Research on elastic parameter inversion method based on seismic facies-controlled deep learning network

IF 4.2 2区 地球科学 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Computers & Geosciences Pub Date : 2024-10-19 DOI:10.1016/j.cageo.2024.105739
Xiaoyan Zhai , Gang Gao , Haojie Liu , Tengfei Chen
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Abstract

Deep learning has been widely applied in the field of geophysics, and existing research literature has demonstrated that intelligent geophysical inversion methods have high vertical resolution but low horizontal resolution. The reason lies in the fact that existing horizontal constraint methods mainly adopt convolutional models, without fully considering other prior information of seismic data. Within the same sedimentary unit, seismic response characteristics vary gradually due to similar lithology and geological characteristics. Therefore, the seismic facies information extracted from seismic data is integrated into deep learning network to enhance the horizontal prediction stability of the network. Firstly, according to the spatial and temporal characteristics of seismic data, a fusion network of three-dimensional convolutional neural network (3D-CNN), gated recurrent unit (GRU) and attention mechanism is established to improve the vertical resolution of inversion results. Then, seismic facies classification of the target layer is achieved by applying the K-means clustering method. Subsequently, to improve the horizontal resolution of the inversion results, seismic facies classification is transformed into temporal encoding data using the position coding theory in natural language processing, to form a seismic facies-controlled deep learning network. Finally, the deep learning network is trained and tested in the thin interlayer model and practical application adopting a semi-supervised learning method. The results indicate that incorporating seismic facies-controlled technology in the deep learning network can improve the horizontal resolution of the inversion results.
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基于地震剖面控制深度学习网络的弹性参数反演方法研究
深度学习已广泛应用于地球物理领域,现有研究文献表明,智能地球物理反演方法具有较高的垂直分辨率,但水平分辨率较低。原因在于现有的水平约束方法主要采用卷积模型,没有充分考虑地震数据的其他先验信息。在同一沉积单元内,由于岩性和地质特征相似,地震响应特征也会逐渐发生变化。因此,将从地震数据中提取的地震面信息整合到深度学习网络中,以增强网络的水平预测稳定性。首先,根据地震数据的时空特征,建立三维卷积神经网络(3D-CNN)、门控递归单元(GRU)和注意力机制的融合网络,提高反演结果的垂直分辨率。然后,应用 K-means 聚类方法实现目标层的地震面分类。随后,为了提高反演结果的水平分辨率,利用自然语言处理中的位置编码理论将地震面分类转化为时间编码数据,形成地震面控制的深度学习网络。最后,采用半监督学习方法,在薄层间模型和实际应用中对深度学习网络进行了训练和测试。结果表明,在深度学习网络中加入地震面控制技术可以提高反演结果的水平分辨率。
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来源期刊
Computers & Geosciences
Computers & Geosciences 地学-地球科学综合
CiteScore
9.30
自引率
6.80%
发文量
164
审稿时长
3.4 months
期刊介绍: Computers & Geosciences publishes high impact, original research at the interface between Computer Sciences and Geosciences. Publications should apply modern computer science paradigms, whether computational or informatics-based, to address problems in the geosciences.
期刊最新文献
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