Abstract

Abstract Multiple regression analysis (MRA), artificial neural network (ANN), and support vector machine (SVM) were applied to two case studies to contrast the application results. Case 1 is the fracture prediction based on studies of 34 samples from Wells An1 and An2 in the Anpeng Oilfield of the Biyang Sag, Nanxiang Basin. Case 2 is the gassiness evaluation of 40 samples in tight sandstones in the Tabamiao area, Ordos Basin. The results are as follows: (1) The nonlinear methods, SVM and ANN, are far superior to the linear method, MRA; (2) SVM presents absolute superiority due to zero error and fast speed, indicating that it is the best machine-learning method till date; (3) ANN is almost as accurate as SVM in Case 1, but ANN is less precise than SVM in Case 2; (4) MRA is fast and can establish the order of dependence between the study target and its related multi-geological-factors that cannot be estimated using SVM and ANN. Therefore, SVM is recommended when describing any complex relationship between a target and its related geological factors and MRA can be used as an auxiliary tool.

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