Missing data interpolation in well logs based on generative adversarial network and improved krill herd algorithm

Fengtao Qu , Yuqiang Xu , Hualin Liao , Jiansheng Liu , Yanfeng Geng , Lei Han
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Abstract

Accurate logging data is crucial in geology and petroleum engineering for tasks such as geological modelling, reservoir simulation, and decision-making regarding well repair, water injection, and oil recovery. However, logging instrument failure occurs due to complex conditions such as high temperature and pressure, resulting in incomplete data and posing challenges for reservoir evaluation and development. The existing interpolation methods are primarily based on statistical and machine learning methods, lacking deep mining of hidden associations between logging items. Aiming at the problem of incomplete well-logging data, an incomplete well-logging data interpolation method based on a generative adversarial network and an improved krill herd algorithm is proposed. The results show that the proposed method has stable interpolation for well-logging data missing with different missing rates and any missing positions. Compared with other GANs (GAN, WGAN, and WGAN-GP), the RMSE of the proposed method is reduced by 57.63%, and the R2 is increased by 7.94%. The proposed method is compared with statistical methods (averaging and cubic spline interpolation) and machine learning methods (k-nearest neighbor, support vector machine, and random forest). The experimental results show that the proposed model has stable reconstruction performance for logging data with different missing rates and any missing positions.
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基于生成对抗网络和改进磷虾群算法的测井缺失数据插值
在地质和石油工程中,准确的测井数据对于地质建模、油藏模拟以及修井、注水和采油决策等任务至关重要。然而,由于高温高压等复杂条件,测井仪器会发生故障,导致数据不完整,给储层评价和开发带来了挑战。现有的插值方法主要基于统计和机器学习方法,缺乏对日志项之间隐藏关联的深度挖掘。针对测井数据不完备的问题,提出了一种基于生成对抗网络和改进磷虾群算法的不完备测井数据插值方法。结果表明,该方法对不同缺失率和任意缺失位置的测井数据都具有稳定的插值效果。与其他GAN (GAN、WGAN和WGAN- gp)相比,该方法的RMSE降低了57.63%,R2提高了7.94%。将该方法与统计方法(平均和三次样条插值)和机器学习方法(k近邻、支持向量机和随机森林)进行了比较。实验结果表明,该模型对不同缺失率和任意缺失位置的测井数据具有稳定的重建性能。
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