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Local vs. integrated control of a variable refrigerant flow system using artificial neural networks

机译:使用人工神经网络的可变制冷剂流量系统的本地与集成控制

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摘要

Existing studies have treated variable refrigerant flow (VRF) control as a local control problem where control variables are determined using only local state information. This study investigates an integrated VRF control in which the VRF control actions are determined based on not only local information but also the dynamics of the room it serves. For this purpose, two artificial neural network simulation models were developed: one to predict indoor air temperature of the room and the other to predict the VRF's compressor power. The ANN simulation models were validated with 192 experiments conducted in an experimental chamber. The results revealed that the integrated control reduced cooling and compressor energy use of the VRF by 21.6% and 13.1%, respectively, compared to the local control. These energy savings were achieved because the integrated control ANN models were aware of the dynamic relationship between the VRF and the target room.
机译:现有研究将可变制冷剂流量(VRF)控制作为局部控制问题,其中仅使用局部态信息确定控制变量。 本研究调查了集成的VRF控制,其中VRF控制操作是基于本地信息而确定的,而且还确定其服务的房间的动态。 为此目的,开发了两个人工神经网络仿真模型:一个以预测房间的室内空气温度,另一个是为了预测VRF的压缩机功率。 ANN模拟模型用在实验室中进行的192实验验证。 结果表明,与局部对照相比,综合控制分别减少了vrf的冷却和压缩机能量使用21.6%和13.1%。 实现了这些节能,因为综合控制ANN模型意识到VRF与目标房间之间的动态关系。

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    Seoul Natl Univ Inst Engn Res 1 Gwanak Ro Seoul 08826 South Korea;

    Samsung Elect SW Dev Grp Digital Appliance Business 129 Samsung Ro Suwon 16677 South Korea;

    Samsung Elect SW Dev Grp Digital Appliance Business 129 Samsung Ro Suwon 16677 South Korea;

    Seoul Natl Univ Coll Engn Inst Construct &

    Environm Engn Inst Engn Res Dept Architecture &

    Architectural E 1 Gwanak Ro Seoul 08826 South Korea;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 建筑基础科学;
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