Analysis of Microscopic Remaining Oil Based on the Fluorescence Image and Deep Learning.

IF 2.6 4区 化学 Q2 BIOCHEMICAL RESEARCH METHODS
Yimin Zhang, Chengyan Lin, Lihua Ren
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引用次数: 0

Abstract

Fossil fuels like oil and natural gas continue to be the primary sources of global energy. Enhancing hydrocarbon recovery from exploited reservoirs has been a major scientific concern in the petroleum industry. Following extended exploitation, the reservoir's oil-water dynamics become intricate, thereby complicating petroleum and natural gas extraction. Pore-scale analysis of microscopic remaining oil (micro-remaining oil) offers theoretical underpinning for enhancing production from high-water-cut oil reservoirs. Fluorescence thin-section analysis allows for the direct evaluation of reservoir oil-bearing properties using oil-containing samples, providing insights into the occurrence and distribution patterns of micro-remaining oil without requiring time-consuming core displacement experiments. The high resolution of fluorescence images further establishes this technique as a representative method for studying micro-remaining oil. However, conventional fluorescence image analysis methods are often subjective and labor-intensive. To address this limitation, we trained four deep learning networks-U-Net, ResU-Net, ScSEU-Net, and Unet++-and applied them innovatively to automate fluorescence image segmentation. Evaluation of network performance via statistical metrics and visual observation indicated that all four networks achieved high segmentation accuracy, particularly ResU-Net, which showed robustness against over-segmentation, under-segmentation, and image noise. Finally, leveraging optimal segmentation results, we conducted quantitative analyses of oil saturation, micro-remaining oil patterns, and pore occupancy. The study demonstrated that ternary composite agents substantially decreased the presence of cluster, film, and adsorbed oils by reducing the oil-water mobility ratio and lowering oil-water interfacial tension. Primarily, these agents displaced crude oil from pores larger than 60 micrometers in an equivalent radius, leading to a significant reduction in their content. Nevertheless, substantial quantities of micro-remaining oil are still confined in pores smaller than 50 micrometers in an equivalent radius, emphasizing the need for attention during subsequent development adjustments. Our research has notably improved the efficiency and accuracy of fluorescence image analysis, effectively supporting the enhancement of recovery in high-water-cut oil reservoirs.

基于荧光图像和深度学习的微观残油分析
石油和天然气等化石燃料仍然是全球能源的主要来源。提高已开采储层的碳氢化合物采收率一直是石油工业关注的主要科学问题。经过长期开采,储层的油水动力学变得错综复杂,从而使石油和天然气的开采变得更加复杂。对微观剩余油(微剩余油)的孔隙尺度分析为提高高水切变油藏的产量提供了理论依据。通过荧光薄片分析,可以利用含油样本直接评估储层的含油特性,从而深入了解微量剩余油的出现和分布模式,而无需进行耗时的岩心置换实验。荧光图像的高分辨率进一步使该技术成为研究微剩余油的代表性方法。然而,传统的荧光图像分析方法往往主观且耗费人力。为了解决这一局限性,我们训练了四种深度学习网络--U-Net、ResU-Net、ScSEU-Net 和 Unet++,并将它们创新性地应用于荧光图像的自动分割。通过统计指标和视觉观察对网络性能进行的评估表明,所有四个网络都达到了很高的分割精度,尤其是 ResU-Net,它对过度分割、分割不足和图像噪声都表现出了鲁棒性。最后,利用最佳分割结果,我们对油类饱和度、微量残留油模式和孔隙占有率进行了定量分析。研究表明,三元复合剂通过降低油水流动比和油水界面张力,大大减少了团聚油、薄膜油和吸附油的存在。这些药剂主要是将原油从等效半径大于 60 微米的孔隙中排出,从而显著降低了原油含量。尽管如此,仍有大量微量残油滞留在等效半径小于 50 微米的孔隙中,这就强调了在后续开发调整中需要注意的问题。我们的研究显著提高了荧光图像分析的效率和准确性,为提高高水位断裂油藏的采收率提供了有效支持。
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来源期刊
Journal of Fluorescence
Journal of Fluorescence 化学-分析化学
CiteScore
4.60
自引率
7.40%
发文量
203
审稿时长
5.4 months
期刊介绍: Journal of Fluorescence is an international forum for the publication of peer-reviewed original articles that advance the practice of this established spectroscopic technique. Topics covered include advances in theory/and or data analysis, studies of the photophysics of aromatic molecules, solvent, and environmental effects, development of stationary or time-resolved measurements, advances in fluorescence microscopy, imaging, photobleaching/recovery measurements, and/or phosphorescence for studies of cell biology, chemical biology and the advanced uses of fluorescence in flow cytometry/analysis, immunology, high throughput screening/drug discovery, DNA sequencing/arrays, genomics and proteomics. Typical applications might include studies of macromolecular dynamics and conformation, intracellular chemistry, and gene expression. The journal also publishes papers that describe the synthesis and characterization of new fluorophores, particularly those displaying unique sensitivities and/or optical properties. In addition to original articles, the Journal also publishes reviews, rapid communications, short communications, letters to the editor, topical news articles, and technical and design notes.
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