College of Safety Science and Engineering, Xi'an University of Science and Technology, Xi'an, 710054, People's Republic of China.
Sci Rep. 2022 Sep 27;12(1):16081. doi: 10.1038/s41598-022-20504-0.
Borehole extraction is the basic method used for control of gases in coal mines. The quality of borehole sealing determines the effectiveness of gas extraction, and many influential factors result in different types of borehole leaks. To accurately identify the types of leaks from boreholes, characteristic parameters, such as gas concentration, flow rate and negative pressure, were selected, and new indexes were established to identify leaks. A model based on an improved naive Bayes framework was constructed for the first time in this study, and it was applied to analyse and identify boreholes in the 229 working face of the Xiashijie Coal Mine. Eight features related to single hole sealing sections were taken as parameters, and 144 training samples from 18 groups of real-time monitoring time series data and 96 test samples from 12 groups were selected to verify the accuracy and speed of the model. The results showed that the model eliminated strong correlations between the original characteristic parameters, and it successfully identified the leakage conditions and categories of 12 boreholes. The identification rate of the new model was 98.9%, and its response time was 0.0020 s. Compared with the single naive Bayes algorithm model, the identification rate was 31.8% better, and performance was 55% faster. The model developed in this study fills a gap in the use of algorithms to identify types of leaks in boreholes, provides a theoretical basis and accurate guidance for the evaluation of the quality of the sealing of boreholes and borehole repairs, and supports the improved use of boreholes to extract gases from coal mines.
钻孔抽采是煤矿瓦斯治理的基本方法。钻孔密封质量决定着瓦斯抽采效果,而诸多影响因素导致钻孔出现不同类型的泄漏。为了准确识别钻孔泄漏类型,选取了瓦斯浓度、流量和负压等特征参数,建立了新的泄漏识别指标。本文首次构建了基于改进朴素贝叶斯框架的模型,应用于分析和识别下石节煤矿 229 工作面的钻孔。选取了与单孔密封段相关的 8 个特征作为参数,从 18 组实时监测时间序列数据中选取了 144 个训练样本,从 12 组中选取了 96 个测试样本,以验证模型的准确性和速度。结果表明,该模型消除了原始特征参数之间的强相关性,成功识别了 12 个钻孔的泄漏情况和类别。新模型的识别率为 98.9%,响应时间为 0.0020s。与单一朴素贝叶斯算法模型相比,识别率提高了 31.8%,性能提高了 55%。本研究开发的模型填补了利用算法识别钻孔泄漏类型的空白,为钻孔密封质量评价和钻孔修复提供了理论依据和准确指导,支持了煤矿钻孔瓦斯抽采的改进利用。