基于组件模型的负载相关数据中心能效度量

Daniel Schlitt, W. Nebel
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引用次数: 9

摘要

通用的数据中心能源效率度量仅在较高的抽象级别上工作,并且需要实际测量的值。有了这些指标,就不可能分别确定效率不足的来源,或者探索配置或体系结构中可能的更改。在本文中,介绍了解决这些缺点的替代度量。该度量利用预先表征的负荷相关分量模型,对任意输入数据的效率进行估计。结果在不同的数据中心配置之间以及数据中心站点之间具有可比性,并且可以通过提取中间结果来确定低效率的原因。
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Load dependent data center energy efficiency metric based on component models
Common data center energy efficiency metrics only work on a high abstraction level and require actually measured values. With these metrics, it is not possible to identify the sources of shortcomings in efficiency or to explore possible changes in configuration or architecture, respectively. In this paper, an alternative metric addressing these drawbacks is introduced. The metric makes use of pre-characterized load dependent component models and estimates efficiency for arbitrary input data. The results are objectively comparable between different data center configurations as well as between data center sites, and reasons for inefficiencies may be identified by extracting intermediate results.
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