虚拟网络嵌入连续优化的遗传方法

P. Martinez-Julia, Ved P. Kafle, H. Asaeda
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引用次数: 2

摘要

对于大型网络来说,获得嵌入在基板网络上的虚拟网络的最佳配置是不可行的和棘手的。这种限制可以通过使用由启发式指导的进化算法来克服,例如遗传算法。虽然它们很快就能达到一个好的配置,但它通常只是一个局部最优,可以通过更多的计算时间轻松地改进。在本文中,我们提出了一种算法,该算法在非常缩短的时间边界内提供构型后,在一些时间、迭代次数和与理想解的距离的约束下继续工作以获得可能的最佳构型。我们证明,经过一些额外的迭代,该算法得到的配置比初始配置好7倍。虽然后者已经可以在网络中强制执行,但改进后的配置将在准备就绪时强制执行,因此网络效率将不断提高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Genetic Approach to Continuous Optimization of Virtual Network Embedding
Obtaining the optimum configuration for a virtual network to be embedded on a substrate network is known to be unfeasible and intractable for large networks. This limitation can be overcome by using evolutionary algorithms guided by heuristics, such as genetic algorithms. Although they are fast to reach a good configuration, it is usually just a local optimum that could be easily improved with more computation time. In this paper we propose an algorithm that, after providing a configuration in a very reduced time boundary, continues its work to get the best configuration possible within some constraints of time, number of iterations, and distance from the ideal solution. We demonstrate that, after some additional iterations, the algorithm obtains a configuration that is 7 times better than the initial configuration. Although the latter can be already enforced in the network, the improved configuration will be enforced when it is ready, so the network efficiency will be continuously improved.
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