基于模糊聚类案例推理的煤炭自燃危险等级预测

Fire Pub Date : 2024-03-24 DOI:10.3390/fire7040107
Qiuyan Pei, Zhichao Jia, Jia Liu, Yi Wang, Junhui Wang, Yanqi Zhang
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引用次数: 0

摘要

准确预测煤炭自燃危险等级对确保煤矿安全生产具有重要意义。然而,传统的煤温预测模型准确率较低,无法预测煤炭自燃危险等级。为了准确预测煤炭自燃危险等级,本文稿提出了一种基于主成分分析(PCA)、基于案例推理(CBR)、模糊聚类(FM)和蛇形优化(SO)算法的煤炭自燃预测模型。首先,基于煤炭升温过程中特征气体浓度的变化规律,建立了一种新的煤炭自燃风险分类方法。其次,采用 MeanRadius-SMOTE 平衡数据结构。通过 PCA 计算预测指标的权重,提高 CBR 模型的预测精度。然后,通过在案例库中采用 FM,降低了 CBR 的计算成本,提高了其计算效率。在 PCA-FM-CBR 模型中,使用 SO 算法确定超参数。此外,还进行了多项对比实验,以验证本手稿所提模型的优越性。结果表明,SO-PCA-FM-CBR 具有良好的预测性能,同时还提高了计算效率。最后,本文作者采用随机平衡设计-傅立叶振幅灵敏度测试(RBD-FAST)来解释模型的输出,并分析了输入变量的全局重要性。结果表明,CO 是影响煤炭自燃危险等级的最重要变量。
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Prediction of Coal Spontaneous Combustion Hazard Grades Based on Fuzzy Clustered Case-Based Reasoning
Accurate prediction of the coal spontaneous combustion hazard grades is of great significance to ensure the safe production of coal mines. However, traditional coal temperature prediction models have low accuracy and do not predict the coal spontaneous combustion hazard grades. In order to accurately predict coal spontaneous combustion hazard grades, a prediction model of coal spontaneous combustion based on principal component analysis (PCA), case-based reasoning (CBR), fuzzy clustering (FM), and the snake optimization (SO) algorithm was proposed in this manuscript. Firstly, based on the change rule of the concentration of signature gases in the process of coal warming, a new method of classifying the risk of spontaneous combustion of coal was established. Secondly, MeanRadius-SMOTE was adopted to balance the data structure. The weights of the prediction indicators were calculated through PCA to enhance the prediction precision of the CBR model. Then, by employing FM in the case base, the computational cost of CBR was reduced and its computational efficiency was improved. The SO algorithm was used to determine the hyperparameters in the PCA-FM-CBR model. In addition, multiple comparative experiments were conducted to verify the superiority of the model proposed in this manuscript. The results indicated that SO-PCA-FM-CBR possesses good prediction performance and also improves computational efficiency. Finally, the authors of this manuscript adopted the Random Balance Designs—Fourier Amplitude Sensitivity Test (RBD-FAST) to explain the output of the model and analyzed the global importance of input variables. The results demonstrated that CO is the most important variable affecting the coal spontaneous combustion hazard grades.
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