Time Series Modeling of Methane Gas in Underground Mines (Mining, Metallurgy & Exploration)

- Organization:
- Society for Mining, Metallurgy & Exploration
- Pages:
- 22
- File Size:
- 3892 KB
- Publication Date:
- Aug 2, 2022
Abstract
Methane gas is emitted during both underground and surface coal mining. Underground coal mines need to monitor
methane gas emissions to ensure adequate ventilation is provided to guarantee that methane concentrations remain low
under different production and environmental conditions. Prediction of methane concentrations in underground mines can
also contribute towards the successful management of methane gas emissions. The main objective of this research is to
develop a forecasting methodology for methane gas emissions based on time series analysis. Methane time series data were
retrieved from atmospheric monitoring systems (AMS) of three underground coal mines in the USA. The AMS data were
stored and pre-processed using an Atmospheric Monitoring Analysis and Database Management system. Furthermore,
different statistical dependence measures such as cross-correlation, autocorrelation, cross-covariance, and variograms were
implemented to investigate the potential autocorrelations of methane gas as well as its association with auxiliary variables
(barometric pressure and coal production). The autoregressive integrated moving average (ARIMA) time series model which
is based on auto-correlations of the methane gas is investigated. It is established that ARIMA used in the one-step-ahead
forecasting mode provides accurate estimates that match the direction (increase/decrease) of the methane gas emission data.
Citation
APA:
(2022) Time Series Modeling of Methane Gas in Underground Mines (Mining, Metallurgy & Exploration)MLA: Time Series Modeling of Methane Gas in Underground Mines (Mining, Metallurgy & Exploration). Society for Mining, Metallurgy & Exploration, 2022.