Deep Learning Based Cooperative Resource Allocation in 5G Wireless Networks

被引:0
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作者
Dan Huang
Yuan Gao
Yi Li
Mengshu Hou
Wanbin Tang
Shaochi Cheng
Xiangyang Li
Yunchuan Sun
机构
[1] University of Electronic Science and Technology of China (UESTC),State Key Laboratory on Microwave and Digital Communications, National Laboratory for Information Science and Technology
[2] Academy of Military Science of PLA,Business School
[3] Tsinghua University,undefined
[4] The High School Affiliated to Renmin University of China,undefined
[5] Beijing Normal University,undefined
来源
关键词
Deep learning; Resource allocation; Downlink; 5G; Wireless network;
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学科分类号
摘要
Wireless personal communication has become popular with the rapid development of 5G communication systems. Critical demands on transmission speed and QoS make it difficult to upgrade current wireless personal communication systems. In this paper, we develop a novel resource allocation method using deep learning to squeeze the benefits of resource utilization. By generating the convolutional neural network using channel information, resource allocation is to be optimized. The deep learning method could help make full use of the small scale channel information instead of traditional resource optimization, especially when the channel environment is changing fast. Simulation results indicate the fact that the performance of our proposed method is close to MMSE method and better than ZF method, and the time consumption of computation is smaller than traditional method.
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页码:1131 / 1138
页数:7
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