数据中心应用中横流换热器瞬态特性的数值和紧凑模型

M. del Valle, A. Ortega
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引用次数: 7

摘要

数据中心中使用的混合空气/液体冷却系统可以使用各种方法实现本地化,按需冷却或“智能冷却”,例如后门热交换器,顶部冷却系统和排冷却系统。这些系统仅在需要时提供局部冷却,从而提供了实现更高能源效率的潜力,从而减少了传统系统特有的过度供应。所有混合冷却系统的核心是一个空气-液体交叉流热交换器,它通过调节液体或空气的流动或温度来调节系统提供的冷却量。了解热交换器的瞬态响应对系统的精确控制至关重要。本工作的目的是利用人工神经网络(ANN)开发后门热交换器紧凑型模型。采用有限差分(FD)模型研究了换热器的瞬态特性。在换热器模型中引入不同的温度扰动,研究其瞬态响应。然后用有限的不同结果来训练一个神经网络的紧凑模型。两种模型在精度和计算资源方面进行了比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Numerical and compact models to predict the transient behavior of cross-flow heat exchangers in data center applications
Hybrid air/liquid cooling systems used in data centers enable localized, on-demand cooling, or “smart cooling” using various approaches such as rear door heat exchangers, overhead cooling systems and in row cooling systems. These systems offer the potential to achieve higher energy efficiency by providing local cooling only when it is needed, thereby reducing the overprovisioning that is endemic to traditional systems. At the heart of all hybrid cooling systems is an air to liquid cross flow heat exchanger which regulates the amount of cooling that the system provides by modulating the liquid or air flows or temperatures. Understanding the transient response of the heat exchanger is crucial for the precise control of the system. The aim of this work is the development of a rear door heat exchanger compact model using Artificial Neural Networks (ANN). The transient behavior of the heat exchanger is studied using a Finite Difference (FD) model. Different temperatures perturbations are introduced in the heat exchanger model to study its transient response. The finite different results are then used to train an ANN compact model. Both models are compared in terms of accuracy and computational resources.
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