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Thermal analysis of large granular assemblies using a hierarchical approach coupling the macro-scale finite element method and micro-scale discrete element method through artificial neural networks

机译:通过人工神经网络耦合宏观尺度有限元法和微尺度分立元法的层次方法热分析大型粒状组件

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摘要

A hierarchical approach for modelling the thermal response of large-scale granular assemblies by coupling the micro-scale particle-level thermal interactions with the macro-scale continuum system is proposed. The coupling is done by using a machine learning tool that is trained to replicate the effect of discrete particle nature on the macro-scale system using finite elements. A trained Artificial Neural Network (ANN) tool that can estimate the effective local thermal conductivity for each finite element considering the influence of the presence of stagnant gas in the interstitial voids, gas pressure and the granular microstructure is used. This way of hierarchical coupling using ANN eliminates the need to perform thermal discrete element simulations for each finite element at every increment by directly predicting the effective local conductivity. The proposed hierarchical approach is applied to a breeder blanket of fusion reactor that consists of more than 15 million particles to demonstrate the efficacy of the method. The influence of the drop in gas pressure across the breeder unit and the heat generation on the temperature distribution of the full-scale breeder unit is analysed numerically.
机译:提出了一种通过耦合与宏观级连续体系的微级粒度热交互来建模大规模粒状组件的热响应的分层方法。通过使用机器学习工具进行耦合,该工具训练,以通过有限元对宏观级系统的分立粒子性质的效果进行复制。考虑到在间隙空隙,气体压力和粒状微结构中,可以估计每个有限元的有效局部导热率的培训的人工神经网络(ANN)工具。使用ANN的这种层级耦合方式消除了通过直接预测有效局部电导率来为每个增量执行每个有限元件的热分立元件模拟。所提出的等级方法适用于融合反应器的繁殖者毯子,该碎片由超过1500万粒子组成,以证明该方法的功效。在数值上分析了对育种单元对育种机组的气压下降的影响和全级育种子单元的温度分布上的热量。

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