利用深度学习算法减少大规模mimo系统的相关现象

J. Chen, Kuan Long Lai
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引用次数: 1

摘要

本项目将提出一种利用人工智能(AI)来降低或降低由于空间信道相关现象而导致的系统性能的新设计。基于人工智能的深度学习算法将被应用于解决上述问题。通常通过对前向链路进行数据置乱和重复避免码间干扰来解决相关信道的问题。可以预见,在建立三维相关通道模型的过程中会遇到许多挑战。天线方向图中采用的波束形成技术可以采集数据馈送到深度学习的输入端。仿真和分析结果将与传统的具有相关信道的MIMO无线电系统的仿真结果进行比较。通过对三维海量mimo通信的研究,对系统性能进行优化,以减少空间相关信道的退化。
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Reduce the Correlation Phenomena over Massive-MIMO System by Deep Learning Algorithms
A novel design for degrading or decreasing the system performance due to the spatially channel correlated phenomenon by using of the artificial intelligence (AI) will be proposed in this project. Based on the AI the deep learning algorithms will be applied to solve the problems mentioned above. Frequently, the issues of correlated channel are solved by applying the data scrambling over forward link and avoiding the intersymbol interference (ISI) repeatedly, respectively. It is predicated that there will meet many challenges in the way to establish the 3-D correlated channel model. The beamforming technology used in the antenna pattern can be adopted to collect the data for feeding to the input of deep learning. The simulation and analyzed results will compare to the one that obtains from the traditional MIMO radio systems with correlated channels. The system performance is going to be optimized by the work out for the 3-D massive-MIMO communication in order to decrease the degradation of spatially correlated channel.
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