Álvarez Mario Menéndez, Sierra Héctor Muñiz, Lasheras Fernando Sánchez, Juez Francisco Javier de Cos
Department of Exploration and Mining, Universidad de Oviedo, EIMEMO, c/ Independencia 13, 33004 Oviedo, Spain.
Department of Construction and Manufacturing Engineering, Universidad de Oviedo, Campus de Viesques, 33204 Gijón, Spain.
Materials (Basel). 2017 Jun 30;10(7):729. doi: 10.3390/ma10070729.
Modeling of a cylindrical heavy media separator has been conducted in order to predict its optimum operating parameters. As far as it is known by the authors, this is the first application in the literature. The aim of the present research is to predict the separation efficiency based on the adjustment of the device's dimensions and media flow rates. A variety of heavy media separators exist that are extensively used to separate particles by density. There is a growing importance in their application in the recycling sector. The cylindrical variety is reported to be the most suited for processing a large range of particle sizes, but optimizing its operating parameters remains to be documented. The multivariate adaptive regression splines methodology has been applied in order to predict the separation efficiencies using, as inputs, the device dimension and media flow rate variables. The results obtained show that it is possible to predict the device separation efficiency according to laboratory experiments performed and, therefore, forecast results obtainable with different operating conditions.
为了预测圆柱形重介质分离器的最佳运行参数,已对其进行了建模。据作者所知,这是文献中的首次应用。本研究的目的是基于设备尺寸和介质流速的调整来预测分离效率。存在多种重介质分离器,它们被广泛用于按密度分离颗粒。它们在回收领域的应用越来越重要。据报道,圆柱形分离器最适合处理大范围的颗粒尺寸,但优化其运行参数仍有待记录。已应用多元自适应回归样条方法,以设备尺寸和介质流速变量作为输入来预测分离效率。获得的结果表明,根据所进行的实验室实验可以预测设备的分离效率,从而预测在不同运行条件下可获得的结果。