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Steady-state operating performance modelling and prediction for a direct expansion air conditioning system using artificial neural network

机译:基于人工神经网络的直接膨胀空调系统稳态运行性能建模与预测

摘要

A two-in two-out steady-state artificial neural network (ANN)-based model for an experimental variable speed direct expansion (DX) air conditioning (A/C) system has been developed for simulating its total output cooling capacity and equipment sensible heat ratio under different combinations of compressor and supply fan speeds. Experiments were carried out, and totally 169 sets of experimental data were obtained for ANN training and testing. An ANN-based model having the configuration of 2 neurons in the input layer, 2 neurons in the output layer and 6 neurons in each of the 2 hidden layers, i.e. 2-6-6-2 configuration, was thus developed. The ANN-based model developed can be used to predict the operating performance of the DX A/C system with a higher accuracy. It is expected that the model developed can help design a multivariable-input multivariable-output strategy to simultaneously control indoor air temperature and humidity.Practical applications: The work reported in this paper demonstrates that the operating performance of a DX A/C system under different compressor and supply fan speeds can well be represented using ANN model technique, as an alternative to traditional physical-based modelling techniques, with a higher predicting accuracy and less computational effort. The ANN-based model for the DX A/C system is expected to be very useful in developing an efficient control algorithm for simultaneous indoor temperature and humidity using the ANN technique.
机译:基于二进二出稳态人工神经网络(ANN)的模型用于实验变速直接膨胀(DX)空调(A / C)系统,以模拟其总输出制冷量和对设备敏感的模型压缩机和送风机转速不同组合下的热比。进行了实验,获得了169套用于ANN训练和测试的实验数据。因此,开发了一种基于ANN的模型,该模型具有在输入层中的2个神经元,在输出层中的2个神经元和在2个隐藏层的每一个中的6个神经元的配置,即2-6-6-2配置。所开发的基于ANN的模型可用于以更高的准确性预测DX A / C系统的运行性能。期望开发的模型可以帮助设计多变量输入多变量输出策略,以同时控制室内空气的温度和湿度。实际应用:本文报道的工作表明了DX A / C系统在不同条件下的运行性能。作为传统基于物理的建模技​​术的替代方法,可以使用ANN模型技术很好地表示压缩机和供应风扇的速度,并具有更高的预测精度和更少的计算量。 DX A / C系统的基于ANN的模型有望在使用ANN技术开发用于同时进行室内温度和湿度的有效控制算法中非常有用。

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