Title
A comparison of multi-objective optimization algorithms for weight setting problems in traffic engineering
Abstract
Traffic engineering approaches are increasingly important in network management to allow an optimized configuration and resource allocation. In link-state routing, setting appropriate weights to the links is an important and challenging optimization task. Different approaches have been put forward towards this aim, including evolutionary algorithms (EAs). This work addresses the evaluation of a single and two multi-objective EAs, in two tasks related to weight setting optimization towards optimal intra-domain routing, knowing the network topology and aggregated traffic demands and seeking to minimize network congestion. In both tasks, the optimization considers scenarios where there is a dynamic alteration in the network, with (1) changes in the traffic demand matrices, and (2) link failures. The methods will simultaneously optimize for both conditions, the normal and the altered one, following a preventive TE approach. Since this leads to a bi-objective function, the use of multi-objective EAs, such as SPEA2 and NSGA-II, came naturally; those are compared to a single-objective EA previously proposed by the authors. The results show a remarkable performance and scalability of NSGA-II in the proposed tasks presenting itself as the most promising option for TE.
Year
DOI
Venue
2022
10.1007/S11047-020-09807-1
Natural Computing
DocType
Volume
Citations 
Journal
21
0
PageRank 
References 
Authors
0.34
0
3
Name
Order
Citations
PageRank
Vitor Pereira194.78
Pedro Sousa217425.25
Miguel Rocha351154.06