大孔潜热蓄能的测地线卷积神经网络表征

IF 2.8 4区 工程技术 Q2 ENGINEERING, MECHANICAL
N. Mallya, P. Baqué, Pierre Yvernay, Andrea Pozzetti, P. Fua, S. Haussener
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引用次数: 0

摘要

高温潜热金属合金相变材料(PCMs)热储能利用高潜热和高导热性,比现有的显式和潜热储能技术具有竞争优势。新型大孔潜热储热装置可以增强传热流体与PCM之间的极限对流换热,在保持高能量密度的同时获得更高的功率密度。利用合成层析成像数据,建立了具有随机有序亚结构拓扑的三维整体渗透大孔潜热储热单元。利用有效的热容方法和与温度和相位相关的热物理性质,对1000多个这样的结构进行了全3D热计算流体力学(CFD)模拟,并进行了相变建模。从模拟充装过程中提取瞬态热流特性、相变时间和压降等设计参数作为输出标量。由于这种结构无法进行有意义的参数化,因此设计了一种基于网格的测地卷积神经网络(GCNN),用于对大孔结构的表面和体积网格进行直接卷积,以预测输出标量以及体积中的压力、温度、速度分布以及热流密度和剪切应力的表面分布。人工神经网络(ANN)使用结构的宏观特性——孔隙率、表面积和两点表面空隙相关函数——作为输入,作为标准回归量进行比较。由于GCNN的解纠缠特性,通过引入相关的表面和体积场提高了预测精度,GCNN对标量的预测精度很高,优于人工神经网络和线性/指数拟合。训练后的GCNN可以作为耦合cfd -传热模拟器,预测PCM-HTF界面的温度、压力、速度场以及热流密度和剪切应力分布的体积分布。这种基于深度学习的方法提供了一种独特的、通用的、具有计算竞争力的方法,可以在几秒钟内快速预测高功率密度大孔结构的相变行为,并有可能优化渗透大孔单元电池,以满足特定的应用要求。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Geodesic Convolutional Neural Network Characterization of Macro-Porous Latent Thermal Energy Storage
High-temperature latent heat thermal energy storage with metallic alloy phase change materials (PCMs) utilize the high latent heat and high thermal conductivity to gain a competitive edge over existing sensible and latent storage technologies. Novel macroporous latent heat storage units can be used to enhance the limiting convective heat transfer between the heat transfer fluid and the PCM to attain higher power density while maintaining high energy density. 3D monolithic percolating macroporous latent heat storage unit cells with random and ordered substructure topology were created using synthetic tomography data. Full 3D thermal computational fluid dynamics (CFD) simulations with phase change modeling was performed on 1000+ such structures using effective heat capacity method and temperature- and phase-dependent thermophysical properties. Design parameters, including transient thermal and flow characteristics, phase change time and pressure drop, were extracted as output scalars from the simulated charging process. As such structures cannot be parametrized meaningfully, a mesh-based Geodesic Convolutional Neural Network (GCNN) designed to perform direct convolutions on the surface and volume meshes of the macroporous structures was trained to predict the output scalars along with pressure, temperature, velocity distributions in the volume, and surface distributions of heat flux and shear stress. An Artificial Neural Network (ANN) using macroscopic properties—porosity, surface area, and two-point surface-void correlation functions—of the structures as inputs was used as a standard regressor for comparison. The GCNN exhibited high prediction accuracy of the scalars, outperforming the ANN and linear/exponential fits, owing to the disentangling property of GCNNs where predictions were improved by the introduction of correlated surface and volume fields. The trained GCNN behaves as a coupled CFD-heat transfer emulator predicting the volumetric distribution of temperature, pressure, velocity fields, and heat flux and shear stress distributions at the PCM–HTF interface. This deep learning based methodology offers a unique, generalized, and computationally competitive way to quickly predict phase change behavior of high power density macroporous structures in a few seconds and has the potential to optimize the percolating macroporous unit cells to application specific requirements.
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来源期刊
自引率
0.00%
发文量
182
审稿时长
4.7 months
期刊介绍: Topical areas including, but not limited to: Biological heat and mass transfer; Combustion and reactive flows; Conduction; Electronic and photonic cooling; Evaporation, boiling, and condensation; Experimental techniques; Forced convection; Heat exchanger fundamentals; Heat transfer enhancement; Combined heat and mass transfer; Heat transfer in manufacturing; Jets, wakes, and impingement cooling; Melting and solidification; Microscale and nanoscale heat and mass transfer; Natural and mixed convection; Porous media; Radiative heat transfer; Thermal systems; Two-phase flow and heat transfer. Such topical areas may be seen in: Aerospace; The environment; Gas turbines; Biotechnology; Electronic and photonic processes and equipment; Energy systems, Fire and combustion, heat pipes, manufacturing and materials processing, low temperature and arctic region heat transfer; Refrigeration and air conditioning; Homeland security systems; Multi-phase processes; Microscale and nanoscale devices and processes.
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