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Extending the virtual refrigerant charge sensor (VRC) for variable refrigerant flow (VRF) air conditioning system using data-based analysis methods

机译:使用基于数据的分析方法扩展虚拟制冷剂充注传感器(VRC)以用于可变制冷剂流量(VRF)空调系统

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摘要

A proper refrigerant charge amount (RCA) prediction algorithm is important to air conditioning systems. In variable refrigerant flow (VRF) systems, the traditional virtual refrigerant charge (VRC) sensor models perform well at undercharge situations but produce large prediction errors at overcharge situations. When the refrigerant charge level (RCL) is over 90%, the correlation coefficient data-based method was introduced to select the additional input variables to modify the VRC models. Two data-based algorithms, multiple linear regression (MLR) and non-linear support vector regression (SVR), were used to improve the prediction performance. The prediction performance of the pure SVR model was also compared. Results reveal that the overall prediction errors for SVR based modified VRC model (SVR-VRC) is 5.53%, the minimum among the four models. The SVR-VRC model improves the VRC models and extends the application in the VRF system when only the system self-provided sensor measurements are used. (C) 2015 Elsevier Ltd. All rights reserved.
机译:适当的制冷剂充注量(RCA)预测算法对空调系统很重要。在可变制冷剂流量(VRF)系统中,传统的虚拟制冷剂充量(VRC)传感器模型在欠注情况下表现良好,但在过注情况下会产生较大的预测误差。当制冷剂充注量(RCL)超过90%时,引入基于相关系数数据的方法来选择其他输入变量以修改VRC模型。两种基于数据的算法,多元线性回归(MLR)和非线性支持向量回归(SVR),用于提高预测性能。还比较了纯SVR模型的预测性能。结果表明,基于SVR的改进VRC模型(SVR-VRC)的总体预测误差为5.53%,在四个模型中最低。当仅使用系统自行提供的传感器测量值时,SVR-VRC模型将改进VRC模型并扩展其在VRF系统中的应用。 (C)2015 Elsevier Ltd.保留所有权利。

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