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Predicting the efficiency of CuO/water nanofluid in heat pipe heat exchanger using neural network

机译:利用神经网络预测热管换热器中CuO /水纳米流体的效率

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In this study, the CuO/water nanofluid was used to increase the performance of heat pipe heat exchanger. The results showed that the rise in the input power of the heat pipe leads to increase the wall temperature of the pipe, whereas augmenting the concentration of nanoparticles leads to reduce the wall temperature and decrease the temperature difference between the evaporator and the condenser. Using the nanoparticles increases the thermal conductivity of the base fluid and minimizes the temperature gradient within it. Therefore, the thermal power of the heat pipe increases and its resistance decreases. Also, the results showed that with increasing evaporation filling ratio, the resistance reduces (by Fr = 0.45) and then increases. Additionally, experimental data was compared with published data for the heat pipe in order to accurately evaluate the results obtained in this study. The results showed that the measured data are highly accurate. Also, the heat conductivity resistance equation was calculated based on the experimental data. In the next step, the model of neural networks was used to predict thermal performance, FR, the concentration of nanofluid and input power. The results showed that the network with an accuracy of 0.9938 is able to predict the heat transfer coefficient. A review of the predicted and experimental results for the verification part indicated that the residuals are scattered around the zero axis.
机译:在这项研究中,使用CuO /水纳米流体来提高热管热交换器的性能。结果表明,热管输入功率的增加导致管壁温度的升高,而纳米颗粒浓度的增加导致管壁温度的降低和蒸发器与冷凝器之间的温差的减小。使用纳米颗粒增加了基础流体的导热率,并使其中的温度梯度最小化。因此,热管的热功率增加并且其电阻减小。而且,结果表明,随着蒸发填充率的增加,电阻减小(Fr = 0.45),然后增大。此外,将实验数据与热管的已发布数据进行了比较,以准确评估在这项研究中获得的结果。结果表明,测得的数据是高度准确的。此外,基于实验数据计算出导热系数方程。下一步,将神经网络模型用于预测热性能,FR,纳米流体的浓度和输入功率。结果表明,精度为0.9938的网络能够预测传热系数。对验证部分的预测和实验结果的回顾表明,残差围绕零轴散布。

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