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A neural-network enhanced modeling method for real-time evaluation of the temperature distribution in a data center

机译:一种神经网络增强建模方法,用于数据中心温度分布的实时评估

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摘要

The thermal predicting/evaluating model of data centers is pivotal in designing their thermal control systems. The existing modeling methods are based on the computational fluid dynamics (CFD) simulations, which is accurate in modeling for a steady-state flow pattern but considerably time-consuming. Besides, the corresponding parameters of CFD have to be re-identified with the deviation of the flow field, which makes it extremely inefficient in real-time thermal control system design of data centers. This paper proposed a machine learning method to derive the fast-temperature evaluation model with a constructed artificial neural network. It learns the relationship between the flow patterns and model parameters based on the system thermal-physical analysis, which replaces the time-consuming CFD-based parameter identifying process. Then, the temperature evaluation is implemented under different flow patterns with the proposed neural-network enhanced modeling method. In the learning process, multi-type of neural networks, i.e., backpropagation network, radial basis function network and extreme learning machine, are considered and compared. The accuracy of the proposed model is validated by comparing with the pure CFD results as the satisfactory standard. With the efficiency and accuracy, the proposed modeling method is more suitable to design real-time controllers for data centers with changing flow fields.
机译:数据中心的热预测/评估模型在设计其热控制系统时是枢转的。现有的建模方法基于计算流体动力学(CFD)模拟,其在模型中适用于稳态流动图案,但相当耗时。此外,必须用流场的偏差重新识别CFD的相应参数,这使得数据中心的实时热控制系统设计中的实际热控制系统设计极低。本文提出了一种机器学习方法,用于使用构造的人工神经网络导出快速温度评估模型。它基于系统热物理分析来了解流模式和模型参数之间的关系,替换了耗时的基于CFD的参数识别过程。然后,在具有所提出的神经网络增强型建模方法的不同流动模式下实现温度评估。在学习过程中,考虑并比较了多种神经网络,即反向化网络,径向基函数网络和极端学习机。通过与纯CFD结果与令人满意的标准相比,通过与令人满意的标准进行比较来验证所提出的模型的准确性。凭借效率和准确性,所提出的建模方法更适合于使用更改流场的数据中心设计实时控制器。

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