A Worst-Case Approximate Analysis of Peak Age-of-Information Via Robust Queueing Approach

IEEE CONFERENCE ON COMPUTER COMMUNICATIONS (IEEE INFOCOM 2021)(2021)

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摘要
A new timeliness metric, called Age-of-Information (AoI), has recently attracted a lot of research interests for realtime applications with information updates. It has been extensively studied for various queueing models based on the probabilistic approaches, where the analyses heavily depend on the properties of specific distributions (e.g., the memoryless property of the exponential distribution or the i.i.d. assumption). In this work, we take an alternative new approach, the robust queueing approach, to analyze the Peak Age-of-Information (PAoI). Specifically, we first model the uncertainty in the stochastic arrival and service processes using uncertainty sets. This enables us to approximate the expected PAoI performance for very general arrival and service processes, including those exhibiting heavy-tailed behaviors or correlations, where traditional probabilistic approaches cannot be applied. We then derive a new bound on the PAoI in the single-source single-server setting. Furthermore, we generalize our analysis to two-source single-server systems with symmetric arrivals, which involves new challenges (e.g., the service times of the updates from two sources are coupled in one single uncertainty set). Finally, through numerical experiments, we show that our new bounds provide a good approximation for the expected PAoI. Compared to some well-known bounds in the literature (e.g., one based on Kingman's bound under the i.i.d. assumption) that tends to be inaccurate under light load, our new approximation is accurate under both light and high loads, both of which are critical scenarios for the AoI performance.
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关键词
PAoI,worst-case approximate analysis,Peak Age-of-Information,robust queueing approach,timeliness metric,real-time applications,information updates,queueing models,specific distributions,memoryless property,exponential distribution,stochastic arrival,service processes,uncertainty sets,heavy-tailed behaviors,Kingman's bound,service times,symmetric arrivals,two-source single-server systems,single-server setting,traditional probabilistic approaches
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