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Measurement of the dynamic viscosity of hybrid engine oil -Cuo-MWCNT nanofluid, development of a practical viscosity correlation and utilizing the artificial neural network

机译:混合动力机油-Cuo-MWCNT纳米流体动态粘度的测量,实用粘度相关性的开发以及利用人工神经网络

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The main objectives of this study have been measurement of the dynamic viscosity of CuO-MWCNT_s/SAE 5w-50 hybrid nanofluid, utilization of artificial neural networks (ANN) and development of a new viscosity model. The new nanofluid has been prepared by a two-stage procedure with volume fractions of 0.05, 0.1, 0.25, 0.5, 0.75 and 1%. Then, utilizing a Brookfield viscometer, its dynamic viscosity has been measured for temperatures of 5,15,25,35,45, 55 ℃. The experimental results demonstrate that the viscosity increases by increasing the nanoparticles volume fraction and decreases by increasing temperature. Based on the experimental data the maximum and minimum nanofluid viscosity enhancements, when the volume fraction increases from 0.05 to 1, are 35.52% and 12.92% for constant temperatures of 55 and 15 ℃, respectively. The higher viscosity of oil engine in higher temperatures is an advantage, thus this result is important. The measured nanofluid viscosity magnitudes in various shear rates show that this hybrid nanofluid is Newtonian. An ANN model has been employed to predict the viscosity of the CuO-MWCNTs/SAE 5w-50 hybrid nanofluid and the results showed that the ANN can estimate the viscosity efficiently and accurately. Eventually, for viscosity estimation a new temperature and volume fraction based third-degree polynomial empirical model has been developed. The comparison shows that this model is in good agreement with the experimental data.
机译:这项研究的主要目的是测量CuO-MWCNT_s / SAE 5w-50杂化纳米流体的动态粘度,利用人工神经网络(ANN)并开发新的粘度模型。新的纳米流体已通过两步法制备,体积分数为0.05、0.1、0.25、0.5、0.75和1%。然后,利用布鲁克菲尔德粘度计,在5、15、25、35、45、55℃的温度下测量其动态粘度。实验结果表明,粘度随着纳米颗粒体积分数的增加而增加,而随着温度的升高而减小。根据实验数据,在55和15℃的恒定温度下,当体积分数从0.05增加到1时,最大和最小纳米流体粘度增加分别为35.52%和12.92%。较高温度下机油发动机的较高粘度是一个优点,因此此结果很重要。在各种剪切速率下测得的纳米流体粘度大小表明该杂化纳米流体是牛顿的。采用人工神经网络模型预测了CuO-MWCNTs / SAE 5w-50杂化纳米流体的黏度,结果表明该人工神经网络可以有效,准确地估计黏度。最终,为了进行粘度估计,已经开发了基于温度和体积分数的新的三次多项式经验模型。比较表明,该模型与实验数据吻合良好。

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