Koziel Slawomir, Pietrenko-Dabrowska Anna
Engineering Optimization and Modeling Center, Reykjavik University, 102, Reykjavik, Iceland.
Faculty of Electronics, Telecommunications and Informatics, Gdansk University of Technology, 80-233, Gdansk, Poland.
Sci Rep. 2024 May 2;14(1):10081. doi: 10.1038/s41598-024-60749-5.
Utilization of optimization technique is a must in the design of contemporary antenna systems. Often, global search methods are necessary, which are associated with high computational costs when conducted at the level of full-wave electromagnetic (EM) models. In this study, we introduce an innovative method for globally optimizing reflection responses of multi-band antennas. Our approach uses surrogates constructed based on response features, smoothing the objective function landscape processed by the algorithm. We begin with initial parameter space screening and surrogate model construction using coarse-discretization EM analysis. Subsequently, the surrogate evolves iteratively into a co-kriging model, refining itself using accumulated high-fidelity EM simulation results, with the infill criterion focusing on minimizing the predicted objective function. Employing a particle swarm optimizer (PSO) as the underlying search routine, extensive verification case studies showcase the efficiency and superiority of our procedure over benchmarks. The average optimization cost translates to just around ninety high-fidelity EM antenna analyses, showcasing excellent solution repeatability. Leveraging variable-resolution simulations achieves up to a seventy percent speedup compared to the single-fidelity algorithm.
在当代天线系统设计中,优化技术的应用是必不可少的。通常,全局搜索方法是必要的,但在全波电磁(EM)模型层面进行时,会伴随着高昂的计算成本。在本研究中,我们介绍了一种用于全局优化多频段天线反射响应的创新方法。我们的方法使用基于响应特征构建的代理模型,平滑算法处理的目标函数景观。我们首先使用粗离散化电磁分析进行初始参数空间筛选和代理模型构建。随后,代理模型迭代演化为协同克里金模型,利用累积的高保真电磁仿真结果进行自我优化,填充准则侧重于最小化预测目标函数。采用粒子群优化器(PSO)作为底层搜索程序,大量验证案例研究展示了我们的方法相对于基准方法的效率和优越性。平均优化成本仅相当于约九十次高保真电磁天线分析,展示了出色的解重复性。与单保真算法相比,利用可变分辨率仿真可实现高达70%的加速。