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Research Article

Regression modeling and residual analysis of screening coal in screening machine

ORCID Icon, , , , &
Pages 2849-2864 | Received 08 Jan 2021, Accepted 26 Apr 2021, Published online: 19 May 2021
 

ABSTRACT

Coal is one of the chief energy sources having significant applications in the iron and steel industry. This research investigates the screening efficiency of coal of different size range. The experiments on the screening of coal with different size range in the screening machine were carried out using different mesh sizes. The screening efficiency for different screen angles and frequency of vibration was carried out. After experimentation, regression modeling was carried out for each screening condition. The maximum efficiency of screening coal with size range +4 mm-6 mm, +2 mm-4 mm, and +0.5 mm-2 mm obtained was 87.60%, 80.93%, and 62.96%, respectively. The experimental results show that the screening efficiency decreases with the decrease in size range for screening from +4 mm-6 mm to +0.5 mm-2 mm. The reduction in screening efficiency was due to the clogging of coal to the screen mesh. Linear and quadratic modeling were performed to estimate the efficiency of all the experimental results. After prediction, the validation using residual analysis was carried out, and the results illustrate that the quadratic prediction modeling was accurate.

Acknowledgments

The authors wish to thank all the individuals of JSW Steels, Ballari whose assistance was a milestone in the completion of this work.

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