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A CONTROL-ORIENTED HYBRID MODEL FOR A DIRECT EXPANSION AIR CONDITIONING SYSTEM

机译:直接膨胀空调系统的面向控制的混合模型

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摘要

In addition to indoor air temperature, indoor air humidity is also an important parameter for building up a thermally appropriate artificial indoor environment. However, introducing air humidity as a controlled parameter in addition to air temperature would significantly increase the difficulty to develop a control-oriented model for building air conditioning systems. This is particular true for direct expansion (DX) air conditioning (A/C) systems, whose operational parameters are highly coupled and behave non-linearly and influenced by the controlled parameters, i.e., air temperature and humidity. Neither physical modelling approach nor artificial neural network (ANN) modelling approach could solely satisfy the requirement, in terms of accuracy and sensitivity, for simultaneous control of air temperature and humidity using a DX A/C system, without any inadequacies. In this paper, a hybrid modelling approach is proposed, which uses the physical modelling approach to simulate the performance of evaporator for accurately catching the cooling and dehumidification processes under various working conditions and uses ANN to simulate all other components of a DX A/C system for reduced calculation efforts. By such a hybrid modelling approach, the advantage of simplicity of an ANN-based sub-model could be utilized and the disadvantage of it that do not allow to accurately extrapolate beyond the range of the data used for training/estimating the model parameters could be avoided.
机译:除了室内空气温度之外,室内空气湿度也是建立适合热环境的人造室内环境的重要参数。然而,除了空气温度以外,引入空气湿度作为控制参数将大大增加开发用于建筑空调系统的面向控制模型的难度。对于直接膨胀(DX)空调(A / C)系统而言尤其如此,其操作参数高度耦合且呈非线性行为,并受受控参数(即空气温度和湿度)的影响。物理建模方法和人工神经网络(ANN)建模方法都不能完全满足使用DX A / C系统同时控制空气温度和湿度的准确性和灵敏度的要求,而没有任何不足之处。本文提出了一种混合建模方法,该方法使用物理建模方法来模拟蒸发器的性能,以准确地捕获各种工况下的冷却和除湿过程,并使用ANN来模拟DX A / C系统的所有其他组件减少计算工作量。通过这种混合建模方法,可以利用基于ANN的子模型的简单性的优点,而其缺点是不允许准确地推断超出用于训练/估计模型参数的数据范围。避免。

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