用于预测计算机服务器入口温度的数据中心气流模型

Raymond Lloyd, Jer Hayes, M. Rebow, Brian Norton
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引用次数: 3

摘要

数据中心约占。全球1.3%的电力消耗,其中高达50%的电力用于保持实际设备的冷却。这代表了一个巨大的机会,通过解决冷却系统的操作,重点放在热管理上,以减少数据中心的能源消耗。这项工作提出了一种新的数据中心气流模型(DCAM),用于服务器入口温度的温度预测。该模型是一个基于物理的模型,以湍流射流理论为基础,允许通过仅使用服务器前面的局部边界条件来减小解域大小。当前基于物理的建模方法需要整个数据中心房间的解决方案域,即使在局部区域发生小变化,在计算方面也是昂贵的。通过将解域和边界条件限制在局部水平,该模型专注于影响温度的气流混合,同时也简化了相关计算。DCAM模型没有通常数值计算的复杂性,依赖于计算网格大小,网格划分或需要解决全域解决方案。模型所需的输入边界条件可以由建筑管理系统(BMS)、配电单元(PDU)、传感器或来自其他建模环境的输出提供,这些环境仅在发生重大变化时需要更新。在真实世界数据中心验证的初步结果产生了1.2°C RMSE的总体预测误差。该模型可以实时执行,为实时监控应用提供了途径,作为空调机组优化控制的输入,并可以补充传感器网络。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A data centre air flow model for predicting computer server inlet temperatures
Data centres account for approx. 1.3% of the world's electricity consumption, of which up to 50% of that power is dedicated to keeping the actual equipment cool. This represents a huge opportunity to reduce data centre energy consumption by tackling the cooling system operations with a focus on thermal management. This work presents a novel Data Centre Air Flow Model (DCAM) for temperature prediction of server inlet temperatures. The model is a physics-based model under-pinned by turbulent jet theory allowing a reduction in the solution domain size by using only local boundary conditions in front of the servers. Current physics-based modeling approaches require a solution domain of the entire data centre room which is expensive in terms of computation even if a small change occurs in a localized area. By limiting the solution domain and boundary conditions to a local level, the model focuses on the airflow mixing that affects temperatures while also simplifying the related computations. The DCAM model does not have the usual complexities of numerical computations, dependencies on computational grid size, meshing or the need to solve a full domain solution. The input boundary conditions required for the model can be supplied by the Building Management System (BMS), Power Distribution Units (PDU), sensors, or output from other modeling environments that only need updating when significant changes occur. Preliminary results validated on a real world data centre yield an overall prediction error of 1.2° C RMSE. The model can perform in real-time, giving way to applications for real-time monitoring, as input to optimize control of air conditioning units, and can complement sensor networks.
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