基于深部残余收缩网络的地下煤气化煤层顶底板岩性预测

IF 3.5 3区 工程技术 Q3 ENERGY & FUELS
Jialiang Guo, Ruizhao Yang, Fengtao Han
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引用次数: 0

摘要

岩性识别是煤地下气化工程的一项重要工作,是保证煤地下气化工程安全运行的前提。测井参数与岩性组成关系的固有复杂性造成了模糊性,导致传统测井解释方法存在偏差。我们介绍了一种岩性预测模型——深度残余收缩网络(DRSN),它集成了残余网络、注意机制和软阈值策略。该网络缓解了传统神经网络中常见的梯度消失问题,增强了模型对基本特征的关注,从而提高了捕获关键信息的能力。声波测井、体积密度测井、中子测井、伽马测井和深部电阻率测井作为输入,岩性测井作为输出。将DRSN与其他较新的岩性预测模型进行了对比分析。盲测结果表明,DSRN具有较高的准确率(Accuracy)、精密度(Precision)、召回率(Recall)和F1分数(F1 Scores),分别为0.8221、0.7198、0.8004和0.7465。该研究为煤地下气化初期地层岩性评价提供了一种新颖、快速的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Coal Seam Roof and Floor Lithology Prediction for Underground Coal Gasification Based on Deep Residual Shrinkage Network

Coal Seam Roof and Floor Lithology Prediction for Underground Coal Gasification Based on Deep Residual Shrinkage Network

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 F1 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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来源期刊
Energy Science & Engineering
Energy Science & Engineering Engineering-Safety, Risk, Reliability and Quality
CiteScore
6.80
自引率
7.90%
发文量
298
审稿时长
11 weeks
期刊介绍: Energy Science & Engineering is a peer reviewed, open access journal dedicated to fundamental and applied research on energy and supply and use. Published as a co-operative venture of Wiley and SCI (Society of Chemical Industry), the journal offers authors a fast route to publication and the ability to share their research with the widest possible audience of scientists, professionals and other interested people across the globe. Securing an affordable and low carbon energy supply is a critical challenge of the 21st century and the solutions will require collaboration between scientists and engineers worldwide. This new journal aims to facilitate collaboration and spark innovation in energy research and development. Due to the importance of this topic to society and economic development the journal will give priority to quality research papers that are accessible to a broad readership and discuss sustainable, state-of-the art approaches to shaping the future of energy. This multidisciplinary journal will appeal to all researchers and professionals working in any area of energy in academia, industry or government, including scientists, engineers, consultants, policy-makers, government officials, economists and corporate organisations.
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