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Millimeter Wave Microstrip Antenna Design Based on Swarm Intelligence Algorithm in 5G

机译:基于5G群智能算法的毫米波微带天线设计

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In order to solve the problem of millimeter wave (mm-wave) antenna impedance mismatch in 5G communication system, a optimization algorithm for Particle Swarm Ant Colony Optimization (PSACO) is proposed to optimize antenna patch parameter. It is proved that the proposed method can effectively achieve impedance matching in 28GHz center frequency, and the return loss characteristic is obviously improved. At the same time, the nonlinear regression model is used to solve the nonlinear relationship between the resonant frequency and the patch parameters. The Elman Neural Network (Elman NN) model is used to verify the reliability of PSACO and nonlinear regression model. Patch parameters optimized by PSACO were introduced into the nonlinear relationship, which obtained error within 2%. The method proposed in this paper improved efficiency in antenna design.
机译:为了解决5G通信系统中毫米波天线阻抗不匹配的问题,提出了一种粒子群蚁群算法(PSACO)的优化算法,以优化天线贴片参数。实践证明,该方法可以有效地实现中心频率为28GHz的阻抗匹配,回波损耗特性得到明显改善。同时,使用非线性回归模型来求解谐振频率与贴片参数之间的非线性关系。 Elman神经网络(Elman NN)模型用于验证PSACO和非线性回归模型的可靠性。将通过PSACO优化的贴片参数引入非线性关系,获得的误差在2%以内。本文提出的方法提高了天线设计的效率。

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