A comparison between discrete analysis and a multiphase approach for predicting heat conduction in packed beds

Edoardo Copertaro, A. Donoso, B. Peters
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Abstract

The Discrete Element Method (DEM) is a Lagrangian approach initially developed for predicting particles flow. The eXtended Discrete Element Method (XDEM) framework, developed at the LuXDEM Research Centre of the University of Luxembourg, extends DEM by including the thermochemical state of particles, as well as their interaction with a Computational Fluid Dynamics (CFD) domain. The level of detail of its predictions makes the XDEM suite a powerful tool for predicting complex industrial processes like steel making, powder metallurgy and additive manufacturing. Like in any other DEM software, the critical aspect of the simulations is the computation requirement that grows rapidly as the number of particles increases. Indeed, such burden currently represents the main bottleneck to its full exploitation in large-scale scenarios. Digital Twin, a research project founded by the European Regional Development Fund (ERDF), aims at drastically accelerate XDEM through different approaches and make it an effective tool for numerical predictions in industry as well as virtual prototyping. The Multiphase Particle-In-Cell (MP-PIC) method has been introduced for reducing the computation burden of DEM. It has been initially developed for predicting particles flow and uses a two-way transfer of information between the Lagrangian entities and a computation grid. The method avoids explicit contact detection and can potentially achieve a drastic reduction of the time-to-solution respect to DEM. The present contribution introduces a multiphase approach for predicting the conductive heat transfer within a static packed bed of particles. Results from a test case are qualitatively and quantitatively compared against reference XDEM predictions. The method can be effectively exploited in combination with MP-PIC for predicting the thermochemical state of particles.
离散分析与多相法预测充填床热传导的比较
离散元法(DEM)是一种拉格朗日方法,最初用于预测颗粒流动。由卢森堡大学LuXDEM研究中心开发的扩展离散元法(XDEM)框架,通过包括粒子的热化学状态,以及它们与计算流体动力学(CFD)域的相互作用,扩展了DEM。其预测的详细程度使XDEM套件成为预测复杂工业过程(如炼钢、粉末冶金和增材制造)的强大工具。与任何其他DEM软件一样,模拟的关键方面是计算需求,随着粒子数量的增加而迅速增长。事实上,这种负担目前是其在大规模情况下充分利用的主要瓶颈。Digital Twin是一个由欧洲区域发展基金(ERDF)创立的研究项目,旨在通过不同的方法大幅加速XDEM,并使其成为工业数字预测和虚拟原型的有效工具。为了减少DEM的计算量,引入了多相单元内粒子(MP-PIC)方法。它最初是为预测粒子流动而开发的,并使用拉格朗日实体和计算网格之间的双向信息传输。该方法避免了显式的接触检测,并且可以潜在地大大减少DEM的求解时间。本文介绍了一种多相方法来预测静态填充床内的传导热传递。测试用例的结果与参考XDEM预测进行定性和定量比较。该方法可与MP-PIC相结合,有效地用于预测颗粒的热化学状态。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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