快速优化列车车顶 5G-R 天线的安装位置

Yu Bai, Jie Ren, Yinghong Wen
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摘要

本文建立了基于多模块神经网络(MMNN)的耦合系数预测模型,以快速优化 5G 铁路(5G-R)通信系统车顶天线的安装位置,从而提高车顶天线的抗干扰性能。首先,建立受电弓弧线与车顶天线(工作频率为 2 GHz 的单极天线)之间耦合系数的仿真模型,构建数据集。并验证了通过预测新的安装位置(耦合系数最小)可显著降低受电弓起弧电磁干扰(EMI)的影响,实现屋顶天线的安装位置优化。随后,分别采用了反向传播神经网络的心智进化算法(MEA-BP)算法和粒子群优化-极端学习机(PSO-ELM)算法。极限学习机算法构建了不同的预测模型。同时,通过设置分片预测的综合策略,优化了预测结果,进一步提高了基于 MMNN 的预测模型的准确性。最后,通过多种预测性能指标,证明该预测模型能够准确、高效地替代复杂的电磁仿真工作,为屋顶天线安装位置的快速优化提供了有效的预测方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fast Optimization of the Installation Position of 5G-R Antenna on the Train Roof
In this paper, a prediction model of the coupling coefficient based on a multi-module neural network (MMNN) is developed to quickly optimize the installation position of the roof antenna of the 5G-Railway (5G-R) communication system, so as to improve the anti-interference performance of the roof antenna. Firstly, a simulation model of the coupling coefficient between the pantograph arcing and the roof antenna (a monopole antenna operating frequency of 2 GHz) was established to construct the dataset. It is also verified that the influence of the electromagnetic interference (EMI) of pantograph arcing can be significantly reduced by predicting the new installation position (minimum coupling coefficient), and the installation position optimization of roof antenna can be realized. Then, the mind evolutionary algorithm of the back propagation neural network (MEA-BP) algorithm and particle swarm optimization—extreme learning machine (PSO-ELM) algorithm were adopted, respectively. The extreme learning machine algorithm constructed a different prediction model. And, by setting the integrated strategy of piecewise prediction, the prediction results are optimized and the accuracy of the prediction model based on the MMNN is further improved. Finally, the prediction model is proven to be able to replace the complicated electromagnetic simulation work accurately and efficiently by a variety of prediction performance indices, which provides an effective prediction method for the rapid optimization of the installation position of the roof antenna.
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