Journal of Petroleum Science & Engineering2022,Vol.21311.DOI:10.1016/j.petrol.2022.110310

Estimating elastic parameters from digital rock images based on multi-task learning with multi-gate mixture-of-experts

Zhiyu Hou Panping Cao
Journal of Petroleum Science & Engineering2022,Vol.21311.DOI:10.1016/j.petrol.2022.110310

Estimating elastic parameters from digital rock images based on multi-task learning with multi-gate mixture-of-experts

Zhiyu Hou 1Panping Cao1
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作者信息

  • 1. School of Geosciences, China University of Petroleum (East China), Qingdao, 266580, China
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Abstract

Digital rock physics analysis has become an effective approach complementary to traditional experimental physics in estimating elastic parameters from digital rock images to study the relationship between the grain structure and rock mechanical properties. However, conventional numerical simulation requires lots of computational time and GB voxels memory. Recently, the convolutional neural network (CNN) has proven to be a successful method for estimating physical parameters from digital rock images, and multi-parameter simultaneous prediction using multi-task learning has been the focus of attention. But these methods don't achieve satisfactory results due to tasks' mutual interferences that affect network performances such as accuracy, robustness, and efficiency. To address these issues, a multi-task learning network with multi-gate mixture-of-experts was proposed to estimate elastic parameters from two-dimension digital rock images (MMOEROCK) in this paper. Parallel operational expert networks were used to replace traditional serial operational networks in order to reduce the mutual interferences of tasks. Gate networks were used to control the output weights of different expert networks in order to allow selective sharing among independent expert networks. The homoscedastic uncertainty loss function was used to automatically adjust the weight of each task loss function to improve network performance in searching for the optimal solution. The experimental results showed that the R~2-scores of the bulk modulus, shear modulus, P wave velocity, and S wave velocity could reach 0.89, 0.92, 0.92, and 0.91 on the validation set and 0.97, 0.96, 0.96, and 0.94 on the test set, respectively, and MMOEROCK afler fully training achieved an 800 speedup factor compared with the finite element method.

Key words

Deep learning/Digital rock physics/Elastic parameters estimating/Multi-task learning/MMOE

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出版年

2022
Journal of Petroleum Science & Engineering

Journal of Petroleum Science & Engineering

ISSN:0920-4105
被引量3
参考文献量42
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