基于SMOTE-LSTM算法的测井岩性识别研究

    Log-based lithology identification using the SMOTE-LSTM hybrid model

    • 摘要: 发展人工智能算法,从多元测井数据中自动识别地层岩性空间结构,是节约岩性编录成本、降低岩性识别主观性的趋势性途径。针对岩性样本数据分布不均匀、测井属性与岩性之间关系的时空多变性问题,本文构建了SMOTE(过采样算法)-LSTM(长短期记忆网络)混合模型,通过SMOTE算法有效平衡不同岩性类别的样本分布,并融合LSTM算法的深度学习架构,实现测井序列数据中岩性特征的提取,在砂岩型铀矿区进行应用,模型以钻孔测井数据和岩性记录为训练数据,训练后岩性分类预测准确率超过85%,与多种机器学习方法对比,岩性识别准确性和可靠性显著提升。

       

      Abstract: Artificial intelligence algorithms have been developed to automatically identify the spatial structures of formation lithologies from multivariate log data. They represent a promising approach to reducing lithology logging costs and mitigating the subjectivity inherent in lithology identification. Considering the imbalanced distribution of lithology sample data and the spatialtemporal variability in the relationships between log attributes and lithologies, this study constructed a synthetic minority oversampling technique (SMOTE)-long short-term memory (LSTM) hybrid model. The SMOTE algorithm effectively balances the sample distributions of different lithologies, while the LSTM algorithm, using its deep learning architecture, extracts lithological characteristics from the log sequence data. With the borehole log data and lithology records from a sandstone uranium deposit as training data, the SMOTE-LSTM hybrid model achieved a prediction accuracy exceeding 85% in lithology classification. Compared to several other machine learning methods, the SMOTE-LSTM hybrid model demonstrated significantly improved accuracy and reliability in lithology identification.

       

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