基于深度学习的超密集5G移动网络自适应切换优化

B. Shubyn, Nazarii Lutsiv, Oleh Syrotynskyi, Roman Kolodii
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引用次数: 11

摘要

概述了基于人工智能的第五代移动通信的自动化。我们建议使用GRU递归神经网络,因为它们对环境变化提供快速响应,这在无线网络中经常出现。并提出采用三层模型将人工智能集成到移动网络中,由于每个设备上包含一个带有神经网络的块,所有的个人和敏感信息都会在本地处理,只有神经网络的结果才会发送到主知识库服务器,因此可以有效地增加通道上传输的有用信息的数量,减少服务信息。这将只适用于神经网络的进一步处理。这种方法将显著减少将通过通信通道传输的服务通信量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep Learning based Adaptive Handover Optimization for Ultra-Dense 5G Mobile Networks
An overview is devoted to the automation of fifth- generation mobile communications based on the use of artificial intelligence. We suggest using GRU recurrent neural networks, as they provide a rapid response to changes in the environment, which is often case in the wireless networks. It is also proposed to use a three-tier model to integrate artificial intelligence into the mobile network, which will effectively increase the amount of useful information transmitted on the channel and reduce service information, due to the fact that on each device containing a block with a neural network all personal and sensitive information will be processed locally, and only the results of neural networks will be sent to the main Knowledge Base server, which will only be suitable for further processing by the neural m network. This approach will significantly reduce the amount of service traffic that will be transmitted through the communication channels.
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