屋顶
收缩率
岩性
残余物
煤
采矿工程
地质学
煤矿开采
煤炭地下气化
长壁采矿
石油工程
工程类
岩石学
废物管理
材料科学
土木工程
复合材料
计算机科学
算法
作者
Jialiang Guo,Ruizhao Yang,Fengtao Han
摘要
ABSTRACT Lithology identification is a crucial task in coal underground gasification projects, serving as a prerequisite for ensuring the safe operation of these endeavors. The inherent complexity in the relationship between logging parameters and lithological compositions creates ambiguity, leading to biases in traditional logging interpretation methodologies. We introduce a lithological prediction model, the deep residual shrinkage network (DRSN), which integrates residual networks, attention mechanisms, and soft‐thresholding strategies. This network mitigates the gradient vanishing issue common in traditional neural networks and enhances the model's focus on essential features, thereby improving its ability to capture critical information. Acoustic, bulk density, neutron, gamma, and deep resistivity logs are used as inputs, with lithology as the output. A comparative analysis between the DRSN and other newer lithological prediction models is conducted. Blind well testing results demonstrate the superior performance of the DSRN, with higher Accuracy, Precision, Recall, and F 1 Scores of 0.8221, 0.7198, 0.8004, and 0.7465, respectively. This study provides a novel and rapid method for lithology evaluation of strata in the early stages of underground coal gasification.
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