Energy-Efficient NOMA Enabled Heterogeneous Cloud Radio Access Networks
January 06, 2018 Β· Declared Dead Β· π IEEE Network
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Authors
Fuhui Zhou, Yongpeng Wu, Rose Qingyang Hu, Yuhao Wang, Kai-Kit Wong
arXiv ID
1801.01996
Category
cs.NI: Networking & Internet
Cross-listed
cs.IT
Citations
97
Venue
IEEE Network
Last Checked
4 months ago
Abstract
Heterogeneous cloud radio access networks (H-CRANs) are envisioned to be promising in the fifth generation (5G) wireless networks. H-CRANs enable users to enjoy diverse services with high energy efficiency, high spectral efficiency, and low-cost operation, which are achieved by using cloud computing and virtualization techniques. However, H-CRANs face many technical challenges due to massive user connectivity, increasingly severe spectrum scarcity and energy-constrained devices. These challenges may significantly decrease the quality of service of users if not properly tackled. Non-orthogonal multiple access (NOMA) schemes exploit non-orthogonal resources to provide services for multiple users and are receiving increasing attention for their potential of improving spectral and energy efficiency in 5G networks. In this article a framework for energy-efficient NOMA H-CRANs is presented. The enabling technologies for NOMA H-CRANs are surveyed. Challenges to implement these technologies and open issues are discussed. This article also presents the performance evaluation on energy efficiency of H-CRANs with NOMA.
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