Prediction of Dust Dispersion from Drilling Operation in Surface Mines
Date
2017
Authors
Nagesha, K. V.
Journal Title
Journal ISSN
Volume Title
Publisher
National Institute of Technology Karnataka, Surathkal
Abstract
Dust pollution causes various problems within and outside the mine environment. Dust
emanating from different activities directly affects the people working in the mines. Dust
deposition on Heavy Earth Moving Machinery (HEMM) and other machinery can
damage the machinery. The various activities involved in mining to extract ore from earth
lead to dust pollution. Especially, Particulates Matters (PM) present in mines area lead to
various human respiratory diseases. Aerodynamic diameter of particles having less than
10µm called as PM10. Among all activities involved in mining, drilling activity is more
important and it produces PM particles. Dust prediction models are necessary to identify
the quantity of dust expected from drilling so that dust control strategies can be taken up
at mine site.
In order to develop dust prediction models in surface mines, field investigations were
carried out in eight opencast mines. Among them, three are opencast coal mines, two are
limestone mines and the remaining are granite quarries. Two opencast mines, two granite
quarries and one limestone mine data was used to develop mathematical models. One
coal mine data, one granite quarry data and one limestone mine data was used to validate
developed models. To develop dust prediction models, 169 sets of data for emission
model and 184 sets of data for concentration model from different rock formations were
considered. Field monitoring was carried out according to Central Pollution Control
Board (CPCB) standards. Rock samples were collected from different locations of mines
and brought to the laboratory for determining required physico-mechanical properties
according to International Society for Rock Mechanics (ISRM) suggested methods.
Various rock properties considered are Moisture content, Density, Compressive strength
and Schmidt rebound hardness number.
Artificial Neural Network (ANN) analysis was carried out for different combinations of
hidden layers. Feed Forward Neural Network with back–propagation algorithm was used
to train the network. Four types of algorithms were used for development of models andii
their performances were evaluated using Values Account For (VAF), Root Mean Square
Error (RMSE) and Mean Absolute Percentage Error (MAPE). Network was trained using
different types of Back-propagation algorithms such as Trainrp, Trainscg, Traincgp,
Trainlm. The algorithm ‘Trainlm’ has high MAPE and less RMSE. Value of RMSE is
6.68, MAPE value is 33 and VAF value is 79.90. Trainlm algorithm was found to be the
best method for prediction of PM10 from drilling operation and was used for comparison.
The predicted values from ANN method and field measured values were compared. The
R2 value for emission model is 0.81 and for concentration model it is 0.80, which shows
very good correlation and gave better forecasting results using ANN method. Analysis
showed that the field data is error free. But, ANN cannot give mathematical equations, so
multi regression analysis was used for the development of models.
Multiple regression analysis method was used to determine the relation between multiple
independent variables (input) and single dependent variable (output). Mathematical
equations were developed using statistical software, namely Statistical Package for the
Social Sciences (SPSS). In order to assess the influence of input parameters on output,
stepwise regression was used. Assessment of SPSS software based predicted values were
evaluated by statistical parameters like coefficient of determination (R2), ANOVA,
parameters coefficients and Variable Influencing Factor (VIF). The parameters chosen
were found to be statistically more significant. The predicted values from multiple
regression method and field measured values were compared. The R2 value for emission
model is 0.82 and for concentration model it is 0.81, for 95% level of confidence, which
shows very good correlation.
A comparison was made between Multiple Regression Analysis Model and ANN model
results. ‘Trainlm’ algorithm revealed that, MRA model gave better performance than
ANN with lower RMSE and high MAPE values and higher prediction accuracy (VAF)
value for all the predicted variables. The VAF values obtained for MRA is 87.1 per cent,iii
RMSE is 3.22 and MAPE is 33.7 per cent. Finally, to validate developed models, field
measured values were compared with SPSS model predicted values and USEPA
predicted values. Analysis revealed that USEPA was giving around 99 per cent error and
SPSS model was giving error of within 20 per cent. Therefore, SPSS models developed
as part of this research work may be used for dust prediction from drilling activity under
Indian Geo-Mining and weather conditions.
Description
Keywords
Department of Mining Engineering