Litcius/Paper detail

Deep learning assisted well log inversion for fracture identification

Miao Tian, Bingtao Li, Huaimin Xu, Dezhi Yan, Yining Gao, Xiaozheng Lang

2020Geophysical Prospecting28 citationsDOI

Abstract

ABSTRACT Manual fracture identification methods based on cores and image logging pseudo‐pictures are limited by the expense and the amount of data. In this paper, we propose an integrated workflow, which takes the fracture identification as an end‐to‐end project, to combine the boundary detection and the deep learning classification to recognize fractured zones with accurate locations and reasonable thickness. We first apply the discrete wavelet transform algorithm and a boundary detection method named changing point detection to enhance the fracture sensibility of acoustic logs and segment the whole logging interval into non‐overlapping subsections by estimating boundaries. The deep neural network based auto‐encoders and the convolutional neural network classifier are then implemented to extract the hidden information from logs and categorize the subsections as the fractured or non‐fractured zones. To validate the feasibility of this workflow, we apply it to the logging data from a real well. Compare with the benchmarks provided by the support vector machine , random forest and Adaboost model, the one‐dimensional well profile predicted by the proposed changing point detection‐deep learning classifier is more consistent with the manual identification result.

Topics & Concepts

Computer scienceArtificial intelligenceConvolutional neural networkDeep learningPattern recognition (psychology)WorkflowRandom forestSupport vector machineWell loggingArtificial neural networkNaive Bayes classifierGeologyMachine learningData miningGeophysicsDatabaseDrilling and Well EngineeringSeismic Imaging and Inversion TechniquesGeophysical Methods and Applications