Development of a System-Level Simulator for Evaluating Performance of Device-to-Device Communication Underlaying LTE-Advanced Networks

Computational Intelligence, Modelling and Simulation(2012)

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摘要
Device-to-device (D2D) communication enables mobile devices to directly communicate with each other without help of infrastructure and to reuse radio resources of cellular networks. In case that cellular and D2D user equipments (UEs) reuse the radio resources, interference between them may degrade their performance. Therefore, interference between cellular and D2D UEs should be analyzed and coordinated to avoid performance degradation of the networks. In this paper, we develop a system-level simulator for evaluating performance of D2D communication underlaying cellular networks. The simulator consists of five functional modules and operates with event-driven simulation paradigm. We adopt a graphical user interface (GUI) to facilitate controlling the simulator and observing the results in execution of simulation. Utilizing the simulator, we analyze interference between cellular and D2D UEs for two cases of interference scenarios. From the results, we can notice that D2D communication reusing uplink resources achieves better performance than that reusing downlink ones.
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关键词
device-to-device communication underlaying lte-advanced,d2d communication,mobile devices,mobile handsets,radio resource,d2d ues,radiofrequency interference,interference scenarios,cellular radio,event-driven simulation paradigm,functional modules,device-to-device communication,d2d user equipments,uplink resources,d2d ue,interference analysis,performance degradation,cellular network,interference scenario,graphical user interface,better performance,graphical user interfaces,lte-advanced,long term evolution,digital simulation,performance evaluation,system-level simulator,reuse radio resources,gui,cellular networks,mobile computing,lte-advanced networks,scheduling algorithms,downlink,interference,signal to noise ratio,generators,lte advanced
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