Skip to the content

Regression analysis for energy and lifetime prediction in large wireless sensor networks

Mir, F, Bounceur, A and Meziane, F 2014, Regression analysis for energy and lifetime prediction in large wireless sensor networks , in: Institute of Electrical and Electronics Engineers (IEEE) International Conference on Advanced Networking Distributed Systems and Applications, 17th-19th June 2014, Bejaia, Algeria.

[img] PDF - Published Version
Restricted to Repository staff only

Download (503kB) | Request a copy

Abstract

Wireless communication technologies are used to collect information from sensitive, hostile and inaccessible environments. They are used in both military and civil applications that include environmental, medical, military and industrial fields. Routing data to a processing center or a base station requires mechanisms for energy conservation at the end of the prolonged lifetime of the network. The simulation in this case is very constrained by the high density of the network. Existing tools cannot simulate large networks with millions of sensors. In this paper, we propose a new method using statistical regression analysis in order to predict the energy consumption and the lifetime of a wireless sensor network with hundreds or thousands of sensors by simulating smaller networks. We have validated the proposed method using a Revised LEACH protocol. Indeed, this method can be used for other protocols and other kind of simulations with the purpose of evaluating a specific parameter.

Item Type: Conference or Workshop Item (Paper)
Themes: Media, Digital Technology and the Creative Economy
Schools: Schools > School of Computing, Science and Engineering > Salford Innovation Research Centre (SIRC)
Publisher: International Conference on Advanced Networking Distributed Systems and Applications
Refereed: Yes
Related URLs:
Funders: Non funded research
Depositing User: Prof Farid Meziane
Date Deposited: 09 Jun 2015 17:21
Last Modified: 29 Oct 2015 00:10
URI: http://usir.salford.ac.uk/id/eprint/34810

Actions (login required)

Edit record (repository staff only) Edit record (repository staff only)

Downloads

Downloads per month over past year