生成对抗网络在随钻电阻率成像测井裂缝图像超分辨率中的应用

Application of a generative adversarial network for super-resolution of fracture images in LWD resistivity imaging logging

  • 摘要:
    目的 随钻电阻率成像测井技术能够直观呈现井壁附近地质体的图像,是精细评价地层参数的重要手段,在裂缝储层钻井中具有显著的地质导向作用。然而,受限于井地数据传输速率,其实时数据处理面临图像分辨率低的挑战,进而影响井壁裂缝的定性识别和参数的定量评价。针对这一问题,提出了一种基于生成对抗网络的图像超分辨率重建方法,以提高裂缝图像的清晰度。
    方法 基于生成对抗网络的基本框架,将生成对抗网络与残差密集块、通道注意力机制相结合,构建了一个23层深度生成器网络。利用钻头电阻率测井仪器RAB的实测数据构建了高分辨率存储数据图像与低分辨率实时数据图像的数据集。使用生成对抗网络对构建的图像数据集进行训练,通过优化批尺寸和学习率参数,获得了误差较小、精度较高的网络参数。利用训练完成的网络模型对实时数据进行超分辨率重建,使其分辨率接近存储数据。
    结果和结论 与传统方法相比,所提出的图像超分辨率智能重建方法使峰值信噪比和结构相似性指数分别提高了2.2 dB和0.6。在四倍降采样条件下,该算法仍能有效重建裂缝地质体的图像特征,显著提升了随钻实时图像的分辨率。该研究成果对提高钻井实时地质导向效果具有重要意义。

     

    Abstract:
    Objective The real-time Logging While Drilling (LWD) resistivity imaging technology visually presents the images of geological bodies near the wellbore, serving as an essential means for detailed evaluation of formation parameters and providing significant geological guidance in fractured reservoir drilling. However, constrained by the data transmission rate between the well and the surface, real-time data processing faces challenges of low image resolution, which adversely affects the qualitative identification of wellbore fractures and the quantitative evaluation of parameters. To address this issue, a generative adversarial network-based image super-resolution reconstruction method is proposed to enhance the clarity of fracture images.
    Methods Firstly, a 23-layer deep generator network was constructed basing on the main framework of generative adversarial networks (GAN), integrating GAN with Residual Dense Blocks (RDB) and Residual Attention Mechanism (RAM). A dataset of high-resolution stored data images and low-resolution real-time data images was constructed using the actual measurements data from the RAB resistivity logging tool. Then, the constructed image dataset was trained using GAN, and network parameters with smaller errors and higher accuracy were obtained by optimizing the batch size and learning rate parameters. Finally, the trained network model was then utilized for super-resolution reconstruction of real-time data, achieving a resolution close to that of the stored data.
    Results and Conclusions  It indicates that the proposed intelligent image super-resolution reconstruction method improves the peak signal-to-noise ratio (PSNR) and structural similarity index(SSIM) by 2.2 dB and 0.6, respectively, compared to traditional methods. Under fourfold down sampling, the algorithm can effectively reconstruct the image features of fractured geological bodies, dramatically enhancing the resolution of real-time LWD images. The method is of significant importance for improving the real-time geological guidance effect during drilling operations.

     

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