基于粒子群算法的高斯過程建模在天線優(yōu)化上的應(yīng)用研究
[Abstract]:When the antenna is optimized, it can be realized by combining electromagnetic simulation software HFSS and particle swarm optimization algorithm, but it takes a lot of time to use HFSS to evaluate the fitness of particle swarm optimization algorithm. At the same time, there is a high demand for computer performance, which makes the antenna design of complex structure difficult. In this paper, Gao Si process modeling method is integrated into particle swarm optimization (PSO) algorithm for antenna with various uses and frequency bands, and the antenna is optimized to meet the requirements of the design index. At the same time, the method of combining particle swarm optimization algorithm with HFSS software is compared, and it is proved that the Gao Si process-particle swarm optimization algorithm has great advantages in the optimization time. The main research work in this paper is as follows: 1. The establishment and evaluation methods of Gao Si process model are introduced. Taking the rectangular side-fed microstrip antenna model as an example, it is shown that Gao Si process model has certain accuracy in predicting the frequency characteristics of the antenna. This paper introduces the idea of Gao Si process-Particle Swarm Optimization Joint algorithm, and compares this method with the method of using electromagnetic simulation software HFSS as the fitness evaluation method of Particle Swarm Optimization algorithm from the point of view of time. The advantages of the Gao Si process-particle swarm joint algorithm are illustrated. 3, the Gao Si process modeling for the frequency characteristics of printed dipole antennas is carried out, which solves the problem of antenna frequency characteristics modeling with bandwidth requirements. The Gao Si process model is incorporated into the particle swarm optimization algorithm to optimize the size of some structures of printed dipole antenna, which greatly reduces the time required for optimization design. 4, The frequency characteristics of GPS dual-mode microstrip antenna are modeled by Gao Si process, which solves the problem of antenna frequency characteristic modeling for special frequency points in a narrow band range, and sets up a Gao Si process model with high accuracy. The structure size of the antenna is optimized by the particle swarm optimization algorithm, which greatly reduces the time required for the optimization design of the antenna. 5. The frequency characteristics of the antenna with double ridged horn are modeled by Gao Si process. The problem of frequency characteristic modeling of broadband antenna is solved. A high precision Gao Si process model is established and incorporated into particle swarm optimization algorithm. The structural size of the antenna with double ridged horn is optimized, which greatly reduces the time required for the optimum design of the antenna.
【學位授予單位】:江蘇科技大學
【學位級別】:碩士
【學位授予年份】:2017
【分類號】:TN820;TP18
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