Smart Helper-Aided F-RANs: Improving Delay and Reducing Fronthaul Load
Hesameddin Mokhtarzadeh, Mohammed S. Al-Abiad, Md Jahangir Hossain,, Julian Cheng

TL;DR
This paper proposes a novel smart helper system in F-RANs that reduces fronthaul load and delay by smart caching and serving users without fronthaul links, using reinforcement learning for optimization.
Contribution
Introduction of smart helpers in F-RANs that operate without fronthaul links and optimize cache and user scheduling via reinforcement learning.
Findings
Reduced average transmission delay
Lower fronthaul load
Higher cache hit rate
Abstract
In traditional Fog-Radio Access Networks (F-RANs), enhanced remote radio heads (eRRHs) are connected to a macro base station (MBS) through fronthaul links. Deploying a massive number of eRRHs is not always feasible due to site constraints and the cost of fronthaul links. This paper introduces an innovative concept of using smart helpers (SHs) in F-RANs. These SHs do not require fronthaul links and listen to the nearby eRRHs' communications. Then, they smartly select and cache popular content. This capability enables SHs to serve users with frequent on-demand service requests potentially. As such, network operators have the flexibility to easily deploy SHs in various scenarios, such as dense urban areas and temporary public events, to expand their F-RANs and improve the quality of service (QoS). To study the performance of the proposed SH-aided F-RAN, we formulate an optimization problem…
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Taxonomy
TopicsAdvanced MIMO Systems Optimization · Wireless Networks and Protocols · Cooperative Communication and Network Coding
