2022
DOI: 10.2118/209222-pa
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Improved Learning Cycle Assessment of Stimulated Wells’ Performance through Advanced Mathematical Modeling

Abstract: Summary In this paper, we forecast cumulative production for stimulated gas wells using a combination of fast-to-implement modeling methodologies, including polynomial chaos expansion (PCE) and Gaussian processes (GP) proxy models coupled with populations of phenomenological models (POMs). These modeling techniques allow for a reduction in forecast uncertainty and are shown to be effective techniques for extrapolating early time data for stimulated well production from a field of wells in the Su… Show more

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