LA-CWSN: a learning automata-based cognitive wireless sensor networks
LA-CWSN: a learning automata-based cognitive wireless sensor networks
Cognitive networking deals with using cognition to the entire network protocol stack to achieve stack-wide, as well as network-wide performance goals; unlike cognitive radios that apply cognition only at the physical layer to overcome the problem of spectrum scarcity. Adding cognition to the existing Wireless Sensor Networks (WSNs) with a cognitive networking approach brings about many benefits. To the best of our knowledge, almost all the existing researches on the Cognitive Wireless Sensor Networks (CWSNs) have focused on spectrum allocation and interference reduction, which are related to the physical layer optimization. In this paper, an inference and learning model for CWSNs, named LA-CWSN, is proposed. This model uses learning automata to bring cognition to the entire network protocol stack, with the aim of providing end-to-end goal. Learning automata are assigned to the parameters of the important network protocols. Each automaton has a finite set of possible values of the corresponding parameter, and it tries to learn the best one, which maximize the network performance. Each node in the network has its own group of learning automata, which act independently, however all nodes receive the same feedbacks from the environment. To clarify the proposed model a traffic control scenario in WSN is considered. Using the network simulator ns-2.35, we test the proposed inference and learning model for traffic control in a WSN. The results show that learning automata approach works well to apply cognition in WSNs.
46-56
Gheisari, S.
ec5925da-f424-4f49-8b72-d4d045ee7ba6
Meybodi, M.R.
38d27d0a-c6d5-4cfc-89b7-b7a79d1b3351
7 October 2016
Gheisari, S.
ec5925da-f424-4f49-8b72-d4d045ee7ba6
Meybodi, M.R.
38d27d0a-c6d5-4cfc-89b7-b7a79d1b3351
Gheisari, S. and Meybodi, M.R.
(2016)
LA-CWSN: a learning automata-based cognitive wireless sensor networks.
Computer Communications, 94, .
(doi:10.1016/j.comcom.2016.07.006).
Abstract
Cognitive networking deals with using cognition to the entire network protocol stack to achieve stack-wide, as well as network-wide performance goals; unlike cognitive radios that apply cognition only at the physical layer to overcome the problem of spectrum scarcity. Adding cognition to the existing Wireless Sensor Networks (WSNs) with a cognitive networking approach brings about many benefits. To the best of our knowledge, almost all the existing researches on the Cognitive Wireless Sensor Networks (CWSNs) have focused on spectrum allocation and interference reduction, which are related to the physical layer optimization. In this paper, an inference and learning model for CWSNs, named LA-CWSN, is proposed. This model uses learning automata to bring cognition to the entire network protocol stack, with the aim of providing end-to-end goal. Learning automata are assigned to the parameters of the important network protocols. Each automaton has a finite set of possible values of the corresponding parameter, and it tries to learn the best one, which maximize the network performance. Each node in the network has its own group of learning automata, which act independently, however all nodes receive the same feedbacks from the environment. To clarify the proposed model a traffic control scenario in WSN is considered. Using the network simulator ns-2.35, we test the proposed inference and learning model for traffic control in a WSN. The results show that learning automata approach works well to apply cognition in WSNs.
This record has no associated files available for download.
More information
Accepted/In Press date: 12 July 2016
e-pub ahead of print date: 14 July 2016
Published date: 7 October 2016
Identifiers
Local EPrints ID: 493942
URI: http://eprints.soton.ac.uk/id/eprint/493942
ISSN: 0140-3664
PURE UUID: a6789627-553a-41b5-9eb5-aaecbdd1cc6f
Catalogue record
Date deposited: 17 Sep 2024 17:03
Last modified: 18 Sep 2024 02:11
Export record
Altmetrics
Contributors
Author:
S. Gheisari
Author:
M.R. Meybodi
Download statistics
Downloads from ePrints over the past year. Other digital versions may also be available to download e.g. from the publisher's website.
View more statistics