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Hybrid model based refrigerant charge fault estimation for the data centre air conditioning system

机译:基于混合模型的数据中心空调系统的制冷剂电荷故障估计

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摘要

Accurate refrigerant charge fault estimation is important to ensure the efficient operation of air conditioning systems. This paper presents a novel hybrid model based refrigerant charge estimation approach. Firstly, an improved gray box model is presented, which integrates the key characteristic variables of sub-cooling temperature, superheat temperature, quality and pressure drop. Secondly, three extra variables having highest maximal information coefficients with the prediction residual are used to extend the gray box, and the robust machine learning model is developed using the gradient boosting decision tree algorithm. Then, a hybrid model is presented by combining the improved gray box and machine learning models. Finally, the prediction and generalization capacities of the proposed models under various operation conditions are validated using the experimental data. The results show that the hybrid charge fault estimation model has the best performance. Its overall prediction and generalization MREs are 2.53% and 3.09%, respectively. (C) 2019 Elsevier Ltd and IIR. All rights reserved.
机译:精确的制冷剂充电故障估计是确保空调系统的有效运行非常重要。本文提出了一种新型的基于混合模型的制冷剂估计方法。首先,提出了一种改进的灰色盒式模型,其集成了子冷却温度,过热温度,质量和压降的关键特征变量。其次,使用具有预测残差的最大最大信息系数的三个额外变量来扩展灰度盒,并且使用梯度升压决策树算法开发了鲁棒机学习模型。然后,通过组合改进的灰度盒和机器学习模型来提出混合模型。最后,使用实验数据验证了在各种操作条件下提出模型的预测和泛化能力。结果表明,混合电荷故障估计模型具有最佳性能。其整体预测和普遍化MRE分别为2.53%和3.09%。 (c)2019年Elsevier Ltd和IIR。版权所有。

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