Intelligent Microfluidics Research on Relative Permeability Measurement and Prediction of Two-Phase Flow in Micropores

Author:

Song Hongqing12ORCID,Liu Changchun1,Lao Junming12,Wang Jiulong23,Du Shuyi12,Yu Mingxu4

Affiliation:

1. School of Civil and Resource Engineering, University of Science and Technology Beijing, Beijing 100083, China

2. National and Local Joint Engineering Laboratory of Big Data Analysis and Computing Technology, Beijing 100190, China

3. Computer Network Information Center, Chinese Academy of Sciences, Beijing 100190, China

4. Beilong Zeda (Beijing) Data Technology Co., Ltd., Beijing 100190, China

Abstract

Relative permeability is a key index in resource exploitation, energy development, environmental monitoring, and other fields. However, the current determination methods of relative permeability are inefficient and invisible without considering wetting order and pore structure characteristics either. In this study, microfluidic experiments were designed for figuring out key factors impacting on the two-phase relative permeability. The optimized intelligent image recognition was established for saturation extraction. The deep learning was conducted for the prediction of two-phase permeability based on the inputs from microfluidic experiments and image recognition and optimized. Results revealed that phase saturation, wetting order, and pore topology were the key factors influencing the two-phase relative permeability, with the importance of 38.22%, 34.84%, and 26.94%, respectively. The deep learning-based relative permeability model performed well, with MSE < 0.05 and operational efficiency of 3 ms/epoch. Aiming at relative permeability model optimization, on the one hand, the dividing ratio of training set and testing set for flooding phase relative permeability prediction achieved the highest prediction accuracy at 7 : 3, while that for displaced phase was 6 : 4. On the other hand, tanh() activation function performed 40% more accurate than the sigmoid() activation function.

Funder

National Natural Science Foundation of China

Publisher

Hindawi Limited

Subject

General Earth and Planetary Sciences

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