A Deep Transfer Learning Framework for Seismic Data Analysis: A Case Study on Bright Spot Detection

dc.contributor.authorEl-Zini, Julia
dc.contributor.authorRizk, Yara
dc.contributor.authorAwad, Mariette
dc.contributor.departmentDepartment of Electrical and Computer Engineering
dc.contributor.facultyMaroun Semaan Faculty of Engineering and Architecture (MSFEA)
dc.contributor.institutionAmerican University of Beirut
dc.date.accessioned2025-01-24T11:30:06Z
dc.date.available2025-01-24T11:30:06Z
dc.date.issued2020
dc.description.abstractBright spots, strong indicators of the existence of hydrocarbon accumulations, have been primarily used by geophysicists in oil and gas exploration. Recently, machine-learning algorithms, adopted to automate bright spot detection, have mainly relied on feature extraction and shallow classification workflows to achieve an 85.4% F1 score at best, on 2-D seismic data. Deep neural networks have proved their effectiveness in image classification applications, outperforming humans in some instances, but have not been applied to bright spot detection yet. However, their data-hungry nature poses a challenge in domains suffering from expensive data acquisition, such as seismic data analysis problems; they generally require millions of training samples before achieving good performance. In this article, we implement SeisNet, a convolutional neural network with a 'butterfly' architecture that overcame the limited data challenge by implementing data augmentation and inductive transfer-learning techniques. Moreover, we adopt a novel formulation that allows us to detect bright spots and estimate their volume. Our approach was tested against different pretraining and transfer-learning methods and was shown to outperform other approaches in the literature by achieving a 95.6% F1 score on bright spot detection. Our model accurately predicted the volume of the bright spot with an average absolute error that is not more than 0.04% of the total volume of the seismic image. This article is an important step in establishing pretrained networks for other seismic applications such as earthquake prediction; our domain-specific pretrained network, proven to outperform state-of-The-Art pretrained networks on bright spot detection, may be used to jump-start the training of deep models on other seismic problems. © 1980-2012 IEEE.
dc.identifier.doihttps://doi.org/10.1109/TGRS.2019.2950888
dc.identifier.eid2-s2.0-85084145056
dc.identifier.urihttp://hdl.handle.net/10938/27373
dc.language.isoen
dc.publisherInstitute of Electrical and Electronics Engineers Inc.
dc.relation.ispartofIEEE Transactions on Geoscience and Remote Sensing
dc.sourceScopus
dc.subjectBright spot detection
dc.subjectConvolutional neural networks (cnns)
dc.subjectDeep learning
dc.subjectOil and gas
dc.subjectPretrained model
dc.subjectReservoir identification and estimation
dc.subjectSeismic analysis
dc.subjectTransfer learning
dc.subjectConvolutional neural networks
dc.subjectData acquisition
dc.subjectData handling
dc.subjectDeep neural networks
dc.subjectEarthquakes
dc.subjectFeature extraction
dc.subjectGeophysical prospecting
dc.subjectInformation analysis
dc.subjectLearning algorithms
dc.subjectLearning systems
dc.subjectPetroleum prospecting
dc.subjectSeismic response
dc.subjectSeismic waves
dc.subjectAverage absolute error
dc.subjectEarthquake prediction
dc.subjectHydrocarbon accumulation
dc.subjectLearning techniques
dc.subjectOil and gas exploration
dc.subjectSeismic application
dc.subjectSeismic data analysis
dc.subjectTransfer learning methods
dc.subjectAlgorithm
dc.subjectArtificial neural network
dc.subjectData assimilation
dc.subjectData processing
dc.subjectEarthquake event
dc.subjectExtraction method
dc.subjectHydrocarbon exploration
dc.subjectImage classification
dc.subjectMachine learning
dc.subjectSeismic data
dc.subjectTwo-dimensional modeling
dc.titleA Deep Transfer Learning Framework for Seismic Data Analysis: A Case Study on Bright Spot Detection
dc.typeArticle

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