Machine learning based prediction for bulk porosity and static elastic modulus of Yungang Grottoes sandstone
Ruoyu Zhang,
Jizhong Huang,
Yuan Cheng
et al.
Abstract:In this work, four mainstream machine learning (ML) techniques are used to evaluate the bulk porosity and static elastic modulus of weathered Yungang Grottoes sandstone. Datasets are gathered from the experiments, which includes 432 groups effective experimental data including 8 inputs features. bulk porosity and static elastic modulus were considered as outputs to determine the weathering degrees of Yungang Grottoes sandstone. The 4 performance criteria were used to evaluate the ML models. Results demonstrate… Show more
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