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Optimization of the recovery of plastics for recycling by density media separation cyclones

机译:通过密度介质分离旋风分离器优化可回收塑料的回收率

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Material recovery processes are presented as the optimum option for recycling plastic wastes as a means of recovering hydrocarbon resources. There exist a large variety of automated material recovery processes for recycling of such wastes but each with significant limitations. Of these, the separation based on differences in densities is advocated as the optimum process either for producing recycled products or preparing wastes for subsequent recovery processing. Density separation processes based on cyclone type density media separation (DMS) is presented as an important, potential method for increasing plastics recycling process capacities. It is demonstrated to have the capacity to separate a significantly larger range of particle sizes than those presently processed industrially. The mathematical relationship for the prediction of quality of typical LARCODEMS type density media separations by particle size and density as expressed by the Ecart Probable is presented. A proposed device configuration is presented for density media separation to optimize the recovery and purity of both density fractions produced. It is also suggested that to be economically viable, a large scale of operation is required for industrial plastics recycling operations recovering and producing a number of different plastics with a purity to be used as a substitute for virgin material.
机译:物料回收工艺是回收塑料废料的最佳选择,是回收碳氢化合物资源的一种方法。存在多种用于这些废物的再循环的自动材料回收过程,但是每个过程都有明显的局限性。其中,提倡基于密度差异的分离是生产再生产品或为后续回收处理准备​​废物的最佳工艺。提出了基于旋风式密度介质分离(DMS)的密度分离工艺,作为提高塑料回收工艺能力的一种重要的潜在方法。与目前工业上加工的那些相比,已证明它具有分离更大范围的粒径的能力。提出了通过Ecart概率表示的通过粒度和密度预测典型LARCODEMS类型密度介质分离质量的数学关系。提出了一种用于密度介质分离的设备配置,以优化所生产的两种密度馏分的回收率和纯度。还建议为了在经济上可行,工业塑料回收操作需要大规模操作,以回收并生产许多不同纯度的塑料以替代原始材料。

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