4.7 Article

Evolution of Coal Microfracture by Cyclic Fracturing of Liquid Nitrogen Based on μCT and Convolutional Neural Networks

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SPRINGER WIEN
DOI: 10.1007/s00603-023-03649-w

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Coalbed methane (CBM); Liquid nitrogen (LN2); Cyclic fracturing; mu CT scanning; Deep learning

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Coalbed methane (CBM) is an important unconventional fuel source, and its efficient extraction is crucial for reducing greenhouse gas emissions and ensuring coal mine safety. This study utilized micro-computed tomography and deep learning to analyze the behavior of coal fractures under liquid nitrogen cyclic fracturing. The results showed that LN2 treatment can effectively damage the coal sample and promote fracture expansion. The study provides insights into the application of LN2 cyclic fracturing in CBM recovery.
Coalbed methane (CBM) is an important unconventional fuel source, and its efficient extraction is of great significance in reducing greenhouse gas emissions, energy requirements, and coal mine safety. Liquid nitrogen (LN2) fracturing is a popular super-cryogenic waterless fracturing method used for enhancing CBM recovery processes. Understanding the behavior of coal fractures under LN2 cyclic fracturing is crucial for revealing the fracture mechanism. In this study, we applied micro-computed tomography (mu CT) and the deep learning method to quantify the evolution of volume size, spatial distribution, connectivity, and thickness of 3D fractures in coal under LN2 cyclic fracturing. In addition, the spatial topological and geometric distribution of 3D fractures were further characterized by the pore network model (PNM). A coal microfracture segmentation method from a 2D U-Net model to a 3D U-Net model was proposed to segment fractures automatically and accurately with an average Dice coefficient of 0.942. The results show that LN2 treatment can effectively damage the coal sample and promote the expansion and formation of fractures. The porosity, fracture connectivity, and thickness increase with the number of LN2 cycles, and the increase in the first cycle is significantly higher than in the subsequent cycles. The PNM analysis indicates that the number and equivalent diameter of pores and throats, as well as the coordination numbers, increase with the cycles while the average throat length decreases. Furthermore, the increase in the size of fractures and the formation of large fractures would greatly reduce the P-wave velocity and weaken the uniaxial compressive strength, which decreases by 26.5% and 73.5% after four LN2 fracturing cycles, respectively. Finally, the mechanism of LN2 cyclic fracturing is discussed based on experimental results. The findings of this study provide a deeper understanding of the application of LN2 cyclic fracturing in CBM reservoir recovery.

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