Testbed Design and Performance Emulation in Fog Radio Access Networks

F-RAN, as a promising technology to achieve low latency and high spectral and energy efficiency, has attracted significant attention. Although performance analysis and resource allocation for F-RANs have been well researched, performance emulation based on a testbed is still challenging. In this article, a testbed for F-RANs has been designed and implemented based on OAI. In order to present the prototype implementation and emulation results, a high-definition video acquisition demonstration based on F-RANs has been built. Given that AI-enabled techniques can cope with dynamic network environments and intractable performance evaluation with low complexity, both an edge caching driven redirection mechanism and transmission mode selection have been evaluated, and the corresponding AI-enabled video quality assessment has been analyzed. The emulation results show that HDV acquisition in F-RANs can reduce both end-to-end latency and frame loss rate while maintaining high video quality.

[1]  Mugen Peng,et al.  Fog-computing-based radio access networks: issues and challenges , 2015, IEEE Network.

[2]  Mugen Peng,et al.  Recent Advances in Fog Radio Access Networks: Performance Analysis and Radio Resource Allocation , 2016, IEEE Access.

[3]  Mugen Peng,et al.  Cost-Aware Resource Allocation for Optimization of Energy Efficiency in Fog Radio Access Networks , 2018, IEEE Journal on Selected Areas in Communications.

[4]  Mugen Peng,et al.  Network Slicing in Fog Radio Access Networks: Issues and Challenges , 2017, IEEE Communications Magazine.

[5]  Victor C. M. Leung,et al.  From cloud-based communications to cognition-based communications: A computing perspective , 2018, Comput. Commun..

[6]  Wenbo Wang,et al.  TD-SCDMA Evolution , 2010, IEEE Vehicular Technology Magazine.

[7]  H. Vincent Poor,et al.  Fronthaul-constrained cloud radio access networks: insights and challenges , 2015, IEEE Wireless Communications.

[8]  Florian Kaltenberger,et al.  OpenAirInterface: Open-source software radio solutions for 5G , 2015 .

[9]  Xuelong Li,et al.  Recent Advances in Cloud Radio Access Networks: System Architectures, Key Techniques, and Open Issues , 2016, IEEE Communications Surveys & Tutorials.

[10]  Hung-Yu Wei,et al.  5G Radio Access Network Design with the Fog Paradigm: Confluence of Communications and Computing , 2017, IEEE Communications Magazine.

[11]  Maria Torres Vega,et al.  Predictive no-reference assessment of video quality , 2016, Signal Process. Image Commun..

[12]  Wenbo Wang,et al.  On the Design of Cognitive-Radio-Inspired Asymmetric Network Coding Transmissions in MIMO Systems , 2015, IEEE Transactions on Vehicular Technology.

[13]  Tapani Ristaniemi,et al.  Learn to Cache: Machine Learning for Network Edge Caching in the Big Data Era , 2018, IEEE Wireless Communications.

[14]  Dong Liang,et al.  Self-configuration and self-optimization in LTE-advanced heterogeneous networks , 2013, IEEE Communications Magazine.