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Deep reinforcement learning-based resource allocation for D2D communications in heterogeneous cellular networks 被引量:1

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摘要 Device-to-Device(D2D)communication-enabled Heterogeneous Cellular Networks(HCNs)have been a promising technology for satisfying the growing demands of smart mobile devices in fifth-generation mobile networks.The introduction of Millimeter Wave(mm-wave)communications into D2D-enabled HCNs allows higher system capacity and user data rates to be achieved.However,interference among cellular and D2D links remains severe due to spectrum sharing.In this paper,to guarantee user Quality of Service(QoS)requirements and effectively manage the interference among users,we focus on investigating the joint optimization problem of mode selection and channel allocation in D2D-enabled HCNs with mm-wave and cellular bands.The optimization problem is formulated as the maximization of the system sum-rate under QoS constraints of both cellular and D2D users in HCNs.To solve it,a distributed multiagent deep Q-network algorithm is proposed,where the reward function is redefined according to the optimization objective.In addition,to reduce signaling overhead,a partial information sharing strategy that does not observe global information is proposed for D2D agents to select the optimal mode and channel through learning.Simulation results illustrate that the proposed joint optimization algorithm possesses good convergence and achieves better system performance compared with other existing schemes.
出处 《Digital Communications and Networks》 SCIE CSCD 2022年第5期834-842,共9页 数字通信与网络(英文版)
基金 The work presented in this paper was supported in part by the National Natural Science Foundation of China(No.61801278,61972237 and 61901247) Shandong Provincial scientific research programs in colleges and universities(J18KA310) the Key Laboratory of Cognitive Radio and Information Processing,Ministry of Education(Guilin University of Electronic Technology)(CRKL190205) the Shandong Provincial Natural Science Foundation of China(No.ZR2019MF017)。
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