DEM data-driven modeling of repose angle of granular materials

Zhou Hu, Xiaoyan Liu, Chen Chau Chu
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Abstract

Repose angle is an important property of granular materials and is usually simulated using Discrete Element Method (DEM). However, DEM simulation is computationally intensive and is thus unsuitable for online applications where parameters are frequently changed. To solve this problem, we propose a DEM data-driven modeling method for fast prediction of repose angle. Firstly, variables affecting the repose angle are analyzed; by Latin hypercube sampling of parameter spaces, 100 sets of DEM simulations are performed to generate data of repose angle. Based on these data, a support vector machine (SVM) model is then established and trained for fast prediction of repose angle under various conditions. Tests and comparison show that the reposed angle predicted by the SVM model is close to the DEM simulation result while the required computing time is greatly decreased (from 43.8 hours to 0.17 seconds), and it outperforms BP neural network and Kriging interpolation method in terms of prediction accuracy. The SVM model for repose angle is also verified by physical experiments, with prediction error less than ± 1 °. The established model can replace DEM, and is suitable for applications where fast prediction of repose angle is required.
基于DEM数据驱动的颗粒物料休止角建模
休止角是颗粒材料的重要特性,通常采用离散元法(DEM)进行模拟。然而,DEM模拟计算量大,因此不适合参数频繁变化的在线应用。为了解决这一问题,提出了一种基于DEM数据驱动的休止角快速预测建模方法。首先,分析了影响休止角的变量;通过参数空间拉丁超立方体采样,进行100组DEM模拟,生成休止角数据。基于这些数据,建立并训练支持向量机(SVM)模型,快速预测各种条件下的休止角。试验对比表明,SVM模型预测的休眠角与DEM模拟结果接近,计算时间从43.8 h大幅缩短至0.17 s,预测精度优于BP神经网络和Kriging插值方法。通过物理实验验证了该模型的有效性,预测误差小于±1°。所建立的模型可以代替DEM,适用于需要快速预测休止角的应用。
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