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融合数据优化和可解释分析的岩体可爆性智能分级模型

An intelligent classification model for rock mass blastability integrating data optimization and interpretable analysis

  • 摘要: 构建岩体可爆性智能分级模型对于矿山爆破工程具有重要的安全和经济意义。选取岩石密度ρ、单轴抗压强度σc、岩体完整性系数η、炸药单耗q等4个关键指标建立分级指标体系;经数据清洗与合成少数类过采样技术(SMOTE)处理得到195组均衡样本;采用贝叶斯优化算法(BO)优化极限梯度提升(XGBoost)超参数,构建了岩体可爆性智能分级模型BO-XGBoost,并结合SHAP(SHapley Additive exPlanations)方法分析各指标贡献度;将BO-XGBoost模型应用于国内外相关工程实例的可爆性等级验证。结果表明:BO-XGBoost模型在测试集上表现出优异的分类能力,其准确率、精确率、召回率和F1-score分别达到96.67%、97.50%、96.92%、0.97;SHAP分析表明,指标重要度排序为岩石密度、炸药单耗、岩体完整性系数、单轴抗压强度。分级结果与实际情况完全相符,验证了其工程实用性和准确性。

     

    Abstract: Constructing an intelligent classification model for rock mass blastability is of great significance for the safety and economy of mining blasting engineering. Four key indicators, namely rock bulk density (ρ), uniaxial compressive strength (σc), rock mass integrity coefficient (η), and unit explosive consumption (q), were selected to establish a classification indicator system. After data cleaning and processing using the Synthetic Minority Oversampling Technique (SMOTE), 195 balanced samples were obtained. An intelligent classification model for rock mass blastability, named BO-XGBoost, was constructed by optimizing the hyperparameters of the Extreme Gradient Boosting (XGBoost) algorithm using Bayesian Optimization (BO). The SHapley Additive Explanations (SHAP) method was further employed to analyze the contribution of each indicator. The proposed BO-XGBoost model was then applied to classify the blastability levels of relevant engineering cases both in China and abroad. The results show that the BO-XGBoost model exhibits excellent classification performance on the test set, achieving an accuracy of 96.67%, precision of 97.50%, recall of 96.92%, and an F1-score of 0.97. SHAP analysis reveals that the importance ranking of the indicators is as follows: rock bulk density, unit explosive consumption, rock mass integrity coefficient, and uniaxial compressive strength. The classification results are in full agreement with the actual conditions, demonstrating the model's engineering practicality and accuracy.

     

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