LTNE条件下非达西多孔介质中非牛顿nepcm悬浮液的神经网络建模

IF 6.9 3区 工程技术 Q1 ENGINEERING, CHEMICAL Journal of the Taiwan Institute of Chemical Engineers Pub Date : 2025-02-01 Epub Date: 2024-12-12 DOI:10.1016/j.jtice.2024.105897
Tahar Tayebi , Rifaqat Ali , Marouan Kouki , M.K. Nayak , Ahmed M. Galal
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引用次数: 0

摘要

分析多孔介质中浮力驱动对流在化学加工和地热能开采中有着广泛的应用。多孔介质中复杂的传热(HT),特别是在局部热不平衡(LTNE)条件下,可能需要复杂的检测来精确预测系统行为。此外,当涉及到使用纳米材料以提高热系统的传热效率时,纳米封装相变材料(NEPCMs)将提供一个有前途的解决方案。nepcm结合了相变材料(pcm)的高潜热储存能力和纳米颗粒改善的导热性,使其成为储能、电子冷却、热能和太阳能应用的理想选择。在这方面,本研究考察了非牛顿NEPCM悬浮液在流体饱和多孔六边形外壳内的耦合自然对流和熵生成。建立了表征多孔介质与NEPCM悬浮流相互作用的Forchheimer-Brinkman-extended Darcy (FBED)模型。使用LTNE假设分析了悬浮液和固体之间的热相互作用,其中NEPCMs悬浮液和固体基体温度都表现出局部波动。方法采用有限元法求解系统的控制方程,并采用基于人工神经网络(ANN)的多层感知器(MLP)算法评估两阶段的平均努塞尔数。进一步利用该算法进行回归分析,评估均方误差,分析神经网络的误差直方图。结果表明,在相同的参数下,悬浮相对Ra、Da和n的变化更为敏感,而固相对λ和H的依赖相对较强,而Ste对两相的传热影响最小。此外,Nuave的回归系数为R = 0.99987, Nuave的回归系数为nf和R = 0.99971,表明人工神经网络模型的预测值与实际值之间存在很强的相关性。
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Neural network modeling of non-Newtonian NEPCMs suspension in a non-Darcy porous medium under LTNE conditions

Background

Analyzing buoyancy-driven convection in porous media has numerous applications in chemical processing and geothermal energy extraction. The complication of heat transfer (HT) in porous media, especially under Local Thermal Non-Equilibrium (LTNE) conditions, may need sophisticated examination to precisely predict system behavior. In addition, when it comes to using nanomaterials with the aim of enhancing heat transfer efficiency of thermal systems, nano-encapsulated phase change materials (NEPCMs) would offer a promising solution. NEPCMs merge the high latent heat storage capacity of phase change materials (PCMs) with nanoparticles' improved thermal conductivity, making them ideal for energy storage, electronic cooling, and thermal and solar energy applications. In this regard, this study examines the coupled natural convection and entropy generation of a non-Newtonian NEPCM suspension within a fluid-saturated porous hexagonal enclosure. The Forchheimer-Brinkman-extended Darcy (FBED) model is established to characterize the interaction between the porous medium and the NEPCM suspension flow. The thermal interaction between the suspension and the solid is analyzed using LTNE assumptions, where both NEPCMs suspension and solid matrix temperatures exhibit local fluctuations.

Methods

Governing equations of the system are solved using the finite element method (FEM) and the average Nusselt numbers for both phases are assessed through an artificial neural network (ANN)-based multi-layer perceptron (MLP) algorithm. This algorithm is further employed to conduct regression analysis, evaluate the mean square error, and analyze the error histogram of the neural network.

Significant Findings

The results indicate that while the same parameters influence heat transfer in both phases, the suspension phase is more sensitive to variations in Ra, Da, and n. In contrast, the solid phase exhibits a relatively stronger dependence on λ and H, with Ste having the least impact on heat transfer in both phases. Furthermore, the regression coefficients are identified as R = 0.99987 for Nuave,nf and R = 0.99971 for Nuave,s indicating a strong correlation between the predicted values of the ANN model and the actual values.
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来源期刊
CiteScore
9.10
自引率
14.00%
发文量
362
审稿时长
35 days
期刊介绍: Journal of the Taiwan Institute of Chemical Engineers (formerly known as Journal of the Chinese Institute of Chemical Engineers) publishes original works, from fundamental principles to practical applications, in the broad field of chemical engineering with special focus on three aspects: Chemical and Biomolecular Science and Technology, Energy and Environmental Science and Technology, and Materials Science and Technology. Authors should choose for their manuscript an appropriate aspect section and a few related classifications when submitting to the journal online.
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