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首页> 外文期刊>Powder Technology: An International Journal on the Science and Technology of Wet and Dry Particulate Systems >Numerical analysis of wet plastic particle separation using a coupled DEM-SPH method
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Numerical analysis of wet plastic particle separation using a coupled DEM-SPH method

机译:耦合DEM-SPH法的湿塑料颗粒分离数值分析

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摘要

The separation of different kind of plastic particles is required in the process of waste recycling. For the separation, drum processes with liquid can be used. The separation is based on the principle that particles either sink or float in a liquid depending on their densities. In this study, this process is numerically analysed for the separation of polyethylene terephthalate (PET) from polypropylene (PP) particles. The discrete element method coupled with the smoothed particle hydrodynamics method (DEM-SPH) is used for modelling purposes. The employment of the SPH for the modelling of the liquid exploits the strong side of this meshless method, namely, the relative ease in modelling large movements of the fluid with free surfaces and moving boundaries. This theoretical model is presented, and verification tests are performed, where a dam-break problem is considered as an example. Simulations of the plastic particle separation in the rotating drum are performed thereafter. The influences of the different operational and design parameters, such as the rotational velocity, feed rate, and number of lifters on the resultant purity of the plastic are estimated. It is expected that, in the future, the performed analysis will allow the numerical optimisation of drum separation processes. (C) 2017 Elsevier B.V. All rights reserved.
机译:在废物回收过程中需要不同种类的塑料颗粒的分离。对于分离,可以使用具有液体的滚筒方法。分离是基于根据其密度在液体中吸收或漂浮的原理。在该研究中,该方法在数值上分析了从聚丙烯(PP)颗粒中的聚对苯二甲酸乙二醇酯(PET)的分离。与平滑粒子流体动力学方法(DEM-SPH)耦合的离散元件方法用于建模目的。用于液体建模的SPH的就业利用这种无网格方法的强侧,即相对容易与自由表面和移动边界模拟流体的大运动。提出了该理论模型,并执行验证测试,其中被认为是坝断点问题作为示例。此后执行旋转滚筒中的塑料颗粒分离的模拟。估计不同操作和设计参数的影响,例如旋转速度,进料速率和升降机的所得塑料所得到的纯度。预期,在将来,执行的分析将允许滚筒分离过程的数值优化。 (c)2017 Elsevier B.v.保留所有权利。

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