Development of Situational Awareness Platform for the Safety in Mining
Date
2021
Authors
Ramesh B.
Journal Title
Journal ISSN
Volume Title
Publisher
National Institute of Technology Karnataka, Surathkal
Abstract
Mining Industry has several safety requirements as per the regulations laid
down by the government and other agencies. The environmental impact of
the mining industry is one of the important aspects which needs to be monitored
continuously as its impact concerns the health and safety of workers as
well as residents. The gas samples from the mine area are generally drawn
and checked for oxygen, methane, CO2, and CO gas. More methane gas in
the absence of proper ventilation can cause severe health hazards to miners.
Any deviation in the composition of the atmosphere especially in methane or
CO could be sensed early and any untoward incidents like explosion or fire
breakout could be prevented.
The center of the study is to monitor, update, analyze and respond
to a situation in and around mines. the center of the study conducted. To
monitor the situation, sensor networks are utilized. The data from sensor
networks helps to monitor the environmental parameters. Wireless Sensor
Network (WSN)s are useful in many fields such as coal mine safety monitoring,
agriculture management, healthcare, and also for vehicle monitoring.
Sensor data collection using different embedded sensors, ARM7 microcontroller,
and Zigbee is studied. The use of Arduino microcontroller board
for monitoring is also studied. The study is mainly to monitor the parameters
in the deep mining environment.
The possibility of remotely monitoring updating and controlling the
mining environment using Raspberry Pi is studied. The use of sensors and
Thingspeak to get the sensor data on the web and to obtain its graph in realtime
is explored. Then the controlling of the raspberry pi with the help of
XBee communication and remotely controlling with the help of a computer is
studied. This is done for the moisture level control using a relay and pump as
an example. This method has also other applications. Making use of other
types of sensors that are relevant for the mining environment, monitoring
and control can be achieved.
To analyze the situation, the data of five parameters namely Carbon
Monoxide (CO), Sulfur Dioxide (SO2), Particulate Matter 10 (PM10), Particulate
Matter 2.5 (PM2.5), and Ozone were analyzed for the year 2018 and
2019 for Singrauli of Madhya Pradesh state, where 10 open pit mines are
operating. For Talcher of Odisha state, where deep coal mine is operational,
the analysis was performed for the year 2019. The analysis is performed
using different machine learning techniques like neural network curve fitting
analysis and Self Organizing Maps.
Graphical User Interface is developed using Matlab software to analyze
the data and to display the environmental situation. This is done for both
locations. The analyzed situation is tabulated for both locations.
Description
Keywords
Department of Electrical and Electronics Engineering