Minimizing Age of Information under Arbitrary Arrival Model with Arbitrary Packet Size
Kumar Saurav, Rahul Vaze

TL;DR
This paper introduces and analyzes causal scheduling policies for minimizing the average Age of Information in a system with arbitrary update arrivals and sizes, providing competitive ratio bounds for these policies.
Contribution
It proposes the SRPT$^+$ and SRPT$^L$ policies for AoI minimization and characterizes their performance with competitive ratio bounds of 4 and 29 respectively.
Findings
SRPT$^+$ has a competitive ratio at most 4.
SRPT$^L$ has a competitive ratio at most 29.
Both policies improve AoI management under arbitrary arrivals and sizes.
Abstract
We consider a single source-destination pair, where information updates arrive at the source at arbitrary time instants. For each update, its size, i.e. the service time required for complete transmission to the destination, is also arbitrary. At any time, age of information (AoI) is equal to the difference between the current time, and the arrival time of the latest update (at the source) that has been completely transmitted (to the destination). AoI quantifies the staleness of the update (information) at the destination. The goal is to find a causal scheduling policy that minimizes the time average of AoI, where the possible decisions at any time are i) whether to preempt the update under transmission upon arrival of a new update, and ii) if no update is under transmission, then choose which update to transmit (among the available updates). In this paper, we propose a causal policy…
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Taxonomy
TopicsAge of Information Optimization · Health, Environment, Cognitive Aging
