Enhancement of Wear Resistance of High-Load Pressing Screw in Smokeless Charcoal Production by Using Genetic Algorithm and Discrete Element Method

Hong Tien Nguyen, Tuan-Linh Nguyen, Nguyen Van Thien, Phan Van Quoc
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Abstract

During the production of smokeless charcoal, the pressing screw of the sawdust compressor is exposed to the effects of friction and elevated temperature, resulting in rapid wear. This phenomenon not only diminishes productivity but also exerts adverse influences on the final product's quality. Consequently, the pursuit of research endeavors aiming at prolonging the lifespan of the pressing screw holds significant importance, not only in reducing production costs but also in enhancing the product's overall quality. This paper adopts an innovative approach by integrating theoretical calculations, numerical simulations with practical experiments to ascertain the optimal profile for the pressing screw. This methodology employs Genetic Algorithm and Discrete Element Method (DEM) simulations in conjunction with the EDEM software to simulate the working process and provide the optimal profile of the pressing screw. The analysis and simulation results indicate a substantial enhancement in the wear resistance of the pressing screw while ensuring the efficient movement of discrete materials during the pressing process. The results of this study not only indicate the main wear locations on the pressing screw but also suggest the optimal profile, providing a basis and control for wear assessment. Furthermore, the results of this research not only identifies the principal areas that are susceptible to wear on the pressing screw but also proposes optimal profile, threreby establish a solid foundation and methodology for wear assessment. These results will be pragmatically implemented in smokeless charcoal production factories, concurrently pave the way for further research and applications in this field.
利用遗传算法和离散元法增强无烟木炭生产中高负载压制螺旋的耐磨性
在生产无烟木炭的过程中,锯末压缩机的压紧螺杆受到摩擦和温度升高的影响,导致快速磨损。这种现象不仅会降低生产效率,还会对最终产品的质量产生不利影响。因此,旨在延长压榨螺杆使用寿命的研究工作具有重要意义,不仅能降低生产成本,还能提高产品的整体质量。本文采用了一种创新方法,将理论计算、数值模拟与实际实验相结合,以确定压榨螺杆的最佳轮廓。该方法采用遗传算法和离散元素法(DEM)模拟,结合 EDEM 软件来模拟工作过程,并提供压制螺杆的最佳轮廓。分析和模拟结果表明,压制螺杆的耐磨性大大增强,同时确保了离散材料在压制过程中的有效移动。研究结果不仅指出了压榨螺杆上的主要磨损位置,还提出了最佳轮廓,为磨损评估提供了依据和控制。此外,这项研究的结果不仅确定了压制螺杆上易磨损的主要部位,还提出了最佳轮廓,从而为磨损评估奠定了坚实的基础和方法。这些成果将在无烟木炭生产厂得到实际应用,同时也为该领域的进一步研究和应用铺平了道路。
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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