Mean-field limits for large-scale random-access networks
Fabio Cecchi, Sem C. Borst, Johan S.H. van Leeuwaarden, Philip A., Whiting

TL;DR
This paper develops a mean-field framework to analyze large-scale random-access networks with buffer dynamics, providing simplified performance metrics and insights into delay and buffer content distributions as the network size grows.
Contribution
It introduces a novel mean-field approach for buffer dynamics in large random-access networks, enabling low-dimensional fixed-point analysis and insights into stability and performance.
Findings
Buffer occupancy converges to a deterministic solution in large networks.
Explicit fixed-point expressions for buffer content and delay distributions.
Asymptotic stability and interchange of limits for complete interference graphs.
Abstract
We establish mean-field limits for large-scale random-access networks with buffer dynamics and arbitrary interference graphs. While saturated-buffer scenarios have been widely investigated and yield useful throughput estimates for persistent sessions, they fail to capture the fluctuations in buffer contents over time, and provide no insight in the delay performance of flows with intermittent packet arrivals. Motivated by that issue, we explore in the present paper random-access networks with buffer dynamics, where flows with empty buffers refrain from competition for the medium. The occurrence of empty buffers thus results in a complex dynamic interaction between activity states and buffer contents, which severely complicates the performance analysis. Hence we focus on a many-sources regime where the total number of nodes grows large, which not only offers mathematical tractability but…
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