Reverse manycast data retrieval in Elastic Optical Networks

Juzi Zhao, V. Vokkarane
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引用次数: 4

Abstract

Extreme-scale science applications are highly innovative and constantly evolving. They are expected to generate data in the petabyte and exabyte ranges. This data needs to be transferred, processed, and analyzed at remote locations. A flexible data retrieval service is needed, where a user requesting data retrieval from a remote site can have a choice between replicated storage sites. Elastic Optical Networks are ideal backbone networks, since they can efficiently utilize the optical fiber's bandwidth in an elastic manner by partitioning the bandwidth into hundreds or even thousands of subcarriers. In this paper, multi-sourced data retrieval problem, called reverse manycast, is studied for static traffic in elastic optical networks, the objective is to minimize the total transmission completion time of all the requests. A novel ILP formulation and a low-complexity heuristic are proposed. Simulation results are presented to demonstrate that the proposed method can save up to 37% in completion time compared with a benchmark.
弹性光网络中的反向多播数据检索
极端规模的科学应用是高度创新和不断发展的。它们有望生成pb和eb级别的数据。这些数据需要在远程位置进行传输、处理和分析。需要灵活的数据检索服务,在这种服务中,请求从远程站点检索数据的用户可以在复制的存储站点之间进行选择。弹性光网络是理想的骨干网,它可以将带宽弹性地划分为数百甚至数千个子载波,从而有效地利用光纤的带宽。本文研究弹性光网络静态业务的多源数据检索问题,即反向多播,其目标是使所有请求的总传输完成时间最小。提出了一种新的ILP公式和一种低复杂度启发式算法。仿真结果表明,与基准测试相比,该方法可节省37%的完成时间。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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