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Experimental performance analysis of a multiple-source and multiple-use heat pump system: a predictive ANN model of sky-source heat pump

机译:多源多用途热泵系统的实验性能分析:天源热泵的预测ANN模型

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In this study, an artificial neural network (ANN) was used to model the thermal performance of a novel direct-expansion solar-assisted sky-source heat pump (SSHP) during winter. The input parameters of the ANN take into account the weather conditions, water loop characteristics, and the compressor characteristics of the SSHP. The following four output parameters were adopted to evaluate the SSHP performance: the outlet water temperature of the water loop, electricity consumption, heat production, and the coefficient of performance. To increase the accuracy of the ANN and simultaneously investigate the effects of each of the input parameters on the performance of the SSHP, the combination of input parameters for the validation data set was varied in multiple case studies. Additionally, learning curves were introduced to clarify the relationship between the training data size and the generalization performance of the ANN. Finally, the ANNs with the best performance were selected and evaluated based on the test data set by using metrics such as the root mean square error. The reported results demonstrated that the ANN model has comparatively high SSHP winter performance prediction accuracy.
机译:在这项研究中,使用人工神经网络(ANN)来模拟新型直接膨胀太阳能辅助天源热泵(SSHP)在冬季的热性能。 ANN的输入参数考虑了天气状况,水循环特性和SSHP的压缩机特性。通过以下四个输出参数来评估SSHP性能:水环路的出水温度,电力消耗,热量产生和性能系数。为了提高ANN的准确性并同时调查每个输入参数对SSHP性能的影响,在多个案例研究中,对验证数据集的输入参数组合进行了更改。此外,引入了学习曲线以阐明训练数据大小与ANN泛化性能之间的关系。最后,通过使用诸如均方根误差之类的指标,根据测试数据集选择和评估性能最佳的人工神经网络。报道的结果表明,ANN模型具有较高的SSHP冬季表现预测准确性。

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