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Study on high-precision identification method of ground thermal properties based on neural network model

机译:基于神经网络模型的地热处理高精度识别方法研究

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Accurately estimating ground thermal properties from thermal response tests (TRTs) is critical to design ground source heat pump system (GSHPS). The traditional method may lead to large errors due to the difference between the heat transfer process described by identification models and actual situation. To avoid it, this paper proposes a high-precision identification method based on artificial neural network (ANN), which can directly establish the nonlinear mapping relationship between thermal response pa-rameters (TRPs) and ground thermal properties. Through the inversed orthogonal method, the training and validation samples are obtained from a large number of TRTs on a full-scale simulation platform that is verified by experiments. The estimation accuracy of traditional method and ANN under different ground thermal properties is studied. The results indicate that the estimation accuracy of traditional method varies greatly under different ground thermal properties, and the relative errors of identifying thermal conductivity and volumetric heat capacity vary from-3.61% to 60.14% and-52.06%-110.20% respectively. The estimation accuracy of ANN is almost not affected by the ground thermal properties, and the corresponding errors range from-7.78% to 0.28% and-1.75%-15.6% respectively. This paper provides a new perspective to reduce error caused by identification model. (C) 2020 Elsevier Ltd. All rights reserved.
机译:从热响应测试(TRTS)精确地估计地热性质对于设计地源热泵系统(GSHPS)至关重要。由于识别模型和实际情况描述的传热过程之间的差异,传统方法可能导致大的误差。为了避免它,本文提出了一种基于人工神经网络(ANN)的高精度识别方法,其可以直接建立热响应Pa rameters(TRP)和地热性能之间的非线性映射关系。通过反向正交方法,训练和验证样本是在通过实验验证的全规模仿真平台上的大量TRTS获得。研究了传统方法和ANN在不同地热性质下的估计准确性。结果表明,传统方法的估计精度在不同的地面热性质下变化大,以及鉴定导热率和体积热容的相对误差在3.61%至60.14%和-52.06%-110.20%。 ANN的估计精度几乎不受地面热性能的影响,相应的误差分别为-7.78%至0.28%和-1.75%-15.6%。本文提供了一种新的视角,可以减少由识别模型引起的误差。 (c)2020 elestvier有限公司保留所有权利。

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