Sparse data-driven knowledge discovery for interpretable prediction of permeability in tight sandstones
Lulu Xu(Jilin University), Zhenxue Dai(Qingdao University of Science and Technology), Shangxian Yin(North China Institute of Science and Technology), Hung Vo Thanh(Seoul National University), Kenneth C. Carroll(New Mexico State University), Zhengyang Du(Jilin University), Meifeng Cai(University of Science and Technology Beijing), Mohamad Reza Soltanian(University of Cincinnati), Shuning Dong(China Coal Technology and Engineering Group Corp (China))
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