基于casson的混合纳米流体在具有热源和汇的可渗透拉伸表面上的热分析:一种新的随机方法

IF 2.5 4区 工程技术 Q3 CHEMISTRY, PHYSICAL
K. M. Nihaal, U. S. Mahabaleshwar, D. Laroze, J. Wang
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引用次数: 0

摘要

混合卡森纳米颗粒由于其增强的热学和流变性能而引起了研究人员的极大兴趣。利用人工神经网络来描述和预测热行为可以极大地提高对纳米流体传热模型的理解。基于这一动机,本研究旨在利用Runge Kutta Fehlberg的第45条方法和人工神经网络(ANN)来研究混合卡森纳米流体在可渗透拉伸多孔表面上的传热。利用相似变换将控制偏微分方程化为常微分方程,并采用Runge Kutta Fehlberg第45方法进行数值求解。各种参数对各自的速度和温度分布的影响进行了分析和图形化显示。随着Casson参数和孔隙度参数的增大,流体流速减慢,而随着热源/汇参数的增大,换热量增加。由于在整个测试、验证和训练过程中具有令人钦佩的准确性,并且与数值结果进行了比较,ANN模型被验证为最令人信服的模型。人工神经网络的预测与观测到的数值数据紧密匹配,这意味着该模型已经有效地学习了数据集中的潜在联系。目前的研究结果可以用于开发更有效的生物医学设备,如药物输送系统和人工器官中的血流模拟。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Thermal Analysis of Casson-Based Hybrid Nanofluid Flow on a Permeable Stretching Surface with Heat Source and Sink: A New Stochastic Approach

Hybrid Casson nanoparticles are quite interesting to researchers due to their enhanced thermal and rheological properties. The use of artificial neural networks to describe and forecast thermal behaviors can dramatically improve the understanding of heat transfer across nanofluid models. With this motivation, this research aims to examine the heat transfer across a hybrid Casson nanofluid on a permeable stretching porous surface utilizing Runge Kutta Fehlberg’s 45th method and artificial neural networks (ANN). The governing partial differential equations are also reduced to ordinary differential equations using similarity transformations and solved numerically via Runge Kutta Fehlberg’s 45th method. The impact of various parameters over respective velocity and temperature profiles is analyzed and displayed graphically. The increase in the Casson parameter and porosity parameter slows down the fluid velocity, whereas elevated heat transfer is observed for augmented values of heat source/sink parameter. The ANN model was validated as a most convincing model owing to its admirable exactitude throughout testing, validation, and training and was compared to numerical outcomes. The ANN’s predictions are closely matched with the observed numerical data, implying that the model has effectively learned the underlying connections in the dataset. The findings from the current study can be utilized to develop more effective biomedical devices like drug delivery systems and blood flow simulations in artificial organs.

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来源期刊
CiteScore
4.10
自引率
9.10%
发文量
179
审稿时长
5 months
期刊介绍: International Journal of Thermophysics serves as an international medium for the publication of papers in thermophysics, assisting both generators and users of thermophysical properties data. This distinguished journal publishes both experimental and theoretical papers on thermophysical properties of matter in the liquid, gaseous, and solid states (including soft matter, biofluids, and nano- and bio-materials), on instrumentation and techniques leading to their measurement, and on computer studies of model and related systems. Studies in all ranges of temperature, pressure, wavelength, and other relevant variables are included.
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