Adaptive Monte Carlo Algorithm To Global Radio Resources Optimization In H-Cran

2017 IEEE INTERNATIONAL CONFERENCE ON COMMUNICATIONS (ICC)(2017)

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摘要
We propose an Adaptive Monte Carlo algorithm to perform global energy efficient resource allocation for Heterogeneous Cloud Radio Access Network (H-CRAN) architectures, which are forecast as future fifth-generation (5G) networks. We argue that our global proposal offers an efficient solution to the resource allocation for both high and low density scenarios. Our contributions are threefold: (i) the proposal of a global approach to the radio resource assignment problem in H-CRAN architecture, whose stochastic character ensures an overall solution space sampling; (ii) a critical comparison between our global solution and a local model; (iii) the demonstration that for high density scenarios Energy Efficiency is not a well suited metric for efficient allocation, considering data rate capacity, fairness, and served users. Moreover, we compare our proposal against three state-of-the-art resource allocation algorithms for 5G networks.
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关键词
adaptive Monte Carlo algorithm,global energy efficient resource allocation,heterogeneous cloud radio access network architectures,H-CRAN architectures,future fifth-generation networks,future 5G networks,radio resource assignment problem,solution space sampling,data rate capacity,fairness
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