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Mohammad Nassiri

Mohammad Nassiri

Academic rank: Associate Professor
ORCID:
Education: PhD.
ScopusId: 24725089600
HIndex:
Faculty: Faculty of Engineering
Address:
Phone: +989188070601

Research

Title
Toward Energy-Aware Traffic Engineering in Intra-Domain IP Networks Using Heuristic and Meta-Heuristics Approaches
Type
JournalPaper
Keywords
Energy-aware Traffic Engineering; Green Networking; Greedy Algorithms; Genetic Algorithms.
Year
2018
Journal Journal of Information systems and telecommuniction
DOI
Researchers ، ، Muharram Mansoorizadeh ، Mohammad Nassiri

Abstract

Because of various ecological, environmental, and economic issues, energy efficient networking has been a subject of interest in recent years. In a typical backbone network, all the routers and their ports are always active and consume energy. Average link utilization in internet service providers is about 30-40%. Energy-aware traffic engineering aims to change routing algorithms so that low utilized links would be deactivated and their load would be distributed over other routes. As a consequence, by turning off these links and their respective devices and ports, network energy consumption is significantly decreased. In this paper, we propose four algorithms for energy-aware traffic engineering in intra-domain networks. Sequential Link Elimination (SLE) removes links based on their role in maximum network utilization. As a heuristic method, Extended Minimum Spanning Tree (EMST) uses minimum spanning trees to eliminate redundant links and nodes. Energy-aware DAMOTE (EAD) is another heuristic method that turns off links with low utilization. The fourth approach is based on genetic algorithms that randomly search for feasible network architectures in a potentially huge solution space. Evaluation results on Abilene network with real traffic matrix indicate that about 35% saving can be obtained by turning off underutilized links and routers on off-peak hours with respect to QoS. Furthermore, experiments with GA confirm that a subset of links and core nodes with respect to QoS can be switched off when traffic is in its offpeak periods, and hence energy can be saved up to 37%.