2 research outputs found
AoII-Optimum Sampling of CTMC Information Sources Under Sampling Rate Constraints
We consider a sensor that samples an -state continuous-time Markov chain
(CTMC)-based information source process, and transmits the observed state of
the source, to a remote monitor tasked with timely tracking of the source
process. The mismatch between the source and monitor processes is quantified by
age of incorrect information (AoII), which penalizes the mismatch as it stays
longer, and our objective is to minimize the average AoII under an average
sampling rate constraint. We assume a perfect reverse channel and hence the
sensor has information of the estimate while initiating a transmission or
preempting an ongoing transmission. First, by modeling the problem as an
average cost constrained semi-Markov decision process (CSMDP), we show that the
structure of the problem gives rise to an optimum threshold policy for which
the sensor initiates a transmission once the AoII exceeds a threshold depending
on the instantaneous values of both the source and monitor processes. However,
due to the high complexity of obtaining the optimum policy in this general
setting, we consider a relaxed problem where the thresholds are allowed to be
dependent only on the estimate. We show that this relaxed problem can be solved
with a novel CSMDP formulation based on the theory of absorbing MCs, with a
computational complexity of , allowing one to obtain optimum
policies for general CTMCs with over a hundred states
Modeling AoII in Push- and Pull-Based Sampling of Continuous Time Markov Chains
Age of incorrect information (AoII) has recently been proposed as an
alternative to existing information freshness metrics for real-time sampling
and estimation problems involving information sources that are tracked by
remote monitors. Different from existing metrics, AoII penalizes the incorrect
information by increasing linearly with time as long as the source and the
monitor are de-synchronized, and is reset when they are synchronized back.
While AoII has generally been investigated for discrete time information
sources, we develop a novel analytical model in this paper for push- and
pull-based sampling and transmission of a continuous time Markov chain (CTMC)
process. In the pull-based model, the sensor starts transmitting information on
the observed CTMC only when a pull request from the monitor is received. On the
other hand, in the push-based scenario, the sensor, being aware of the AoII
process, samples and transmits when the AoII process exceeds a random
threshold. The proposed analytical model for both scenarios is based on the
construction of a discrete time MC (DTMC) making state transitions at the
embedded epochs of synchronization points, using the theory of absorbing CTMCs,
and in particular phase-type distributions. For a given sampling policy,
analytical models to obtain the mean AoII and the average sampling rate are
developed. Numerical results are presented to validate the analytical model as
well as to provide insight on optimal sampling policies under sampling rate
constraints