Deep-learning-based natural fracture identification method through seismic multi-attribute data: a case study from the Bozi-Dabei area of the Kuqa Basin, China

IF 2 3区 地球科学 Q3 GEOSCIENCES, MULTIDISCIPLINARY
Yongliang Tang, Dong Chen, Hucheng Deng, Fenglai Yang, Haiyan Ding, Yuyong Yang, Cuili Wang, Xiaofei Hu, Naidong Chen, Chuan Luo, Ming Tang, Yu Du
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Abstract

Fractures play a crucial role in tight sandstone gas reservoirs with low permeability and low effective porosity. If open, they not only significantly increase the permeability of the reservoir but also serve as channels connecting the storage space. Among numerous fracture identification methods, seismic data provide unique advantages for fracture identification owing to the provision of three-dimensional information between wells. How to accurately identify the development of fractures in geological bodies between wells using seismic data is a major challenge. In this study, a tight sandstone gas reservoir in the Kuqa Basin (China) was used as an example for identifying reservoir fractures using deep-learning-based method. First, a feasibility analysis is necessary. Intersection analysis between the fracture density and seismic attributes (the characteristics of frequency, amplitude, phase, and other aspects of seismic signals) indicates that there is a correlation between the two when the fracture density exceeds a certain degree. The development of fractures is closely related to the lithology and structure, indirectly affecting differences in seismic attributes. This indicates that the use of seismic attributes for fracture identification is feasible and reasonable. Subsequently, the effective fracture density data obtained from imaging logging were used as label data, and the optimized seismic attribute near the well data were used as feature data to construct a fracture identification sample dataset. Based on a feed-forward neural network algorithm combined with natural fracture density and effectiveness control factor constraints, a trained identification model was obtained. The identification model was applied to seismic multi-attribute data for the entire work area. Finally, the accuracy of the results from the training, testing, and validation datasets were used to determine the effectiveness of the method. The relationship between the fracture identification results and the location of the fractures in the target reservoir was used to determine the reasonableness of the results. The results indicate that there is a certain relationship between multiple seismic attributes and fracture development, which can be established using deep learning models. Furthermore, the deep-learning-based seismic data fracture identification method can effectively identify fractures in the three-dimensional space of reservoirs.
基于深度学习的地震多属性数据天然断裂识别方法:中国库车盆地博孜-大北地区案例研究
在低渗透率和低有效孔隙度的致密砂岩气藏中,裂缝起着至关重要的作用。如果裂缝开放,不仅能显著提高储层的渗透率,还能成为连接储集空间的通道。在众多的裂缝识别方法中,地震数据由于可以提供井间三维信息,为裂缝识别提供了独特的优势。如何利用地震数据准确识别井间地质体的裂缝发育情况是一大挑战。本研究以中国库车盆地致密砂岩气藏为例,采用基于深度学习的方法识别储层裂缝。首先,需要进行可行性分析。裂缝密度与地震属性(地震信号的频率、振幅、相位等特征)的交集分析表明,当裂缝密度超过一定程度时,两者之间存在相关性。裂缝的发育与岩性和构造密切相关,间接影响地震属性的差异。这说明利用地震属性进行断裂识别是可行的、合理的。随后,以成像测井获得的有效裂缝密度数据为标签数据,以优化后的近井地震属性数据为特征数据,构建了裂缝识别样本数据集。基于前馈神经网络算法,结合天然裂缝密度和有效性控制因子约束,得到了训练有素的识别模型。该识别模型被应用于整个工作区的地震多属性数据。最后,利用训练、测试和验证数据集结果的准确性来确定该方法的有效性。裂缝识别结果与目标储层中裂缝位置之间的关系用于确定结果的合理性。结果表明,多种地震属性与裂缝发育之间存在一定的关系,可以利用深度学习模型建立这种关系。此外,基于深度学习的地震数据裂缝识别方法能够有效识别储层三维空间中的裂缝。
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来源期刊
Frontiers in Earth Science
Frontiers in Earth Science Earth and Planetary Sciences-General Earth and Planetary Sciences
CiteScore
3.50
自引率
10.30%
发文量
2076
审稿时长
12 weeks
期刊介绍: Frontiers in Earth Science is an open-access journal that aims to bring together and publish on a single platform the best research dedicated to our planet. This platform hosts the rapidly growing and continuously expanding domains in Earth Science, involving the lithosphere (including the geosciences spectrum), the hydrosphere (including marine geosciences and hydrology, complementing the existing Frontiers journal on Marine Science) and the atmosphere (including meteorology and climatology). As such, Frontiers in Earth Science focuses on the countless processes operating within and among the major spheres constituting our planet. In turn, the understanding of these processes provides the theoretical background to better use the available resources and to face the major environmental challenges (including earthquakes, tsunamis, eruptions, floods, landslides, climate changes, extreme meteorological events): this is where interdependent processes meet, requiring a holistic view to better live on and with our planet. The journal welcomes outstanding contributions in any domain of Earth Science. The open-access model developed by Frontiers offers a fast, efficient, timely and dynamic alternative to traditional publication formats. The journal has 20 specialty sections at the first tier, each acting as an independent journal with a full editorial board. The traditional peer-review process is adapted to guarantee fairness and efficiency using a thorough paperless process, with real-time author-reviewer-editor interactions, collaborative reviewer mandates to maximize quality, and reviewer disclosure after article acceptance. While maintaining a rigorous peer-review, this system allows for a process whereby accepted articles are published online on average 90 days after submission. General Commentary articles as well as Book Reviews in Frontiers in Earth Science are only accepted upon invitation.
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