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首页> 外文期刊>International journal of energy research >Exergy analysis of direct expansion solar-assisted heat pumps using artificial neural networks
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Exergy analysis of direct expansion solar-assisted heat pumps using artificial neural networks

机译:使用人工神经网络的直接膨胀太阳能辅助热泵的火用分析

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摘要

Artificial neural network (ANN) is applied for exergy analysis of a direct expansion solar-assisted heat pump (DXSAHP) in the present study. The experiments were conducted in a DXSAHP under the meteorological conditions of Calicut city in India. An ANN model was developed based on backpropagation learning algorithm for predicting the exergy destruction and exergy efficiency of each component of the system at different ambient conditions (ambient temperature and solar intensity). The experimental data acquired are used for training the network. The results showed that the network yields a maximum correlation coefficient with minimum coefficient of variance and root mean square values. The results confirmed that the use of an ANN analysis for the exergy evolution of DXSAHP is quite suitable.
机译:在本研究中,人工神经网络(ANN)用于直接膨胀太阳能辅助热泵(DXSAHP)的火用分析。实验是在DXSAHP中在印度卡利卡特市的气象条件下进行的。基于反向传播学习算法开发了一个神经网络模型,用于预测在不同环境条件(环境温度和太阳强度)下系统各组成部分的(火用)破坏和(火用)效率。获得的实验数据用于训练网络。结果表明,该网络产生了最大的相关系数,具有最小的方差系数和均方根值。结果证实,将神经网络分析用于DXSAHP的火用演化是非常合适的。

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