A method to perform float-and-sink test for separation of coal samples of various densities and determination of ‘Probable Error’ and ‘Imperfection’

Sushobhan Pradhan, S. Mohanta
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引用次数: 4

Abstract

This article presents a detail experimental procedure to perform float-and-sink tests for classifying coal samples according to their densities. Moreover, this article emphasizes obtaining ‘partition curves’ for three different coal samples (heavy media bath, big barrel and small barrel), which helps in evaluating and demonstrating classifier performance. Calculations of independent variables such as ‘Probable Error’ and ‘Imperfection’ are also discussed for partition curve that helps in evaluating the effectiveness of various beneficiation equipment used for the upgradation of quality of coal received from different coal mines. It was observed that there is a tendency for the partition curves to steepen as the density of separation decreases. In other words, separations at lower density is sharper than separations at higher density.
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一种进行浮沉试验的方法,用于分离不同密度的煤样品并测定“可能误差”和“缺陷”
本文介绍了一个详细的实验程序,用于进行浮沉试验,根据密度对煤样进行分类。此外,本文强调获得三种不同煤样(重介质浴、大桶和小桶)的“分配曲线”,这有助于评估和演示分类器的性能。还讨论了分配曲线的自变量计算,如“可能误差”和“缺陷”,这有助于评估用于提高不同煤矿煤炭质量的各种选矿设备的有效性。观察到,随着分离密度的降低,分配曲线有变陡的趋势。换言之,在较低密度下的分离比在较高密度下的分开更尖锐。
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