Kumar Jakkuluri Vijaya, Shaby S Maflin
School of Electrical and Electronics Engineering, Sathyabama Institute of Science and Technology, Chennai, India.
Network. 2024 May 28:1-31. doi: 10.1080/0954898X.2024.2358961.
The recent wireless communication systems require high gain, lightweight, low profile, and simple antenna structures to ensure high efficiency and reliability. The existing microstrip patch antenna (MPA) design approaches attain low gain and high return loss. To solve this issue, the geometric dimensions of the antenna should be optimized. The improved Particle Swarm Optimization (PSO) algorithm which is the combination of PSO and simulated annealing (SA) approach (PSO-SA) is employed in this paper to optimize the width and length of the inset-fed rectangular microstrip patch antennas for Ku-band and C-band applications. The inputs to the proposed algorithm such as substrate height, dielectric constant, and resonant frequency and outputs are optimized for width and height. The return loss and gain of the antenna are considered for the fitness function. To calculate the fitness value, the Feedforward Neural Network (FNN) is employed in the PSO-SA approach. The design and optimization of the proposed MPA are implemented in MATLAB software. The performance of the optimally designed antenna with the proposed approach is evaluated in terms of the radiation pattern, return loss, Voltage Standing Wave Ratio (VSWR), gain, computation time, directivity, and convergence speed.
近期的无线通信系统需要高增益、轻重量、低剖面以及简单的天线结构,以确保高效率和可靠性。现有的微带贴片天线(MPA)设计方法存在增益低和回波损耗高的问题。为解决此问题,应优化天线的几何尺寸。本文采用改进的粒子群优化(PSO)算法,即PSO与模拟退火(SA)方法相结合的(PSO-SA)算法,来优化用于Ku波段和C波段应用的嵌入式馈电矩形微带贴片天线的宽度和长度。该算法的输入,如基板高度、介电常数和谐振频率,以及输出,即宽度和高度,均得到优化。适应度函数考虑了天线的回波损耗和增益。为计算适应度值,在PSO-SA方法中采用了前馈神经网络(FNN)。所提出的MPA的设计与优化在MATLAB软件中实现。采用所提方法对优化设计天线的性能进行了评估,评估指标包括辐射方向图、回波损耗、电压驻波比(VSWR)、增益、计算时间、方向系数和收敛速度。