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Discrete element modelling (DEM) input parameters: understanding their impact on model predictions using statistical analysis

机译:离散元素建模(DEM)输入参数:使用统计分析了解它们对模型预测的影响

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Selection or calibration of particle property input parameters is one of the key problematic aspects for the implementation of the discrete element method (DEM). In the current study, a parametric multi-level sensitivity method is employed to understand the impact of the DEM input particle properties on the bulk responses for a given simple system: discharge of particles from a flat bottom cylindrical container onto a plate. In this case study, particle properties, such as Young's modulus, friction parameters and coefficient of restitution were systematically changed in order to assess their effect on material repose angles and particle flow rate (FR). It was shown that inter-particle static friction plays a primary role in determining both final angle of repose and FR, followed by the role of inter-particle rolling friction coefficient. The particle restitution coefficient and Young's modulus were found to have insignificant impacts and were strongly cross correlated. The proposed approach provides a systematic method that can be used to show the importance of specific DEM input parameters for a given system and then potentially facilitates their selection or calibration. It is concluded that shortening the process for input parameters selection and calibration can help in the implementation of DEM.
机译:粒子特性输入参数的选择或校准是实现离散元素方法(DEM)的关键问题之一。在当前的研究中,采用参数化多级灵敏度方法来了解DEM输入粒子特性对给定简单系统的体积响应的影响:将粒子从平底圆柱形容器排放到板上。在本案例研究中,系统地更改了诸如杨氏模量,摩擦参数和恢复系数之类的颗粒特性,以评估它们对材料休止角和颗粒流速(FR)的影响。结果表明,颗粒间静摩擦在确定最终休止角和FR中起主要作用,其次是颗粒间滚动摩擦系数。发现颗粒恢复系数和杨氏模量影响不大,并且具有很强的互相关性。提出的方法提供了一种系统的方法,可用于显示给定系统的特定DEM输入参数的重要性,然后潜在地促进其选择或校准。结论是,缩短输入参数选择和校准过程可以帮助实施DEM。

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