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Research on Lithology Identification Method Based on Stacked Capsule Auto-Encoder Network

机译:基于堆叠胶囊自动编码网络的岩性识别方法研究

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The capsule network is able to divide the data features into different capsules, which express their invariance and covariation by vectors. Aiming at the insufficiency of traditional machine learning methods for the ability in mapping logging parameter sequence structure and lithological feature diversity, a stacked capsule auto-encoder network (SCAE-Net) is proposed to improve the lithology identification in complex carbonate rocks. Firstly, multiple capsule auto-encoders are stacked and the capsules in the encoder can express the internal relationship of the object from part to whole. Secondly, SCAE-Net mines sample subspace by capsules, where sample representations are similar. Attention mechanisms are introduced into the model and renew the loss function to improve the convergence speed of the model. Finally, taking the carbonate reservoir in the Sulige gas field as an example, the accuracy of the SCAE-Net lithology identification model is up to 95.92%, which provides a new idea for complex carbonate lithology identification.
机译:胶囊网络能够将数据特征划分为不同的胶囊,这表达了其不变性和由v vorcors的不变性和协变量。针对传统机器学习方法的不足,用于映射测井参数序列结构和岩性特征分集,提出了一种堆叠的胶囊自动编码器网络(SCAE-NET),以改善复合碳酸盐岩中的岩性鉴定。首先,堆叠多个胶囊自动编码器,并且编码器中的胶囊可以将物体的内部关系从部分表达到整体。其次,Scae-Net矿物采集胶囊样品子空间,其中样本表示相似。注意机制被引入模型中并更新损耗功能以提高模型的收敛速度。最后,以Sulige Gas的碳酸盐储存器为例,SCAE-Net岩性识别模型的准确性高达95.92%,为复杂的碳酸岩岩识别提供了新的思路。

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