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Neural Network Modeling of the Ground Thermal Conductivity for Ground Source Heat Pump Applications

机译:地源热泵应用的地面导热率的神经网络建模

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摘要

The ground thermal conductivity is a key parameter for the analysis of heat transfer between the soil and borehole heat exchangers in a ground source heat pump (GSHP) system. At present, besides in-situ thermal response tests (TRTs), the laboratory analysis for geological samples is another major method to determine the ground thermal conductivity. In the present work, the thermal conductivities of ground samples from the Quaternary stratum in Tianjin were measured at laboratory using the thermal probes. Then, based on the experimental results, a generalized regression neural network (GRNN) model was presented to predict the ground thermal conductivity. Results showed that compared with the conventional regression model, the present GRNN model had better prediction accuracy, and can be used for the comparison and validation of in-situ TRT results during the GSHP applications.
机译:接地导热率是用于在地源热泵(GSHP)系统中的土壤和钻孔热交换器之间的传热分析的关键参数。目前,除原位热响应试验(TRTS)外,地质样品的实验室分析是确定地面导热率的另一种主要方法。在目前的工作中,使用热探针在实验室测量天津季度季度地层的地样品的热导体。然后,基于实验结果,提出了广义回归神经网络(GRNN)模型以预测地面导热率。结果表明,与传统回归模型相比,本GRNN模型具有更好的预测精度,并且可用于在GSHP应用期间的原位TRT的比较和验证。

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