基于测井数据的岩石力学参数连续预测的少拍学习法

IF 3.7 3区 化学 Q2 CHEMISTRY, MULTIDISCIPLINARY ACS Omega Pub Date : 2024-11-15 DOI:10.1021/acsomega.4c0816410.1021/acsomega.4c08164
Weiguang Zhao, Shuxun Sang*, Sijie Han, Deqiang Cheng, Xiaozhi Zhou, Jinchao Zhang and Fuping Zhao, 
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引用次数: 0

摘要

地层序列在岩性和物理特征方面沿纵轴有明显的变化。获取地层岩石力学参数在垂直方向上的连续变化对于地层的详细特征描述至关重要,尤其是在储层中。此外,力学参数对建立岩石力学地层框架也至关重要。然而,现有的研究方法仅依靠少量岩石样本无法获得完整的地层岩石力学参数。本研究提出了一种利用地球物理测井数据连续预测地质序列内岩石力学参数的方法。该方法旨在解决岩石力学参数连续预测中样本稀缺和全局地质特征提取的问题。该方法实现了地层特征的连续提取、样品的生成和力学参数的预测。研究结果表明,测井自动编码器的地层特征提取器具有全局地层感知能力。地层特征提取器可以精确识别和定位地层性质变化的关键位置,如岩性转换和厚岩层中的异常部分。生成器生成的假岩石力学样本显示出与真样本相同的数据特征。具有提取地层特征能力的岩石力学参数预测模型在真实数据集上的表现明显优于传统模型(摩擦角和内聚力的均方误差分别为 17.2 和 12.65,平均绝对误差分别为 2.85 和 2.64,R2 值均为 0.91),在龙潭地层岩石力学参数实际预测任务中的计算结果也比传统模型更加合理。该研究为解决地质领域样本不足和地质参数连续预测问题提供了一个广泛适用的方法框架。
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Few-Shot Learning Method for Continuous Prediction of Rock Mechanical Parameters Based on Logging Data

The stratigraphic sequence displays pronounced variations in lithological and physical characteristics along the vertical axis. The acquisition of vertically continuous variations in stratigraphic rock mechanical parameters is essential for the detailed characterization of stratigraphy, particularly in reservoir layers. Moreover, mechanical parameters are essential for the establishment of a rock mechanical stratigraphic framework. However, the existing research methods cannot obtain the complete stratum rock mechanics parameters by relying solely on a small number of rock samples. In this study, a method for continuously predicting rock mechanic parameters within geological sequences by using geophysical logging data was proposed. The method aims to solve the problems of sample scarcity and global geological feature extraction in the continuous prediction of rock mechanics parameters. This methodology achieves the continuous extraction of stratigraphic features, generation of samples, and prediction of the mechanical parameters. The research result showed that the stratigraphic feature extractor of the logging autoencoder possesses global stratigraphic perception capabilities. Stratigraphic feature extractors can precisely identify and pinpoint key locations where stratigraphic properties change, such as lithological transitions and abnormal parts within thick rock layers. The fake rock mechanical samples produced by the generator exhibit data characteristics identical to those of the genuine samples. The rock mechanics parameter prediction model with the ability to extract stratigraphic features performs significantly better than traditional models when evaluated on real data sets (the mean square errors for the friction angle and cohesion are 17.2 and 12.65, respectively, mean absolute errors are 2.85 and 2.64, respectively, and R2 values are both 0.91) and produces more reasonable calculation results in the actual prediction task of Longtan Formation rock mechanics parameters compared to traditional models. This study provides an extensive applicable methodological framework to address the issues of insufficient samples and continuous prediction of geological parameters in the field of geology.

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来源期刊
ACS Omega
ACS Omega Chemical Engineering-General Chemical Engineering
CiteScore
6.60
自引率
4.90%
发文量
3945
审稿时长
2.4 months
期刊介绍: ACS Omega is an open-access global publication for scientific articles that describe new findings in chemistry and interfacing areas of science, without any perceived evaluation of immediate impact.
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