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A dynamic compact thermal model for data center analysis and control using the zonal method and artificial neural networks

机译:使用区域法和人工神经网络的数据中心分析和控制的动态紧凑热模型

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摘要

Full-scale data center thermal modeling and optimization using computational fluid dynamics (CFD) is generally an extremely time-consuming process. This paper presents the development of a velocity propagation method (VPM) based dynamic compact zonal model to efficiently describe the airflow and temperature patterns in a data center with a contained cold aisle. Results from the zonal model are compared to those from full CFD simulations of the same configuration. A primary objective of developing the compact model is real-time predictive capability for control and optimization of operating conditions for energy utilization. A scheme is proposed that integrates zonal model results for temperature and air flow rates with a proportional-integral-derivative (PID) controller to predict and control rack inlet temperature more precisely. The approach also uses an Artificial Neural Network (ANN) in combination with a Genetic Algorithm (GA) optimization procedure. The results show that the combined approach, built on the VPM based zonal model, can yield an effective real-time design and control tool for energy efficient thermal management in data centers.
机译:使用计算流体动力学(CFD)进行大规模数据中心热建模和优化通常是非常耗时的过程。本文介绍了基于速度传播方法(VPM)的动态紧凑区域模型的开发,该模型可有效地描述包含冷通道的数据中心中的气流和温度模式。将来自区域模型的结果与来自相同配置的完整CFD模拟的结果进行比较。开发紧凑模型的主要目标是实时预测功能,用于控制和优化能源利用的运行条件。提出了一种方案,该方案将温度和空气流速的区域模型结果与比例积分微分(PID)控制器相集成,以更精确地预测和控制机架入口温度。该方法还使用了人工神经网络(ANN)和遗传算法(GA)优化程序。结果表明,基于基于VPM的区域模型的组合方法可以为数据中心的能源高效热管理提供有效的实时设计和控制工具。

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