利用自然启发技术训练动态IA-RWA算法

K. Manousakis, Emmanouel Varvarigos
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引用次数: 2

摘要

在这项工作中,我们增加了一个训练阶段的损伤感知路由和波长分配(IA-RWA)算法以提高其性能。最初的IA-RWA算法是一种多参数算法,其中为每个链路分配物理损伤参数向量,从中计算候选光路的损伤向量。这里的重要问题是如何将这些损伤参数组合成一个标量,以反映路径的真实传输质量。本文提出的IA-RWA算法的训练阶段基于一种被称为粒子群优化(PSO)的优化方法,该方法受到动物社会行为的启发。训练阶段使算法能够意识到身体缺陷,即使光学层被视为一个黑盒子。我们的仿真研究表明,所提出的方案的性能接近于具有明确的光学层和物理损伤知识的算法。
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Using a nature inspired technique to train a dynamic IA-RWA algorithm
In this work we add a training phase to an Impairment Aware Routing and Wavelength Assignment (IA-RWA) algorithm so as to improve its performance. The initial IA-RWA algorithm is a multi-parametric algorithm where a vector of physical impairment parameters is assigned to each link, from which the impairment vectors of candidate lightpaths are calculated. The important issue here is how to combine these impairment parameters into a scalar that would reflect the true transmission quality of a path. The training phase of the proposed IA-RWA algorithm is based on an optimization approach, called Particle Swarm Optimization (PSO), inspired by animal social behavior. The training phase gives the ability to the algorithm to be aware of the physical impairments even though the optical layer is seen as a black box. Our simulation studies show that the performance of the proposed scheme is close to that of algorithms that have explicit knowledge of the optical layer and the physical impairments.
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