Application of machine learning techniques for well pad identification in the Bakken oil field
نویسندگان
چکیده
There has been increased scrutiny in understanding the anthropogenic sources for methane emissions due to methane’s potency as a greenhouse gas [2]. There are two approaches for studying of methane emissions, emissions inventories (or ‘bottom up’ studies), and remote measurements of methane fluxes (or ‘top down’ studies). Emissions inventories calculate the leakage rates for fugitive methane over a given area as:
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