Research on a dynamic early warning model for gas outbursts using adaptive fractal dimension characterization

IF 13.7 1区 工程技术 Q1 MINING & MINERAL PROCESSING
Jie Chen , Wenhao Shi , Yichao Rui , Junsheng Du , Xiaokang Pan , Xiang Peng , Xusheng Zhao , Qingfeng Wang , Deping Guo , Yulin Zou , Dafa Yin , Yuanbin Luo
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Abstract

To address the issues of single warning indicators, fixed thresholds, and insufficient adaptability in coal and gas outburst early warning models, this study proposes a dynamic early warning model for gas outbursts based on adaptive fractal dimension characterization. By analyzing the nonlinear characteristics of gas concentration data, an adaptive window fractal analysis method is introduced. Combined with box-counting dimension and variation of box dimension metrics, a cross-scale dynamic warning model for disaster prevention is established. The implementation involves three key phases: First, wavelet denoising and interpolation methods are employed for raw data preprocessing, followed by validation of fractal characteristics. Second, an adaptive window cross-scale fractal dimension method is proposed to calculate the box-counting dimension of gas concentration, enabling effective capture of multi-scale complex features. Finally, dynamic threshold partitioning is achieved through membership functions and the 3σ principle, establishing a graded classification standard for the mine gas disaster (MGD) index. Validated through engineering applications at Shoushan #1 Coal Mine in Henan Province, the results demonstrate that the adaptive window fractal dimension curve exhibits significantly enhanced fluctuation characteristics compared to fixed window methods, with local feature detection capability improved and warning accuracy reaching 86.9%. The research reveals that this model effectively resolves the limitations of traditional methods in capturing local features and dependency on subjective thresholds through multi-indicator fusion and threshold optimization, providing both theoretical foundation and practical tool for coal mine gas outburst early warning.
基于自适应分形维数表征的瓦斯突出动态预警模型研究
针对煤与瓦斯突出预警模型预警指标单一、阈值固定、适应性不足等问题,提出了一种基于自适应分形维数表征的瓦斯突出动态预警模型。通过分析气体浓度数据的非线性特性,提出了一种自适应窗口分形分析方法。结合箱维数和箱维度量的变化,建立了一种跨尺度的防灾动态预警模型。实现过程包括三个关键阶段:首先,采用小波去噪和插值方法对原始数据进行预处理,然后对分形特征进行验证。其次,提出了一种自适应窗口跨尺度分形维数方法来计算气体浓度的盒数维数,实现了多尺度复杂特征的有效捕获;最后,通过隶属函数和3σ原理实现了动态阈值划分,建立了矿井瓦斯灾害指数的分级分类标准。通过对河南寿山1矿的工程应用验证,结果表明,自适应窗分维曲线的波动特征较固定窗方法明显增强,局部特征检测能力提高,预警准确率达到86.9%。研究表明,该模型通过多指标融合和阈值优化,有效解决了传统方法捕捉局部特征和依赖主观阈值的局限性,为煤矿瓦斯突出预警提供了理论基础和实用工具。
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来源期刊
International Journal of Mining Science and Technology
International Journal of Mining Science and Technology Earth and Planetary Sciences-Geotechnical Engineering and Engineering Geology
CiteScore
19.10
自引率
11.90%
发文量
2541
审稿时长
44 days
期刊介绍: The International Journal of Mining Science and Technology, founded in 1990 as the Journal of China University of Mining and Technology, is a monthly English-language journal. It publishes original research papers and high-quality reviews that explore the latest advancements in theories, methodologies, and applications within the realm of mining sciences and technologies. The journal serves as an international exchange forum for readers and authors worldwide involved in mining sciences and technologies. All papers undergo a peer-review process and meticulous editing by specialists and authorities, with the entire submission-to-publication process conducted electronically.
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