Age of Information with Gilbert-Elliot Servers and Samplers

02/13/2020
by   Baturalp Buyukates, et al.
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We study age of information in a status updating system that consists of a single sampler, i.e., source node, that sends time-sensitive status updates to a single monitor node through a server node. We first consider a Gilbert-Elliot service profile at the server node. In this model, service times at the server node follow a finite state Markov chain with two states: bad state b and good state g where the server is faster in state g. We determine the time average age experienced by the monitor node and characterize the age-optimal state transition matrix P with and without an average cost constraint on the service operation. Next, we consider a Gilbert-Elliot sampling profile at the source. In this model, the interarrival times follow a finite state Markov chain with two states: bad state b and good state g where samples are more frequent in state g. We find the time average age experienced by the monitor node and characterize the age-optimal state transition matrix P.

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