基于人工神经网络的架空数据中心多空冷机组控制策略预测

V. Simon, Ashwin Siddarth, D. Agonafer
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引用次数: 4

摘要

数据中心冷却系统由系统的层次结构组成,这些系统具有专用的控制算法来规定其运行状态。在非线性动态系统的集合中,存在广泛的空间和时间参数空间,每个系统都执行一个控制任务,而全局目标是将整个系统驱动到最佳运行状态,即在所需机架入口温度下的最小总运行功率。当然,在时间尺度上优化工作负载迁移是有益的,但解决在设计点运行的冷却系统的不稳定性有助于理解整个系统,并做出预测,以制定更好的控制策略。有几种技术可用于真实地捕捉和预测。数据驱动建模/机器学习就是这样一种方法,与其他方法(如验证CFD模拟/实验设置)相比,它在成本和时间方面都更便宜。本研究的目的是开发一个控制框架,该框架基于使用人工神经网络(ANN)等机器学习技术做出的预测,以在热通道包含的架空地板数据中心中操作多个机房空调机组(CRAC)或简单的空气冷却机组(ACU)。本文重点介绍了从众多CFD模拟(场景)中收集训练数据集的方法,以训练人工神经网络模型并以最小的误差进行预测。根据acu的位置及其气流行为,每个机架具有一定百分比的影响(区域)。考虑到最大CPU利用率和冷却供应,使用稳态CFD模拟来映射这些区域。使用此映射,可以针对ITE机架并给予不同的工作负载,以强制负责供应的相应ACU在设置点上运行。使用具有固定边界和约束的相同CFD模型模拟了许多这样的场景。使用从CFD结果中收集的大量数据样本,对人工神经网络进行训练,以预测与所需ACU激活相对应的值。这种高效的控制网络将最大限度地减少过度冷却。利用验证的预测点来建立控制框架,使冷却系统快速达到工作点。这些模型可以在实时数据中心中使用;训练数据基于内部传感器值。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Artificial Neural Network Based Prediction of Control Strategies for Multiple Air-Cooling Units in a Raised-floor Data Center
A data center cooling system consists of a hierarchy of systems with dedicated control algorithms dictating their operational states. There exists a wide range in spatial and temporal parameter space in an ensemble of non-linear dynamic systems, each executing a control task, while the global objective is to drive the overall system to an optimum operating condition i.e. minimum total operational power at desired rack inlet temperatures. Certainly, it is beneficial in optimizing workload migration at temporal scales but, solving the instability of the cooling systems operating at design points helps in understanding the whole system and make predictions to have better control strategies. Several techniques are available to realistically capture and make predictions. Datadriven modelling/Machine learning is one such method that is less expensive in terms of cost and time compared to other methods like validated CFD simulation/experimental setup.The objective of this study is to develop a control framework based on predictions made using machine learning techniques such as Artificial Neural Network (ANN) to operate multiple Computer Room Air Conditioning Units (CRAC) or simply Air-Cooling Units (ACU) in a hot-aisle contained raised floor datacenter. This paper focuses on the methodology of gathering training datasets from numerous CFD simulations (Scenarios) to train the ANN model and make predictions with minimal error.Each rack has a percentage of influence (zones) based on the placement of ACUs and their airflow behavior. These zones are mapped using steady state CFD simulation considering maximum CPU utilization and cooling provisioning. Using this map, ITE racks are targeted and given varying workload to force the corresponding ACU that is responsible for provisioning, to operate at set points. Number of such scenarios are simulated using the same CFD model with fixed bounds and constraints. Using large samples of data collected from CFD results, the ANN is trained to predict values that correspond to the activation of the desired ACU. Such efficient control network would minimize excessive cooling. The validated prediction points are used to model a control framework for the cooling system to quickly reach the operating point. These models can be used in real-time data centers provided; the training data is based on in-house sensor values.
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