基于进化Pareto最优控制的网络节能

Yosuke Akishita, Y. Ohsita, M. Murata
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引用次数: 1

摘要

随着互联网服务的普及,网络的功耗不断增加,已成为一个严重的问题。随着环境的变化,人们提出了许多通过关闭不必要的网络设备来降低功耗的方法。这些方法只考虑简单的目标,如上电节点的数量和最大链路利用率。但是,在实际网络中,还需要考虑延迟、可靠性等多个复杂目标。本文提出了一种随环境变化处理多个复杂目标的网络节电方法。在该方法中,我们存储候选网络配置,并根据环境变化对其进行演化。然后,从候选网络配置中选择网络配置。我们结合了两种方法来改进网络配置。第一种方法基于帕累托最优,在考虑多目标的情况下,对网络结构进行演化,使其接近于帕累托最优解。另一种方法是基于网络配置的多样性。通过存储不同的网络配置,我们可以处理重大的环境变化。通过仿真对该方法进行了验证,结果表明该方法在不违反约束的情况下,随着交通流量的变化而降低了系统功耗。此外,我们还证明了我们的方法可以在故障情况下保持连通性,并且在故障发生后很快恢复性能和低功耗。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Network power saving based on Pareto optimal control with evolutionary approach
The power consumption of networks has been increasing as the service over the Internet becomes popular, and has become a serious problem. Many methods to reduce the power consumption by shutting down unnecessary network devices following the environmental changes have been proposed. These methods consider only simple objectives such as the number of powered-on nodes and the maximum link utilization. However, multiple complex objectives such as delay and reliability should be also considered in the actual network. In this paper, we propose a network power saving method that handles multiple complex objectives, following the environmental changes. In this method, we store the candidate network configurations, and evolve them, following the environmental changes. Then, we select the network configuration from the candidate network configurations.We combine two approaches to evolve the network configurations. The first approach is based on Pareto optimal, and evolves the network configurations so as to be close to the Pareto optimal solutions, considering multiple objectives. Another approach is based on the diversity of the network configurations. By storing the diverse network configurations, we can handle the significant environmental changes. We evaluate our method by simulation, and demonstrate that our method reduces the power consumption without violating the constraints, following the traffic changes. In addition, we also demonstrate that our method can keep the connectivity in case of failures, and recover the performance and the small power consumption soon after the failure occurs.
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