Analysis of Selection and Crossover Methods used by Genetic Algorithm-based Heuristic to solve the LSP Allocation Problem in MPLS Networks under Capacity Constraints

1. Abstract The Multiprotocol Label Switching (MPLS) is a popular routing technique for IP networks, where the core problem is to find a route (called LSP) that satisfy all the capacity constraints imposed by a specific trac. Genetic algorithms come as a simple, appealing solution approach, but one that requires careful choices concerning initial population generation, crossover, mutation and selection. The present paper discusses the influence of dierent crossover and selection methods in achieving a fast and accurate convergence of the genetic algorithm, when solving the MPLS allocation problem. The experimental results, using dierent network topologies such as Carrier, Dora, and Mesh, have shown that uniform crossover and Stochastic Remainder Sampling selection are the most suitable combination to solve the problem.

[1]  He Cuihong Route selection and capacity assignment in computer communication networks based on genetic algorithm , 1997, 1997 IEEE International Conference on Intelligent Processing Systems (Cat. No.97TH8335).

[2]  Xiao Chen,et al.  A Multiobjective Optimization Algorithm for LSP Setup in Diffserv and MPLS Networks , 2006, 2006 First International Conference on Communications and Networking in China.

[3]  Qingfu Zhang,et al.  An orthogonal genetic algorithm for multimedia multicast routing , 1999, IEEE Trans. Evol. Comput..

[4]  Muckai K. Girish,et al.  Formulation of the traffic engineering problems in MPLS based IP networks , 2000, Proceedings ISCC 2000. Fifth IEEE Symposium on Computers and Communications.

[5]  Celso C. Ribeiro,et al.  A hybrid genetic algorithm for the weight setting problem in OSPF/IS‐IS routing , 2005, Networks.

[6]  John H. Holland,et al.  Adaptation in Natural and Artificial Systems: An Introductory Analysis with Applications to Biology, Control, and Artificial Intelligence , 1992 .

[7]  R. R. Saldanha,et al.  Improvements in genetic algorithms , 2001 .

[8]  Margaret J. Robertson,et al.  Design and Analysis of Experiments , 2006, Handbook of statistics.

[9]  Fernando Boavida,et al.  A two-phase algorithm for off-line inter-domain traffic optimization , 2005, Advanced Industrial Conference on Telecommunications/Service Assurance with Partial and Intermittent Resources Conference/E-Learning on Telecommunications Workshop (AICT/SAPIR/ELETE'05).

[10]  Colin R. Reeves,et al.  Genetic Algorithms and the Design of Experiments , 1999 .

[11]  Raouf Boutaba,et al.  DORA: Efficient Routing for MPLS Traffic Engineering , 2002, Journal of Network and Systems Management.

[12]  Anton Riedl,et al.  A hybrid genetic algorithm for routing optimization in IP networks utilizing bandwidth and delay metrics , 2002, IEEE Workshop on IP Operations and Management.