—This paper addresses the problem of remote monitoring of two-state Markov sources via a slotted ALOHA random
access channel, where the source statistics are not known a
priori to the receiver. We develop a joint model and state
estimation method using the Baum-Welch algorithm for two
different transmission strategies. In the first strategy, the nodes
transmissions are independent of the underlying state evolution
process (random policy). In the second strategy, the nodes transmit an update only upon observing a state transition (reactive
policy). We show that the reactive approach is beneficial not
only in terms of reducing the state estimation error probability
(a result that was recently established under perfect knowledge
of the source statistics), but that it allows a faster learning of the
source statistics.
«
—This paper addresses the problem of remote monitoring of two-state Markov sources via a slotted ALOHA random
access channel, where the source statistics are not known a
priori to the receiver. We develop a joint model and state
estimation method using the Baum-Welch algorithm for two
different transmission strategies. In the first strategy, the nodes
transmissions are independent of the underlying state evolution
process (random policy). In the second strategy, the nodes transmit an updat...
»