Automated stratigraphic correlation of well logs using Attention Based Dense Network

Yang Yang , Jingyu Wang , Zhuo Li , Naihao Liu , Rongchang Liu , Jinghuai Gao , Tao Wei
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引用次数: 0

Abstract

The stratigraphic correlation of well logs plays an essential role in characterizing subsurface reservoirs. However, it suffers from a small amount of training data and expensive computing time. In this work, we propose the Attention Based Dense Network (ASDNet) for the stratigraphic correlation of well logs. To implement the suggested model, we first employ the attention mechanism to the input well logs, which can effectively generate the weighted well logs to serve for further feature extraction. Subsequently, the DenseNet is utilized to achieve good feature reuse and avoid gradient vanishing. After model training, we employ the ASDNet to the testing data set and evaluate its performance based on the well log data set from Northwest China. Finally, the numerical results demonstrate that the suggested ASDNet provides higher prediction accuracy for automated stratigraphic correlation of well logs than state-of-the-art contrastive UNet and SegNet.

基于注意力密集网络的测井资料自动地层对比
测井的地层对比在表征地下储层方面起着至关重要的作用。然而,它受到少量训练数据和昂贵计算时间的影响。在这项工作中,我们提出了用于测井地层对比的基于注意力的密集网络(ASDNet)。为了实现所提出的模型,我们首先采用了对输入测井曲线的关注机制,该机制可以有效地生成加权测井曲线,用于进一步的特征提取。随后,利用DenseNet来实现良好的特征重用并避免梯度消失。在模型训练后,我们将ASDNet应用于测试数据集,并基于中国西北地区的测井数据集对其性能进行评估。最后,数值结果表明,与最先进的对比UNet和SegNet相比,所提出的ASDNet为测井的自动地层对比提供了更高的预测精度。
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