Green Networking : Apport de la Radio Cognitive
Loading...
Date
Authors
Journal Title
Journal ISSN
Volume Title
Publisher
University of Tlemcen
Abstract
Green Networking is a recent concept that refers to the processes used to optimize a network to make it more
energy efficient. It is able to overcome the conflicts between transmission power and energy saving by providing
an automatic and adaptive management of the radio parameters based on the needs. In this context, cognitive radio
services are needed. However, the selection of the best available spectrum band to meet the QoS requirements of
secondary users, while respecting the current regulatory context, is considered a major challenge. In this thesis,
we propose three contributions: the first one is based on reinforcement learning for energy consumption
minimization. The second is based on two bio-inspired approaches, namely: the flower pollination algorithm and
the Cuckoo search for transmission parameter adaptation. The third is based on the TOPSIS decision method for
the selection of the best available spectrum band. Through the three proposed approaches, we seek to reconfigure
and adapt the parameters of the cognitive radio during transmission according to the user's application needs while
ensuring better energy efficiency. The results obtained through a series of tests and simulations demonstrate a clear
superiority of our proposals in terms of quality of service and energy efficiency