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Cited article:

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Artificial Intelligence for Drilling Lost Circulation: A Systematic Literature Review

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A Model-Based Intelligent Adjustment Method of Toolface for Bent-Housing Motor

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Developing a geomechanics-modeling based method for lost circulation risk assessment: A case study in Bohai Bay, China

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Well log data super-resolution based on locally linear embedding

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