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A Pareto based approach with elitist learning strategy for MPLS/GMPS networks

机译:基于Pareto的MPLS / GMPS网络的精英学习策略方法

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Modern telecommunication networks are based on diverse applications that highlighted the status of efficient use of network resources and performance optimization. Various methodologies are developed to address multi-objectives optimization within the traffic engineering of MPLS/ GMPLS networks. However, Pareto based approach can be used to achieve the optimization of multiple conflicting objective functions concurrently. We considered two objective functions such as routing and load balancing costs functions. In the paper, we introduce a heuristics algorithm for solving multi-objective multiple constrained optimization (MCOP) in MPLS/ GMPLS networks. The paper proposes the application of a Pareto based particle swarm optimization (PPSO) for such network's type and through a comparative analysis tests its efficiency against another modified version; Pareto based particle swarm optimization with elitist learning strategy (PPSO_ELS). The simulation results showed that the former proposed approach not only solved the MCOP problem but also provide effective solution for exploration problem attached with PPSO algorithm.
机译:现代电信网络基于各种应用,突出了有效利用网络资源和性能优化的状态。开发了各种方法,以解决MPLS / GMPLS网络的交通工程中的多目标优化。然而,基于帕累托的方法可用于同时实现多个冲突目标功能的优化。我们考虑了两个目标函数,例如路由和负载平衡成本函数。在本文中,我们介绍了一种启发式算法,用于解决MPLS / GMPLS网络中的多目标多约束优化(MCOP)。本文提出了对这种网络类型的帕累托粒子群优化(PPSO)的应用,并通过比较分析测试其对另一个修改版本的效率;基于Pareto的粒子群优化与精英学习策略(PPSO_ELS)。仿真结果表明,前一种方法不仅解决了MCOP问题,而且还为PPSO算法提供了有效的勘探问题解决方案。

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