yong-Chang Jiao;Yi-Xuan Zhang;Li Zhang
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引用次数: 0

摘要

对于天线优化,需要计算昂贵的全波电磁仿真,这使得天线的高效设计成为一项挑战。由于只有少数局部最小值,一些没有考虑这一特征的现有算法需要大量无用的EM模拟,导致优化效率低下。为了提高天线优化效率,本文提出了一种基于简化贝叶斯局部优化器(SBLO)的混合自适应差分进化(SADE)算法(SADE-SBLO),其中SADE算法用于产生后代种群。该算法还包括以下四种改进策略:1)单个并行预测方法,减少代理模型训练(SMT)和预测次数;2)为提高子代质量,进一步减少EM模拟次数,提出子代质量预评估方法;3)自适应数据库增量方法,用于使算法适应不同的优化阶段,并作为局部优化器的启动开关;4)用于提高后期优化效率的SBLO。这些策略紧密结合,使算法更好地平衡探索和开发,减少无用的EM模拟,更快地收敛。对四种具有代表性的天线壳体进行了优化。与DE和代理模型辅助差分进化算法(SADEA)等现有算法相比,该算法具有较高的效率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Hybrid Self-Adaptive Differential Evolution Algorithm With Simplified Bayesian Local Optimizer for Efficient Design of Antennas
For antenna optimization, computationally expensive full-wave EM simulations are necessary, making efficient design of antennas a challenge. Since there are only a few local minimums, some existing algorithms without considering this feature need a lot of useless EM simulations, leading to poor optimization efficiencies. In this article, a hybrid self-adaptive differential evolution (SADE) algorithm with a simplified Bayesian local optimizer (SBLO) (SADE-SBLO) is proposed for improving antenna optimization efficiencies, in which the SADE is used to generate the offspring population. The algorithm also consists of the following four modification strategies: 1) an individual parallel prediction method for reducing surrogate model training (SMT) and prediction times; 2) an offspring quality pre-assessment method for improving offspring quality and further reducing the number of EM simulations; 3) a self-adaptive database increment method for adapting the algorithm to different optimization stages and also serving as a start-up switch for the local optimizer; and 4) an SBLO for improving optimization efficiency in the later stage. These strategies are closely integrated to make the algorithm better balance exploration and exploitation, reduce useless EM simulations, and converge faster. Four representative antenna cases are optimized. Compared with some existing algorithms such as DE and the surrogate model-assisted differential evolution algorithm (SADEA), the proposed algorithm is efficient.
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来源期刊
CiteScore
10.40
自引率
28.10%
发文量
968
审稿时长
4.7 months
期刊介绍: IEEE Transactions on Antennas and Propagation includes theoretical and experimental advances in antennas, including design and development, and in the propagation of electromagnetic waves, including scattering, diffraction, and interaction with continuous media; and applications pertaining to antennas and propagation, such as remote sensing, applied optics, and millimeter and submillimeter wave techniques
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