METHODS FOR ACCELERATED DEVELOPMENT PLANNING OPTIMIZATION USING MACHINE LEARNING FOR UNCONVENTIONAL OIL AND GAS RESOURCES

    公开(公告)号:US20240192646A1

    公开(公告)日:2024-06-13

    申请号:US18555098

    申请日:2022-02-03

    CPC classification number: G05B13/0265

    Abstract: Methods for analyzing subsurface process data in order to perform one or more subsurface operations in a subsurface are provided. Generating subsurface models is typically a long and laborious process in which subsurface process data is analyzed in order to generate the subsurface models. In contrast, work in generating the subsurface models may be front-loaded by first using a physics simulator in order to generate a training set of subsurface forward models, and then performing machine learning using the training set to generate one or more proxy models, such as a forward proxy model and an inverse proxy model. The machine learning may be constrained using physics-based rules to better converge on the proxy models. In this way, the already-trained inverse proxy model may input the subsurface process data in order to generate potential inverse models, which may then be used to perform subsurface operations in the subsurface.

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