{"title":"Calibrating polypropylene particle model parameters with upscaling and repose surface method","authors":"Supattarachai Sudsawat, Pornchai Chongchitpaisan, Pirapat Arunyanart","doi":"10.21303/2461-4262.2023.002968","DOIUrl":null,"url":null,"abstract":"The discrete element method (DEM) is a computational technique extensively utilized for simulating particles on a large scale, specifically focusing on granular materials. Nonetheless, its implementation requires a substantial amount of computational power and accurate material properties. Consequently, this study delves into an alternative approach referred to as volume-based scaled-up modeling, aiming to simulate polypropylene particles using DEM while mitigating the computational burden and regenerating new material properties. This novel method aims to reduce the CPU time required for the simulation process and represent both the macro mechanical behavior and micro material properties of polypropylene particles. To accomplish this, the dimensions of the polypropylene particles in the DEM simulation were magnified by a factor of two compared to the original size of the prolate spheroid particles. In order to determine the virtual micro material properties of the polypropylene particles, a calibration method incorporating the design of experiments (DOE) and repose surface methodology was employed. The predicted bulk angle of repose (AOR) derived from the upscaled DEM parameters exhibited a remarkably close agreement with the empirical AOR test, demonstrating a small relative error of merely 1.69 %. Moreover, the CPU time required for the upscaled particle model proved to be less than 71 % of that necessary for the actual-scale model of polypropylene particles. These compelling results confirm the effectiveness of enlarging the particle volume used to calibrate micro-material properties in the Discrete Element Method (DEM) through the DOE technique. This approach proves to be a reliable and efficient method","PeriodicalId":11804,"journal":{"name":"EUREKA: Physics and Engineering","volume":null,"pages":null},"PeriodicalIF":0.0000,"publicationDate":"2023-11-30","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":null,"platform":"Semanticscholar","paperid":null,"PeriodicalName":"EUREKA: Physics and Engineering","FirstCategoryId":"1085","ListUrlMain":"https://doi.org/10.21303/2461-4262.2023.002968","RegionNum":0,"RegionCategory":null,"ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"Q3","JCRName":"Engineering","Score":null,"Total":0}
引用次数: 0
Abstract
The discrete element method (DEM) is a computational technique extensively utilized for simulating particles on a large scale, specifically focusing on granular materials. Nonetheless, its implementation requires a substantial amount of computational power and accurate material properties. Consequently, this study delves into an alternative approach referred to as volume-based scaled-up modeling, aiming to simulate polypropylene particles using DEM while mitigating the computational burden and regenerating new material properties. This novel method aims to reduce the CPU time required for the simulation process and represent both the macro mechanical behavior and micro material properties of polypropylene particles. To accomplish this, the dimensions of the polypropylene particles in the DEM simulation were magnified by a factor of two compared to the original size of the prolate spheroid particles. In order to determine the virtual micro material properties of the polypropylene particles, a calibration method incorporating the design of experiments (DOE) and repose surface methodology was employed. The predicted bulk angle of repose (AOR) derived from the upscaled DEM parameters exhibited a remarkably close agreement with the empirical AOR test, demonstrating a small relative error of merely 1.69 %. Moreover, the CPU time required for the upscaled particle model proved to be less than 71 % of that necessary for the actual-scale model of polypropylene particles. These compelling results confirm the effectiveness of enlarging the particle volume used to calibrate micro-material properties in the Discrete Element Method (DEM) through the DOE technique. This approach proves to be a reliable and efficient method
离散元法(DEM)是一种广泛应用于大规模颗粒模拟的计算技术,尤其侧重于颗粒材料。然而,其实施需要大量的计算能力和精确的材料属性。因此,本研究探讨了一种替代方法,即基于体积的放大建模,旨在使用 DEM 模拟聚丙烯颗粒,同时减轻计算负担并重新生成新的材料属性。这种新方法旨在减少模拟过程所需的 CPU 时间,同时表现聚丙烯粒子的宏观机械行为和微观材料特性。为此,在 DEM 模拟中,聚丙烯颗粒的尺寸比原始球形颗粒的尺寸放大了两倍。为了确定聚丙烯颗粒的虚拟微观材料特性,采用了一种结合了实验设计 (DOE) 和静止面方法的校准方法。从放大的 DEM 参数得出的预测体型休止角 (AOR) 与经验 AOR 测试非常接近,相对误差很小,仅为 1.69%。此外,事实证明,放大颗粒模型所需的 CPU 时间不到聚丙烯颗粒实际尺寸模型所需时间的 71%。这些令人信服的结果证实了通过 DOE 技术扩大离散元素法(DEM)中用于校准微观材料特性的颗粒体积的有效性。这种方法被证明是一种可靠而高效的方法