Well Logging Based Lithology Identification Model Establishment Under Data Drift: A Transfer Learning Method

Recent years have witnessed the development of the applications of machine learning technologies to well logging-based lithology identification. Most of the existing work assumes that the well loggings gathered from different wells share the same probability distribution; however, the variations in...

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Main Authors: Haining Liu, Yuping Wu, Yingchang Cao, Wenjun Lv, Hongwei Han, Zerui Li, Ji Chang
Format: Article
Language:English
Published: MDPI AG 2020-06-01
Series:Sensors
Subjects:
Online Access:https://www.mdpi.com/1424-8220/20/13/3643
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spelling doaj-6463a58efdeb4cf586c625a117426fa92020-11-25T03:17:10ZengMDPI AGSensors1424-82202020-06-01203643364310.3390/s20133643Well Logging Based Lithology Identification Model Establishment Under Data Drift: A Transfer Learning MethodHaining Liu0Yuping Wu1Yingchang Cao2Wenjun Lv3Hongwei Han4Zerui Li5Ji Chang6School of Geosciences, China University of Petroleum, Qingdao 266580, ChinaSchool of Electrical Engineering, Yanshan University, Qinhuangdao 066004, ChinaSchool of Geosciences, China University of Petroleum, Qingdao 266580, ChinaDepartment of Automation, University of Science and Technology of China, Hefei 230027, ChinaShengli Geophysical Research Institute of SINOPEC, Dongying 257022, ChinaDepartment of Automation, University of Science and Technology of China, Hefei 230027, ChinaDepartment of Automation, University of Science and Technology of China, Hefei 230027, ChinaRecent years have witnessed the development of the applications of machine learning technologies to well logging-based lithology identification. Most of the existing work assumes that the well loggings gathered from different wells share the same probability distribution; however, the variations in sedimentary environment and well-logging technique might cause the data drift problem; i.e., data of different wells have different probability distributions. Therefore, the model trained on old wells does not perform well in predicting the lithologies in newly-coming wells, which motivates us to propose a transfer learning method named the data drift joint adaptation extreme learning machine (DDJA-ELM) to increase the accuracy of the old model applying to new wells. In such a method, three key points, i.e., the project mean maximum mean discrepancy, joint distribution domain adaptation, and manifold regularization, are incorporated into extreme learning machine. As found experimentally in multiple wells in Jiyang Depression, Bohai Bay Basin, DDJA-ELM could significantly increase the accuracy of an old model when identifying the lithologies in new wells.https://www.mdpi.com/1424-8220/20/13/3643lithology identificationdomain adaptationmanifold regularizationprojected maximum mean discrepancyextreme learning machine.
collection DOAJ
language English
format Article
sources DOAJ
author Haining Liu
Yuping Wu
Yingchang Cao
Wenjun Lv
Hongwei Han
Zerui Li
Ji Chang
spellingShingle Haining Liu
Yuping Wu
Yingchang Cao
Wenjun Lv
Hongwei Han
Zerui Li
Ji Chang
Well Logging Based Lithology Identification Model Establishment Under Data Drift: A Transfer Learning Method
Sensors
lithology identification
domain adaptation
manifold regularization
projected maximum mean discrepancy
extreme learning machine.
author_facet Haining Liu
Yuping Wu
Yingchang Cao
Wenjun Lv
Hongwei Han
Zerui Li
Ji Chang
author_sort Haining Liu
title Well Logging Based Lithology Identification Model Establishment Under Data Drift: A Transfer Learning Method
title_short Well Logging Based Lithology Identification Model Establishment Under Data Drift: A Transfer Learning Method
title_full Well Logging Based Lithology Identification Model Establishment Under Data Drift: A Transfer Learning Method
title_fullStr Well Logging Based Lithology Identification Model Establishment Under Data Drift: A Transfer Learning Method
title_full_unstemmed Well Logging Based Lithology Identification Model Establishment Under Data Drift: A Transfer Learning Method
title_sort well logging based lithology identification model establishment under data drift: a transfer learning method
publisher MDPI AG
series Sensors
issn 1424-8220
publishDate 2020-06-01
description Recent years have witnessed the development of the applications of machine learning technologies to well logging-based lithology identification. Most of the existing work assumes that the well loggings gathered from different wells share the same probability distribution; however, the variations in sedimentary environment and well-logging technique might cause the data drift problem; i.e., data of different wells have different probability distributions. Therefore, the model trained on old wells does not perform well in predicting the lithologies in newly-coming wells, which motivates us to propose a transfer learning method named the data drift joint adaptation extreme learning machine (DDJA-ELM) to increase the accuracy of the old model applying to new wells. In such a method, three key points, i.e., the project mean maximum mean discrepancy, joint distribution domain adaptation, and manifold regularization, are incorporated into extreme learning machine. As found experimentally in multiple wells in Jiyang Depression, Bohai Bay Basin, DDJA-ELM could significantly increase the accuracy of an old model when identifying the lithologies in new wells.
topic lithology identification
domain adaptation
manifold regularization
projected maximum mean discrepancy
extreme learning machine.
url https://www.mdpi.com/1424-8220/20/13/3643
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AT wenjunlv wellloggingbasedlithologyidentificationmodelestablishmentunderdatadriftatransferlearningmethod
AT hongweihan wellloggingbasedlithologyidentificationmodelestablishmentunderdatadriftatransferlearningmethod
AT zeruili wellloggingbasedlithologyidentificationmodelestablishmentunderdatadriftatransferlearningmethod
AT jichang wellloggingbasedlithologyidentificationmodelestablishmentunderdatadriftatransferlearningmethod
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