College of Water Conservancy and Hydropower Engineering, Hohai University, Nanjing, China.
PLoS One. 2022 Jul 1;17(7):e0270826. doi: 10.1371/journal.pone.0270826. eCollection 2022.
Drill core lithology is an important indicator reflecting the geological conditions of the drilling area. Traditional lithology identification usually relies on manual visual inspection, which is time-consuming and professionally demanding. In recent years, the rapid development of convolutional neural networks has provided an innovative way for the automatic prediction of drill core images. In this work, a core dataset containing a total of 10 common lithology categories in underground engineering was constructed. ResNeSt-50 we adopted uses a strategy of combining channel-wise attention and multi-path network to achieve cross-channel feature correlations, which significantly improves the model accuracy without high model complexity. Transfer learning was used to initialize the model parameters, to extract the feature of core images more efficiently. The model achieved superior performance on testing images compared with other discussed CNN models, the average value of its Precision, Recall, F1-score for each category of lithology is 99.62%, 99.62%, and 99.59%, respectively, and the prediction accuracy is 99.60%. The test results show that the proposed method is optimal and effective for automatic lithology classification of borehole cores.
岩心岩性是反映钻井区域地质条件的重要指标。传统的岩性识别通常依赖于人工目视检查,既耗时又需要专业知识。近年来,卷积神经网络的快速发展为钻芯图像的自动预测提供了一种创新方法。在这项工作中,构建了一个包含地下工程中 10 种常见岩性类别的岩心数据集。我们采用的 ResNeSt-50 使用了一种结合通道注意力和多路径网络的策略来实现跨通道特征相关性,这显著提高了模型精度,而模型复杂度没有增加。迁移学习用于初始化模型参数,以更有效地提取岩心图像的特征。与其他讨论的 CNN 模型相比,该模型在测试图像上表现出优异的性能,每个岩性类别的精度、召回率和 F1 分数的平均值分别为 99.62%、99.62%和 99.59%,预测准确率为 99.60%。测试结果表明,该方法对于钻孔岩心的自动岩性分类是最优和有效的。