开发一种快速、经济、无创的数据中心热图导出方法

Michael Jonas, G. Varsamopoulos, S. Gupta
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引用次数: 9

摘要

正在进行的研究已经证明了在数据中心放置热感知负载的潜在好处,既可以降低冷却成本,又可以降低组件故障率。然而,热感知负载放置技术尚未在现有数据中心广泛部署。这主要是因为它们依赖于数据中心的热图或概要,其推导是数据中心操作的中断过程。我们提出了一种无创生成热图的解决方案;它包括用实际数据中心运行中观察到的数据训练神经网络。我们的研究结果表明,收集数据和选择训练集是一个快速的过程,而没有隐藏层的神经网络获得了最小的均方误差。
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On developing a fast, cost-effective and non-invasive method to derive data center thermal maps
Ongoing research has demonstrated the potential benefits of thermal-aware load placement in data centers to both reduce cooling costs and component failure rates. However, thermal-aware load placement techniques have not been widely deployed in existing data centers. This is mainly because they rely on a thermal map or profile of the data center, the derivation of which is an interruptive process to the data center operation. We propose a noninvasive solution of producing a thermal map; it consists of training a neural network with observed data from actual data center operation. Our results show that gathering the data and selecting a training set is a fast process, while the neural network with no hidden layers achieves the lowest mean squared error.
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