Pu Wang , Yi-An Cui , Lin Zhou , Jing-Ye Li , Xin-Peng Pan , Ya Sun , Jian-Xin Liu
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引用次数: 0
摘要
叠前地震反演是研究含油气储层特征的有效方法。在叠前反演中,多参数应用是确定储层岩性和流体的关键。然而,多参数反演可能会带来参数耦合效应,破坏反演的稳定性。此外,地质结构的横向识别精度也备受关注。为应对这些挑战,本研究提出了一种考虑角-集差的多任务学习网络。深度学习网络通常被认为是一个黑盒子,不清楚它能学到什么。然而,引入角度聚集差可以迫使深度学习网络关注横向差异,从而提高预测剖面的横向精度。拟议的深度学习网络包括输入和输出块。首先,角度采集和角度采集差值分别被输入到两个独立的输入块中,这两个输入块分别采用 ResNet 架构和 Unet 架构。然后,基于多任务学习的思想,使用具有相同卷积网络层的三个独立输出块,同时预测三个弹性参数,包括 P 波和 S 波速度以及密度。实验和现场数据测试证明了所提方法在提高地震弹性参数预测精度方面的有效性。
Multi-task learning for seismic elastic parameter inversion with the lateral constraint of angle-gather difference
Pre-stack seismic inversion is an effective way to investigate the characteristics of hydrocarbon-bearing reservoirs. Multi-parameter application is the key to identifying reservoir lithology and fluid in pre-stack inversion. However, multi-parameter inversion may bring coupling effects on the parameters and destabilize the inversion. In addition, the lateral recognition accuracy of geological structures receives great attention. To address these challenges, a multi-task learning network considering the angle-gather difference is proposed in this work. The deep learning network is usually assumed as a black box and it is unclear what it can learn. However, the introduction of angle-gather difference can force the deep learning network to focus on the lateral differences, thus improving the lateral accuracy of the prediction profile. The proposed deep learning network includes input and output blocks. First, angle gathers and the angle-gather difference are fed into two separate input blocks with ResNet architecture and Unet architecture, respectively. Then, three elastic parameters, including P- and S-wave velocities and density, are simultaneously predicted based on the idea of multi-task learning by using three separate output blocks with the same convolutional network layers. Experimental and field data tests demonstrate the effectiveness of the proposed method in improving the prediction accuracy of seismic elastic parameters.
期刊介绍:
Petroleum Science is the only English journal in China on petroleum science and technology that is intended for professionals engaged in petroleum science research and technical applications all over the world, as well as the managerial personnel of oil companies. It covers petroleum geology, petroleum geophysics, petroleum engineering, petrochemistry & chemical engineering, petroleum mechanics, and economic management. It aims to introduce the latest results in oil industry research in China, promote cooperation in petroleum science research between China and the rest of the world, and build a bridge for scientific communication between China and the world.