Leveraging Air Quality Sensing for Carbon Monoxide Transport Modeling in Underground Coal Mines

Society for Mining, Metallurgy & Exploration
Kate Willa Brown Requist Eric Lutz Moe Momayez
Organization:
Society for Mining, Metallurgy & Exploration
Pages:
10
File Size:
887 KB
Publication Date:
Jun 25, 2023

Abstract

As air quality sensor networks become increasingly popular in underground coal mines, it is important to generate paradigms for the application of the collected data. To date, air quality sensing has been primarily used as an early warning system for hazardous air conditions. Using data collected from a network of sensors in a US underground coal mine, we have created multiple visualization methods to show the interactions of carbon monoxide evolution with ventilation airflow. These visualization methods can allow for further analysis of the source of contaminant, as well as better data resolution across the area of concern within the mine. By utilizing univariate spatial interpolations, we present methods for identifying the movement of carbon monoxide at one-minute intervals. The resulting visualizations display the evolution of carbon monoxide concentration across a sizeable study area over a period of 14 minutes.
Citation

APA: Kate Willa Brown Requist Eric Lutz Moe Momayez  (2023)  Leveraging Air Quality Sensing for Carbon Monoxide Transport Modeling in Underground Coal Mines

MLA: Kate Willa Brown Requist Eric Lutz Moe Momayez Leveraging Air Quality Sensing for Carbon Monoxide Transport Modeling in Underground Coal Mines. Society for Mining, Metallurgy & Exploration, 2023.

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