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NEURAL NETWORK MODELING IN MODEL-BASED CONTROL OF A DATA CENTER

机译:基于模型的数据中心控制中的神经网络建模

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This paper presents the development of a neural network model of the server temperature to be used in model-based control of a data center. Data centers provide the optimal environments for operation of servers and storage devices. Conventionally, computational uid dynamics (CFD) has been used to model the dynamic and complex environment of the data center. However, the drawback of this approach is its computational inefficiency. The effects of changing a single input may take an entire day to compute. Thus the CFD model is not well suited for model-based control. Instead, we propose to use an artificial Neural Network (NN) model which predicts server temperatures in significantly less time. In addition, this NN model has the capability of learning the environment in the data center by adapting its parameters in real time based on sensor data continuously taken from the data center. This work discusses the current development of the neural network, work being done at the University of Texas at Arlington, to include modeling of transient conditions, or time related changes, using data generated in a test bed Data Center at SUNY Binghamton.
机译:本文介绍了服务器温度的神经网络模型的开发,该模型将用于基于模型的数据中心控制。数据中心为服务器和存储设备的运行提供了最佳的环境。常规上,计算流体动力学(CFD)已用于对数据中心的动态和复杂环境进行建模。但是,这种方法的缺点是计算效率低下。更改单个输入的影响可能需要一整天才能计算出来。因此,CFD模型不适用于基于模型的控制。取而代之的是,我们建议使用人工神经网络(NN)模型,该模型可以在明显更少的时间内预测服务器温度。此外,此NN模型具有通过根据从数据中心连续获取的传感器数据实时调整其参数来学习数据中心环境的能力。这项工作讨论了神经网络的最新发展,该工作是在德克萨斯州大学阿灵顿分校进行的,其中包括使用SUNY Binghamton的测试台数据中心中生成的数据对瞬态条件或与时间相关的变化进行建模。

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