Unsupervised domain adaptation using maximum mean discrepancy optimization for lithology identification

Author:

Chang Ji1,Li Jing1,Kang Yu2ORCID,Lv Wenjun2,Xu Ting1,Li Zerui3,Xing Zheng Wei4ORCID,Han Hongwei5,Liu Haining5

Affiliation:

1. University of Science and Technology of China, Department of Automation, Hefei 230027, China..

2. University of Science and Technology of China, Department of Automation, Hefei 230027, China and University of Science and Technology of China, Institute of Advanced Technology, Hefei 230027, China.(corresponding author); (corresponding author).

3. Institute of Artificial Intelligence, Hefei Comprehensive National Science Center, Hefei 230088, China..

4. Western Sydney University, School of Computer, Data and Mathematical Sciences, Sydney 2751, Australia..

5. SINOPEC Group, Shengli Geophysical Research Institute, Dongying 257022, China..

Abstract

Lithology identification plays an essential role in geologic exploration and reservoir evaluation. In recent years, machine-learning-based logging lithology identification has received considerable attention due to its ability to fit complex models. Existing work develops machine-learning models under the assumption that the data gathered from different wells are from the same probability distribution, so that the model trained on data from old wells can be directly applied to predict the lithologies of a new well without losing accuracy. In fact, due to variations in sedimentary environment and well-logging technique, the data from different wells may not have the same probability distribution. Therefore, such a direct application is unreliable. To prevent the accuracy from being reduced by the distribution difference, we integrate the unsupervised domain adaptation method into lithology identification, under the assumption that no lithology labels are available on a new well. Specifically, we have developed a two-flow multilayer neural network. We train our network with a maximum mean discrepancy optimization, and the training process is interrupted by an early stopping criterion. These methods ensure that the feature representations learned by our network are domain invariant and discriminative. Our method is evaluated from multiple perspectives on a total of 21 wells located in the Jiyang depression, Bohai Bay Basin. The experimental results demonstrate that our method effectively mitigates the performance degradation caused by data distribution differences and outperforms the baselines by approximately 10%.

Funder

Fundamental Research Funds for the Central Universities

SINOPEC Programmes for Science and Technology Development

Major Science and Technology Project of Anhui Province

National Key Research and Development Project of China

National Natural Science Foundation of China

Publisher

Society of Exploration Geophysicists

Subject

Geochemistry and Petrology,Geophysics

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