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SUPPLY AIR TEMPERATURE PREDICTION IN AN AIR-HANDLING UNIT USING ARTIFICIAL NEURAL NETWORK

机译:使用人工神经网络供应空气处理单元中的空气温度预测

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Continuous provision of quality supply air to data center's IT pod room is a key parameter in ensuring effective data center operation without any down time. Due to number of possible operating conditions and non-linear relations between operating parameters make the working mechanism of data center difficult to optimize energy use. At present industries are using computational fluid dynamics (CFD) to simulate thermal behaviour for all types of operating conditions. The focus of this study is to predict Supply Air Temperature using Artificial Neural Network (ANN) which can overcome limitations of CFD such as high cost, need of an expertise and large computation time. For developing ANN, input parameters, number of neurons and hidden layers, activation function and the period of training data set were studied. A commercial CFD software package 6sigma room is used to develop a modular data center consisting of an IT pod room and an air-handling unit. CFD analysis is carried out for different outside air conditions. Historical weather data of 1 year was considered as an input for CFD analysis. The ANN model is "trained" using data generated from these CFD results. The predictions of ANN model and the results of CFD analysis for a set of example scenarios were compared to measure the agreement between the two. The results show that the prediction of ANN model is much faster than full computational fluid dynamics simulations with good prediction accuracy. This demonstrates that ANN is an effective way for predicting the performance of an air handling unit.
机译:持续提供质量供应空气到数据中心的IT Pod Room是确保无任何停机时间的有效数据中心操作的关键参数。由于操作参数之间可能的操作条件和非线性关系的数量使得数据中心的工作机制难以优化能量使用。目前的行业正在使用计算流体动力学(CFD)来模拟所有类型的操作条件的热行为。本研究的重点是使用人工神经网络(ANN)预测供应空气温度,这可以克服CFD的限制,例如高成本,需要专业知识和大计算时间。对于开发ANN,研究了输入参数,神经元数,神经元数,激活功能和训练数据集的数量。商业CFD软件包6Sigma室用于开发由其吊舱室和空气处理单元组成的模块化数据中心。 CFD分析用于不同的外部空气条件。历史天气数据为1年被视为CFD分析的投入。 ANN模型是使用从这些CFD结果生成的数据的“培训”。对ANN模型的预测和CFD分析的结果进行了比较了一组示例场景,以衡量两者之间的协议。结果表明,ANN模型的预测比具有良好预测精度的完整计算流体动力学模拟的速度要快得多。这表明ANN是预测空气处理单元的性能的有效方法。

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