The Complexity-Performance Tradeoff in Resource Allocation for URLLC Exploiting Dynamic CSI
Federico Librino, Paolo Santi

TL;DR
This paper investigates the tradeoff between complexity and performance in resource allocation for URLLC, proposing a dynamic CSI-based scheme that enhances spectrum efficiency and fairness in dense networks.
Contribution
It introduces a dynamic pilot transmission scheme to adaptively manage CSI age, improving a graph-based resource allocation method for large-scale URLLC networks.
Findings
Spectrum efficiency improved by over 12% compared to greedy heuristics.
Dynamic pilot allocation boosts spectrum efficiency by 3-5%.
Algorithm maintains performance despite increased computational complexity.
Abstract
The challenging applications envisioned for the future Internet of Things networks are making it urgent to develop fast and scalable resource allocation algorithms able to meet the stringent reliability and latency constraints typical of the Ultra Reliable, Low Latency Communications (URLLC). However, there is an inherent tradeoff between complexity and performance to be addressed: sophisticated resource allocation methods providing optimized spectrum utilization are challenged by the scale of applications and the concomitant stringent latency constraints. Whether non-trivial resource allocation approaches can be successfully applied in large-scale network instances is still an open question that this paper aims to address. More specifically, we consider a scenario in which Channel State Information (CSI) is used to improve spectrum allocation in a radio environment that experiences…
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