Copyright © 2005 Hindawi Publishing Corporation. This is an open access article distributed under the
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Abstract
We consider medium access control (MAC) in multihop
sensor networks, where only partial information about the shared
medium is available to the transmitter. We model our setting as a
queuing problem in which the service rate of a queue is a
function of a partially observed Markov chain representing the
available bandwidth, and in which the arrivals are controlled
based on the partial observations so as to keep the system in a
desirable mildly unstable regime. The optimal controller for this
problem satisfies a separation property: we first compute a
probability measure on the state space of the chain, namely the
information state, then use this measure as the new state on
which the control decisions are based. We give a formal
description of the system considered and of its dynamics, we
formalize and solve an optimal control problem, and we show
numerical simulations to illustrate with concrete examples
properties of the optimal control law. We show how the ergodic
behavior of our queuing model is characterized by an invariant
measure over all possible information states, and we construct
that measure. Our results can be specifically applied for
designing efficient and stable algorithms for medium access
control in multiple-accessed systems, in particular for sensor
networks.