Multi-Provider Resource Scheduling in Massive MIMO Radio Access Networks
Qing An, Divyanshu Pandey, Rahman Doost-Mohammady, Ashutosh Sabharwal,, Srinivas Shakkottai

TL;DR
This paper proposes a channel-aware, SLA-aware RAN slicing framework for massive MIMO networks, optimizing resource allocation for different enterprise needs and demonstrating significant efficiency gains through simulation.
Contribution
It introduces a novel scheduler for massive MIMO RAN slicing that accounts for both shared and private resource scenarios, validated with real-world data.
Findings
Up to 60.9% reduction in RB usage with resource sharing.
Schedulers outperform exhaustive greedy approaches in speed.
Framework meets 5G latency requirements.
Abstract
An important aspect of 5G networks is the development of Radio Access Network (RAN) slicing, a concept wherein the virtualized infrastructure of wireless networks is subdivided into slices (or enterprises), tailored to fulfill specific use-cases. A key focus in this context is the efficient radio resource allocation to meet various enterprises' service-level agreements (SLAs). In this work, we introduce a channel-aware and SLA-aware RAN slicing framework for massive multiple input multiple output (MIMO) networks where resource allocation extends to incorporate the spatial dimension available through beamforming. Essentially, the same time-frequency resource block (RB) can be shared across multiple users through multiple antennas. Notably, certain enterprises, particularly those operating critical infrastructure, necessitate dedicated RB allocation, denoted as private networks, to ensure…
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Taxonomy
TopicsAdvanced Wireless Network Optimization · Advanced MIMO Systems Optimization · Wireless Communication Networks Research
MethodsSparse Evolutionary Training · Focus
