首页> 外文期刊>Physica, A. Statistical mechanics and its applications >Prediction of the pressure drop for CuO/(Ethylene glycol-water) nanofluid flows in the car radiator by means of Artificial Neural Networks analysis integrated with genetic algorithm
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Prediction of the pressure drop for CuO/(Ethylene glycol-water) nanofluid flows in the car radiator by means of Artificial Neural Networks analysis integrated with genetic algorithm

机译:通过遗传算法集成的人工神经网络分析预测汽车辐射器中CuO /(乙二醇 - 水)纳米流体流动的压降

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In this investigation, neural networks were used to predict pressure drop of CuO-based nanofluid in a car radiator. For this purpose, the neural network with the multilayer perceptron structure was used to formulate a model for estimating the pressure drop In this way, different concentrations of copper oxide-based nanofluid were prepared. The base fluid was the mixture of ethylene glycol and pure water (60:40 wt%) which usually used as the cooling fluid in automotive industries. The prepared nanofluid samples were used in a car radiator and the pressure drop of nanofluid flows in the system at different Reynolds were measured. The main purpose of this study was developing the optimized neural networks for predicting the pressure drop of the system with sufficient precision. For the aim of designing the model's structure, different neural networks were constructed and applied by changing the adjustable parameters (containing the transfer function, training rule, momentum's amount, hidden layers' number and the neurons' number in hidden layer). In each case, the structure with the highest correlation coefficient was chosen as the final model. The selection of each parameters in the neural network model requires repeated tests and errors. So, genetic algorithm was used to optimize these parameters. Additionally, the pressure drop in the radiator of this method was investigated in neural network optimization. The outcomes indicated which a high accuracy in modeling and estimating the pressure drop of nanofluid flows in the studied system can be achieved by the neural network. (C) 2020 Elsevier B.V. All rights reserved.
机译:在该研究中,神经网络用于预测汽车散热器中基于CuO的纳米流体的压降。为此目的,具有多层感知结构的神经网络用于制备以这种方式估计压降的模型,制备不同浓度的氧化铜基氧化物纳米流体。基础液是乙二醇和纯水(60:40wt%)的混合物,其通常用作汽车行业中的冷却液。将制备的纳米流体样品用于汽车辐射器中,并测量在不同雷诺的系统中纳米流体流动的压降。本研究的主要目的是开发优化的神经网络,用于预测系统的压降,具有足够的精度。为了设计模型的结构,通过改变可调节参数(包含传输函数,培训规则,动量,隐藏层)中的可调参数来构建和应用不同的神经网络。在每种情况下,选择具有最高相关系数的结构作为最终模型。神经网络模型中的每个参数的选择需要重复的测试和错误。因此,遗传算法用于优化这些参数。另外,在神经网络优化中研究了该方法的散热器中的压降。结果表明,通过神经网络可以实现所研究和估算研究中纳米流体流动压降的高精度。 (c)2020 Elsevier B.v.保留所有权利。

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