服务器机架气流预测不同测量技术对直流气流管理的实验分析

Mohammad I. Tradat, Ghazal Mohsenian, Yaman M. Manaserh, B. Sammakia, Dave Mendo, H. Alissa
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引用次数: 6

摘要

数据中心冷却能源效率是现代大型数据中心成功运行的关键。2014年,美国数据中心的用电量估计为700亿千瓦时,约占美国总用电量的1.8%。考虑到冷却基础设施平均可以占数据中心总能耗的40%,这表明2014年数据中心冷却能耗约为280亿千瓦时。这些数字表明,改善气流管理以提高数据中心的冷却效率可以显著影响运营成本,并允许增加IT容量,从而延长数据中心的使用寿命。用于改善气流的一些方法包括但不限于热通道和冷通道密封、IT设备对齐和配置更改、旁路空气管理(例如电缆穿透)、再循环管理(例如下料板)。其他可用于提高冷却能效的方法包括空气和/或水边节能、变频驱动(VFD)和提高IT设备进气(送风)温度。大多数上述热管理技术集中于管理气流,以达到所需的服务器入口温度(供气操作设定点),而不是管理每个IT服务器应该接收的冷气量(CFM),以消除产生的热量。然而,气流对于量化IT设备的足够冷却同样重要,但是测量每个服务器和每个机架的气流更具挑战性。因此,作为测量这种气流的一种潜在选择,本研究中进行了基于实验的气流测量,以量化和比较不同设备之间的差异,包括商业流罩、叶片风速计和移动温度/速度网格(MTVM)。此外,还研究了测量位置(机架前/后)、IT设备/机架类型、机架位置和深度的影响。结果表明,与基于IT设备压力流量曲线的气流参考值相比,基于机架进出口平均温度的机架气流流量预测是最准确和实用的技术;另一方面,在机架进口面上使用流罩测量的流量报告比机架c1 -8的参考值低10%。在实际的数据中心中,使用通风罩来控制机架气流是不切实际的。因此,根据本研究中进行的比较,测量机架入口和出口的空气温度可能是预测实际机架气流速率(即机架入口的气流)的最简单方法,从而通过根据其流动曲线折衷IT设备需求的供应来管理气流。
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Experimental Analysis of Different Measurement Techniques of Server-Rack Airflow Predictions Towards Proper DC Airflow Management
Data center cooling energy efficiency is critical to the successful operation of modern large data centers. In 2014, data centers in the U.S. consumed an estimated 70 billion kWh of electricity, representing about 1.8% of total U.S. electricity consumption. Given that the cooling infrastructure can average 40% of the total data center energy consumption, suggests the data center cooling energy consumed in 2014 can be approximated at 28 billion kWh. These numbers indicate that improving airflow management in order to improve the efficiency of cooling in data centers can significantly affect operating costs and allow for increased IT capacity, thereby extending the life of the data center. Some of the methods used to improve airflow include, but are not limited to, hot aisle and cold aisle containment, IT equipment alignment and configuration changes, bypass air management (e.g. cable penetrations), recirculation management (e.g. blanking panels). Other methods that can be deployed to improve cooling energy efficiency include air and/or waterside economization, variable frequency drives (VFD), and increased IT equipment inlet (supply air) temperatures, etc.Most of the above-mentioned thermal management technologies concentrate on managing airflow to achieve the desired server inlet temperature (supply air operating set point) and not to manage the amount of cool air (CFM) that each IT server should receive in order to remove the produced heat. However, airflow is equally important for quantifying adequate cooling to IT equipment, but it is more challenging to measure the airflow per server and hence per rack. Therefore, as a potential option for measuring this airflow an experimental based airflow measurement was performed in this study to quantify and compare between different devices including commercial flow hood, vane anemometer, and Mobile Temperature/Velocity Mesh (MTVM). Furthermore, the effect of measurement location (rack front/rear), type of IT equipment/rack, rack location and depth were investigated. On one hand, the results revealed that the rack airflow rate prediction using average inlet/outlet temperature across the rack was the most accurate and practical technique when compared to airflow reference value which was based on IT equipment pressure-flowrate curve. On the other hand, the measured flow rate using the flow hood at rack inlet face reported a 10% off from the reference value for rack C 1-8. Using flow hood for rack airflow is impractical to be used in real data centers. Therefore and based on the conducted comparison in this study, measuring air temperature across the rack inlet and outlet could be the easiest method to predict the actual rack airflow rate (i.e. supply at rack intake) and hence manage the airflow by compromising the supply to the IT equipment demand based on their flow curves.
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