Department of Electrical and Computer Engineering, University of Houston, 77204, Houston, Texas, USA.
Department of Electrical and Electronics Engineering, Dogus University, 34775, Istanbul, Turkey.
Sci Rep. 2022 Oct 7;12(1):16801. doi: 10.1038/s41598-022-20941-x.
The present paper introduces an optimization-oriented method here practiced for designing high performance single antennas in a fully automated environment. The proposed method comprises two sequential major steps. The first one devotes configuring the shape of antenna and determining the feeding point by employing the bottom-up optimization (BUO) method. In this algorithm, the number of microstrip transmission lines (TLs) used to model the radiator is increased consecutively and the shape of the antenna is revised up to finding the initial satisfying results. Secondly, for determining the best design parameters of the configured antenna shape in the first step (i.e., width and length of TLs), deep neural network (DNN) that is based on Thompson sampling efficient multi-objective optimization (TSEMO) is applied. The recommended optimization method is successfully attracted as a problem solver for designers to tackle the subject for antenna design such as the complexity and large dimensions of structures. Hence, the main advantage of the implemented optimization method in this article is to noticeably decrease the required designer's involvement automatically generating valid layouts. For validating the suggested method, two wideband antennas are designed, prototyped and subjected to experiment. The first optimized antenna covers the frequency band 8.8-10.1 GHz (43 % bandwidth) characterized by a maximum gain of 7.13 dB while the second one covers the frequency band 11.3-13.16 GHz (47.5 %) which exhibits a maximum gain of 7.8 dB.
本文提出了一种在完全自动化环境中设计高性能单天线的优化导向方法。所提出的方法包括两个连续的主要步骤。第一步通过使用自底向上优化(BUO)方法来配置天线的形状和确定馈电点。在该算法中,用于对辐射器建模的微带传输线(TL)的数量连续增加,并且天线的形状被修改,直到找到初始满意的结果。其次,为了确定第一步中配置的天线形状的最佳设计参数(即 TL 的宽度和长度),应用了基于 Thompson 采样高效多目标优化(TSEMO)的深度神经网络(DNN)。所提出的优化方法成功地被吸引作为设计者的问题解决者,以解决天线设计的问题,如结构的复杂性和大尺寸。因此,本文中实现的优化方法的主要优点是可以自动生成有效的布局,显著减少所需设计者的参与。为了验证所提出的方法,设计了两个宽带天线进行原型制作和实验。第一个优化的天线覆盖 8.8-10.1GHz 的频段(带宽为 43%),最大增益为 7.13dB;第二个天线覆盖 11.3-13.16GHz 的频段(带宽为 47.5%),最大增益为 7.8dB。