Application of machine learning to gas flaring
Rong Lu

TL;DR
This paper explores the use of satellite data and Bayesian machine learning to improve the accuracy of gas flaring estimates, analyze temporal patterns, and understand distributional characteristics across different regions.
Contribution
It introduces hierarchical Bayesian models, Gaussian process analysis, and unsupervised learning techniques to enhance gas flaring estimation and monitoring using satellite imagery and statistical methods.
Findings
VIIRS satellite data provides unbiased flaring estimates.
Hierarchical models reveal heterogeneity among counties.
Gaussian processes effectively identify flaring patterns.
Abstract
Currently in the petroleum industry, operators often flare the produced gas instead of commodifying it. The flaring magnitudes are large in some states, which constitute problems with energy waste and CO2 emissions. In North Dakota, operators are required to estimate and report the volume flared. The questions are, how good is the quality of this reporting, and what insights can be drawn from it? Apart from the company-reported statistics, which are available from the North Dakota Industrial Commission (NDIC), flared volumes can be estimated via satellite remote sensing, serving as an unbiased benchmark. Since interpretation of the Landsat 8 imagery is hindered by artifacts due to glow, the estimated volumes based on the Visible Infrared Imaging Radiometer Suite (VIIRS) are used. Reverse geocoding is performed for comparing and contrasting the NDIC and VIIRS data at different levels,…
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Taxonomy
TopicsOil, Gas, and Environmental Issues · Atmospheric and Environmental Gas Dynamics · Global Energy and Sustainability Research
