Design and Development of Flexible Screen for Processing Industries and its Performance Prediction using Machine Learning Techniques
Date
2023
Authors
S, Bharath Kumar
Journal Title
Journal ISSN
Volume Title
Publisher
National Institute Of Technology Karnataka Surathkal
Abstract
In the material processing industry, screening is one of the crucial physical separation
methods to separate the undersized fine particles from the oversized coarse particles.
The availability of low-grade coal and iron ore with high impurities has urged the
improvisation of processing equipment such as screening machines with higher
efficiency without utilising water. Previous studies showed that wet processing of coal
and iron ore was carried out with enormous quantities of water and also required a water
treatment circuit in the plant to treat the tailings. Dry processing has significant merits
in preventing water consumption, eliminating waste, and tailing water treatment.
The major problems of the existing dry processing linear vibratory screening machine
are lower efficiency caused by the screen clogging, high velocity, reduced residence
time, and inflexibility in changing the angular position and frequency of the screen. The
efficiency of the existing linear vibrating screen available at the JSW (Jindal Steel
Works) steel plant, as well as that available in the Department of Mining Engineering,
NITK Surathkal (lab scale), was around 65.00%.
So, a new screening machine was designed and developed to overcome all the
limitations of the existing linear vibratory screening machine. The new screening
machine was developed with a circular mode of vibration for dry screening of moist
coal and iron ore of size fraction −4mm + 0 mm. A screen mesh of 2 mm aperture size
was used to separate the fine coal and iron ore particles of size fraction −2 mm + 0 mm
individually. The new screening machine has the flexibility to vary the operational
parameters, such as the angle in an upward sloping direction and the vibration
frequency of the screen, and it can work as a feeder.
Experimental investigations were conducted at the JSW R&D laboratory to assess the
efficiency of screening coal and iron ore of varying moisture content of 4%, 6%, and
8% in the new screening machine. Before the screening, the angle and frequency were
set by adjusting the angle bolts and frequency drive, respectively. During the screening,
the samples were fed to the screen at 8.33 kg/min and undersize particles were
icollected. The collected samples were weighed, and the screening efficiency was
calculated for coal and iron ore samples.
The test results showed that the screening machine could provide higher efficiency for
screening iron ore than coal material. Further, the screening efficiency of coal and iron
ore was predicted using a machine learning (supervised learning) prediction model such
as polynomial regression and backpropagation artificial neural network (ANN) models.
The results showed that for all experimental conditions, compared to the second-order
polynomial regression modelling, the ANN modeling was a better mathematical
modeling technique suitable for predicting the screening machine’s performance.
Further, the residual analysis of each prediction model was analysed and validated using
a normal probability plot and histogram. Additionally, the developed screening
machine’s operational parameters were optimised using the Taguchi L27 Design of
Experiments technique to obtain a high response parameter, i.e., screening efficiency.
For the optimisation study, the operational parameters considered were moisture
content, angle, and frequency. The Taguchi L27 optimisation results yielded a higher
screening efficiency of 84.40% for coal and 94.53% for iron ore. Furthermore, the
Pareto chart and normal effect plot were developed using a fractional Design of
Experiments (DOE) to evaluate the significant operational parameter for the screening
machine. The results of the fractional Design of Experiments on coal and iron ore show
the moisture content as the most significant operational parameter, followed by the
angle and frequency. Additionally, the feeding performance of coal and iron ore was
improved by transforming the screening machine into a feeding machine by replacing
the screen mesh with a thin solid plate. The results showed that the developed machine
could be utilised as a multifunctional machine for efficient screening with less clogging
and also as an efficient feeder.
Description
Keywords
Screening machine, Iron ore, Coal, Regression