Litcius/Paper detail

Salt structure identification based on U-net model with target flip, multiple distillation and self-distillation methods

Keran Li, Jinmin Song, Shun Xia, Bei-wei Luo, Junke Wang, Yong Zhong, Shan Ren

2023Frontiers in Earth Science11 citationsDOIOpen Access PDF

Abstract

Salt structures are crucial targets in oil and gas seismic exploitation so that one fast, automatic and accurate method is necessary for accelerating salt structure identification in the exploitation process. With the development of machine-learning algorithms, geophysical scientists adopt machine-learning models to solve problems. Most machine-learning models in geophysics require mass data in the model training. However, the number of seismic images is limited and the class-imbalance is often existed in actuality, causing the machine-learning algorithms to be difficult to apply in exploitation projects. To overcome the challenge of the seismic images’ volume, this work collects a two-dimensional (2D) seismic images dataset and trains several U-net models with the methods of inversion and multiple distillation. Moreover, self-distillation is introduced to boost the model’s performance. A test using a public seismic dataset and the case of salt detection in the Hith evaporite in southern United Arab Emirates and western Oman shows the distillation method is able to identify salt structures automatically and accurately, which has great potential for application in actual exploitation.

Topics & Concepts

DistillationComputer scienceMachine learningArtificial intelligenceEvaporiteIdentification (biology)Process (computing)TrainAlgorithmData miningGeologyGeographyChemistryCartographyStructural basinBiologyBotanyOperating systemPaleontologyOrganic chemistrySeismic Imaging and Inversion TechniquesHydrocarbon exploration and reservoir analysisHydraulic Fracturing and Reservoir Analysis