Experimental Investigation on Estimation and Prediction of Sound in Percussive Drilling
Date
2013
Authors
Kivade, Sangshetty
Journal Title
Journal ISSN
Volume Title
Publisher
National Institute of Technology Karnataka, Surathkal
Abstract
This research work was taken up with the objectives of developing general
prediction models for the determination of uni-axial compressive strength (UCS),
abrasivity, tensile strength (TS) and Schmidt rebound number (SRN) for sedimentary
and igneous rocks using penetration rate and sound level produced during percussive
drilling. To carry out this investigation fabricated pneumatic drill set-up on the
laboratory scale was used. In the present work shale, dolomite, sand stone, lime stone
and hematite were the sedimentary rocks, whereas dolerite, soda granite, black
granite, basalt and gabbros were the igneous rocks used in this investigation.
For all the above mentioned rocks their mechanical properties were determined
as per the suggested methods of International Society of Rock Mechanics (ISRM).
The laboratory investigation on all the sedimentary and igneous rocks using the drill
set-up was carried out to find the penetration rate (mm/s) and sound level (dB (A))
produced by varying air pressure from 392 to 588 kPa, thrust from 100 to 1000 N and
with varying drill bits and types (integral chisel drill bit: 30, 34 and 40 mm diameter,
threaded (R22) cross drill bit: 35 and 38 mm diameter).
The data generated in the laboratory investigation was utilized for the
development of regression models for predicting rock properties like, UCS,
abrasivity, TS, and SRN using air pressure, thrust, bit diameter, penetration rate and
sound level. Further, regression models were also developed for predicting
penetration rate and sound level using air pressure, thrust, bit diameter and rock
properties as input parameters.
In a similar way, i.e. utilizing the same input parameters for determining the
rock properties and predicting the sound level and penetration rate, Artificial Neural
Network (ANN) models were developed. A comparison was made between the results
obtained using various regression models developed and the ANN models. Results of
this investigation indicate that ANN models are superior over regression models.
Description
Keywords
Department of Mining Engineering, Percussive drill, Sound level, Penetration rate, Air pressure, Air pressure, Drill bit types and diameter, Uni-axial compressive strength, Abrasivity, Tensile strength, Schmidt rebound number, Regression models, Artificial Neural Network