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Thermal Resistance Modeling of Oscillating Heat Pipes for Nanofluids by Artificial Intelligence Approach

机译:人工智能方法纳米流体振荡热管的热阻建模

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In this study, thermal resistance of a closed-loop oscillating heat pipe (OHP) is investigated using experimental tests and artificial intelligence methods. For this target, gamma Fe2O3 and Fe3O4 nanoparticles are mixed with the base fluid. Also, intelligent models are developed to predict the thermal resistance of the OHP. These models are developed based on the heat input into evaporator section, the thermal conductivity of working fluids, and the ratio of the inner diameter to length of OHP. The intelligent methods are multilayer feedforward neural network (MLFFNN), adaptive neuro-fuzzy inference system (ANFIS) and group method of data handling (GMDH) type neural network. Thermal resistance of the heat pipe (as a measure of thermal performance) is considered as the target. The results showed that using the nanofluids as working fluid in the OHP decreased the thermal resistance, where this decrease for Fe3O4/water nanofluid was more than that of gamma Fe2O3/ water. The intelligent models also predicted successfully the thermal resistance of OHP with a correlation coefficient close to 1. The root-mean-square error (RMSE) for MLFFNN, ANFIS, and GMDH models was obtained as 0.0508, 0.0556, and 0.0569 (degrees C/W) (for the test data), respectively.
机译:在该研究中,使用实验测试和人工智能方法研究了闭环振荡热管(OHP)的热阻。对于该靶,将γF2 O 3和Fe 3 O 4纳米颗粒与基础流体混合。此外,开发了智能模型以预测OHP的热阻。这些型号基于进入蒸发器部分的热输入,工作流体的导热率和内径与OHP长度的比率开发。智能方法是多层前馈神经网络(MLFFNN),自适应神经模糊推理系统(ANFIS)和数据处理(GMDH)类型神经网络的组方法。热管的热阻(作为热性能的量度)被认为是目标。结果表明,使用纳米流体作为OHP中的工作流体降低了热阻,其中Fe3O4 /水纳米流体的这种降低大于γF2O3/水的含量。智能模型还预测了OHP的热阻,接近的相关系数。获得MLFFNN,ANFI和GMDH模型的根均方误差(RMSE),获得为0.0508,0.0556和0.0569(摄氏度/ w)分别(用于测试数据)。

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