School of Electrical Engineering & Information, Northeast Petroleum University, Daqing, China.
Heilongjiang Provincial Key Laboratory of Networking and Intelligent Control, Northeast Petroleum University, Daqing, China.
PLoS One. 2024 Aug 27;19(8):e0309165. doi: 10.1371/journal.pone.0309165. eCollection 2024.
The characterization and analysis of rock types based on acoustic emission (AE) signals have long been focal points in earth science research. However, traditional analysis methods struggle to handle the influx of big data. While signal processing methods combined with deep learning have found widespread use in various process analyses and state identification, effective feature extraction using progressive fusion technology still faces challenges in the field of intelligent rock type identification. To address this issue, our study proposes a novel framework for rock type identification based on AE and introduces a new signal identification model called 3CTNet. This model integrates convolutional neural networks (CNNs) and Transformer encoder, intelligently identifying AE of different rock fractures by establishing dependencies between adjacent positions within the data and gradually extracting advanced features. Furthermore, we experimentally compare five oversampling methods, ultimately selecting the adaptive synthetic sampling method (ADASYN) to balance the dataset and enhance the model's robustness and generalization ability. Comparison of the internal structure of our model with a series of time series processing models demonstrates the effectiveness of the proposed model structure. Experimental results showcase the high identification accuracy of the intelligent rock type identification model based on 3CTNet, with an overall identification accuracy reaching 98.780%. Our proposed method lays a solid foundation for the efficient and accurate identification of formation rock types in geological exploration and oil and gas development endeavors.
基于声发射(AE)信号的岩石类型特征描述和分析一直是地球科学研究的重点。然而,传统的分析方法难以处理大数据的涌入。虽然信号处理方法与深度学习相结合已在各种过程分析和状态识别中得到广泛应用,但在智能岩石类型识别领域,利用渐进式融合技术进行有效特征提取仍面临挑战。为了解决这个问题,我们的研究提出了一种基于 AE 的新型岩石类型识别框架,并引入了一种名为 3CTNet 的新信号识别模型。该模型集成了卷积神经网络(CNNs)和 Transformer 编码器,通过建立数据中相邻位置之间的依赖关系,智能识别不同岩石断裂的 AE,并逐步提取高级特征。此外,我们对五种过采样方法进行了实验比较,最终选择自适应合成采样方法(ADASYN)来平衡数据集,增强模型的鲁棒性和泛化能力。我们模型的内部结构与一系列时间序列处理模型的比较表明了所提出模型结构的有效性。实验结果展示了基于 3CTNet 的智能岩石类型识别模型的高识别精度,整体识别精度达到 98.780%。我们提出的方法为地质勘探和油气开发中地层岩石类型的高效准确识别奠定了基础。