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Model-Aided Deep Learning Method for Path Loss Prediction in Mobile Communication Systems at 2.6 GHz

机译:2.6 GHz移动通信系统路径损耗预测模型辅助深度学习方法

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摘要

Accurate channel models are essential to evaluate mobile communication system performance and optimize coverage for existing deployments. The introduction of various transmission frequencies for 5G imposes new challenges for accurate radio performance prediction. This paper compares traditional channel models to a channel model obtained using Deep Learning (DL)-techniques utilizing satellite images aided by a simple path loss model. Experimental measurements are gathered and compose the training and test set. This paper considers path loss modelling techniques offered by state-of-the-art stochastic models and a ray-tracing model for comparison and evaluation. The results show that 1) the satellite images offer an increase in predictive performance by & x2248; 0.8 dB, 2) The model-aided technique offers an improvement of & x2248; 1 dB, and 3) that the proposed DL model is capable of improving path loss prediction at unseen locations for 811 MHz with & x2248; 1 dB and & x2248; 4.7 dB for 2630 MHz.
机译:准确的通道模型对于评估移动通信系统性能并优化现有部署的覆盖范围至关重要。引入5G的各种传输频率对准确的无线电性能预测施加了新的挑战。本文将传统信道模型与使用简单路径损耗模型的卫星图像进行了深入学习(DL)-Techniques获得的信道模型。收集实验测量并撰写培训和测试集。本文考虑了最先进的随机模型和用于比较和评估的光线跟踪模型提供的路径损耗建模技术。结果表明,1)卫星图像通过&x2248提供预测性能的增加; 0.8 dB,2)模型辅助技术提供了改进和X2248; 1 dB和3)所提出的DL模型能够在811MHz的看不见位置提高路径损耗预测,其中&X2248; 1 dB和&x2248; 2630 MHz 4.7 DB。

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