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Towards Sustainable Cloud Computing Reducing Electricity Cost and Carbon Footprint for Cloud Data Centers through Geographical and Temporal Shifting of Workloads.

机译:迈向可持续的云计算,通过工作量的地理和时间转移降低云数据中心的电力成本和碳足迹。

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摘要

Cloud Computing presents a novel way for businesses to procure their IT needs. Its elasticity and on-demand provisioning enables a shift from capital expenditures to operating expenses, giving businesses the technological agility they need to respond to an ever-changing marketplace. The rapid adoption of Cloud Computing, however, poses a unique challenge to Cloud providers—their already very large electricity bill and carbon footprint will get larger as they expand; managing both costs is therefore essential to their growth.;This thesis squarely addresses the above challenge. Recognizing the presence of Cloud data centers in multiple locations and the differences in electricity price and emission intensity among these locations and over time, we develop an optimization framework that couples workload distribution with time-varying signals on electricity price and emission intensity for financial and environmental benefits. The framework is comprised of an optimization model, an aggregate cost function, and 6 scheduling heuristics.;To evaluate cost savings, we run simulations with 5 data centers located across North America over a period of 81 days. We use historical data on electricity price, emission intensity, and workload collected from market operators and research data archives. We find that our framework can produce substantial cost savings, especially when workloads are distributed both geographically and temporally—up to 53.35% on electricity cost, or 29.13% on carbon cost, or 51.44% on electricity cost and 13.14% on carbon cost simultaneously.
机译:云计算为企业提供了一种新颖的方式来满足其IT需求。它的弹性和按需配置可实现从资本支出到运营支出的转变,从而为企业提供了应对不断变化的市场所需的技术敏捷性。但是,云计算的快速采用给云提供商带来了独特的挑战-他们已经非常庞大的电费和碳足迹将随着它们的扩展而变得更大;因此,管理这两种成本对于它们的增长至关重要。认识到多个地方都存在Cloud数据中心,以及这些位置之间以及随着时间的推移,电价和排放强度的差异,我们开发了一个优化框架,该模型将工作负载分配与时价信号相结合,以实现金融和环境好处。该框架由一个优化模型,一个总成本函数和6个调度启发法组成。为了评估成本节省,我们在81天的时间内对位于北美的5个数据中心进行了模拟。我们使用从市场运营商和研究数据档案库收集的有关电价,排放强度和工作量的历史数据。我们发现,我们的框架可以节省大量成本,尤其是在按地理区域和时间分布工作负荷时–电力成本最高为53.35%,碳成本最高为29.13%,电成本最高为51.44%,碳成本最高为13.14%。

著录项

  • 作者

    Le, Trung.;

  • 作者单位

    University of Ottawa (Canada).;

  • 授予单位 University of Ottawa (Canada).;
  • 学科 Engineering Computer.;Computer Science.;Information Technology.
  • 学位 M.Sc.
  • 年度 2012
  • 页码 121 p.
  • 总页数 121
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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