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Energy-Efficient Task Scheduling for Data Centers with Unstable Renewable Energy: A Robust Optimization Approach

机译:具有不稳定可再生能源的数据中心的节能任务调度:一种鲁棒的优化方法

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In the cloud computing era, the green Internet data centers are being restructured to allow high utilization of renewable energy so that the system becomes more environment friendly and cost effective. In this paper, we focus on the energy-efficient task scheduling problem in an Internet data center system powered by both conventional and renewable energies. An electricity cost minimization framework is built to intelligently schedule different tasks from different users on geo-distributed computing nodes. In such system, the indeterminate and intermittent renewable energy imposes huge scheduling challenges. To deal with the uncertain nature of renewable energy, a new flexible uncertainty model is developed. Specifically, reference distributions are introduced according to predictions and field measurements, and uncertainty sets are defined afterwards to confine the unstable renewable energy generations. The model allows the renewable energy generation distributions to fluctuate around their reference distributions. Chance constraint approximations and a robust optimization approach are proposed to first transform and then solve the energy-efficient task scheduling problem. Simulation experiments based on real-world data evaluate two different task scheduling strategies. Impacts of different parameters such as computing node number, task size, task number, electricity price traces and renewable energy generation traces are evaluated which indeed provide us some insights on how to build an energy-efficient Internet data center.
机译:在云计算时代,绿色互联网数据中心正在进行重组,以允许可再生能源的高利用率,从而使该系统对环境更加友好且更具成本效益。在本文中,我们重点研究由常规能源和可再生能源共同驱动的Internet数据中心系统中的节能任务调度问题。建立了电费最小化框架,以智能地调度地理分布计算节点上来自不同用户的不同任务。在这样的系统中,不确定且间歇的可再生能源给调度带来了巨大挑战。为了应对可再生能源的不确定性,开发了一种新的灵活不确定性模型。具体而言,根据预测和现场测量结果引入参考分布,然后定义不确定性集以限制不稳定的可再生能源发电。该模型允许可再生能源发电量分布围绕其参考分布波动。提出了机会约束近似和鲁棒优化方法,以首先进行变换,然后解决节能任务调度问题。基于实际数据的仿真实验评估了两种不同的任务调度策略。评估了不同参数(例如计算节点数量,任务大小,任务数量,电价轨迹和可再生能源发电轨迹)的影响,这确实为我们提供了有关如何构建节能互联网数据中心的一些见解。

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