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Estimation of thermal conductivity of CNTs-water in low temperature by artificial neural network and correlation

机译:人工神经网络估计碳纳米管-水的低温热导率及相关性

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摘要

An accurate artificial neural network (ANN) model and new correlation are developed to predict thermal conductivity of functionalized carbon nanotubes (MWNT-10 nm in diameter)-water nanofluid based on experimental data. Experimental values of thermal conductivity are in six concentrations of nanoparticles from 0.005% up to 1.5%. The temperatures were changed within 10-60 ℃. In order to estimate the thermal conductivity, a feedforward three-layer neural network is utilized. The obtained results exhibited that the new correlation and ANN model have a good agreement with the experimental data. The maximum values of deviation and mean square error of neural network outputs were 2% and 8.2E-05, respectively. The findings illustrated that the artificial neural network can estimate and model the thermal conductivity of CNTs-water nanofluid very efficiently and accurately.
机译:建立了精确的人工神经网络(ANN)模型和新的相关性,以根据实验数据预测功能化碳纳米管(直径MWNT-10 nm)-水纳米流体的热导率。热导率的实验值是从0.005%到1.5%的六种纳米颗粒浓度。温度在10-60℃范围内变化。为了估计热导率,使用了前馈三层神经网络。所得结果表明,新的相关性和人工神经网络模型与实验数据吻合良好。神经网络输出的最大偏差和均方误差分别为2%和8.2E-05。研究结果表明,人工神经网络可以非常有效和准确地估算和建模CNTs-水纳米流体的热导率。

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