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Artificial neural network models for depicting mass flow rate of R22, R407C and R410A through electronic expansion valves

机译:人工神经网络模型,用于描述通过电子膨胀阀的R22,R407C和R410A的质量流量

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摘要

The utilization of electronic expansion valves (EEVs) in refrigeration and air conditioning systems is increased for energy saving and comfort environmental. However, experimental data and refrigerant mass flow models through EEVs are very limited in open literature. In this study, a new technique using artificial neural network (ANN) is applied to depict the mass flow rates of R22 and its alternatives R407C and R410A flowing through EEVs based on the error back propagation learning algorithm. Two strategies are followed; the first is to construct individual ANN models for each refrigerant, and the second is to construct a generalized ANN model for the three investigated refrigerants. The experimental results from open literature are used to construct the ANN models. The ANN models results showed a good agreement with the corresponding experimental data. For individual models, the relative deviations for R22, R407C, and R410A are within +/- 0.7%, +/- 1.1%, and +/- 0.006%, respectively. While for generalized model, the relative deviations are within +/- 2.5%. Also the generalized model was tested out of its construction range in a predictive mode and it was found to be a reliable tool to estimate the refrigerants mass flow rates. (C) 2016 Elsevier Ltd and International Institute of Refrigeration. All rights reserved.
机译:电子膨胀阀(EEV)在制冷和空调系统中的利用率得到了提高,以实现节能和舒适的环境。但是,在开放文献中,通过EEV的实验数据和制冷剂质量流量模型非常有限。在这项研究中,基于误差反向传播学习算法,应用一种使用人工神经网络(ANN)的新技术来描述流经EEV的R22及其替代品R407C和R410A的质量流率。遵循两种策略;第一种是为每种制冷剂构建单独的ANN模型,第二种是为三种研究的制冷剂构建广义ANN模型。开放文献的实验结果被用于构建人工神经网络模型。人工神经网络模型的结果与相应的实验数据吻合良好。对于单个模型,R22,R407C和R410A的相对偏差分别在+/- 0.7%,+ /-1.1%和+/- 0.006%之内。对于广义模型,相对偏差在+/- 2.5%以内。此外,还以预测模式对广义模型的构造范围进行了测试,发现该模型是估算制冷剂质量流量的可靠工具。 (C)2016 Elsevier Ltd和国际制冷学会。版权所有。

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