Data-driven machine learning approaches for simultaneous prediction of peak particle velocity and frequency induced by rock blasting in mining

Yewuhalashet Fissha , Prashanth Ragam , Hajime Ikeda , N. Kushal Kumar , Tsuyoshi Adachi , P.S. Paul , Youhei Kawamura
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引用次数: 0

Abstract

The vibrations generated by rock blasting are a serious and hazardous outcome of these activities, causing harmful effects on the surrounding environment as well as the nearby residents. Both the local ecology and human communities suffer from the consequences of these vibrations. Assessing the severity of blasting vibrations necessitates a thorough evaluation of Peak Particle Velocity (PPV) and frequency, which are essential parameters for measuring vibration velocity. Accurate prediction of vibration occurrence is critically important. Therefore, this study employs five machine learning models for predicting the PPV and frequency resulting from quarry blasting. This work compares five machine learning models (XGBoost, Catboost, Bagging, Gradient Boosting, and Random Forest Regression) to choose the most efficient performance model. The performance evaluation of each five machine learning models demonstrates each model achieved a performance of more than 0.90 during the testing phase, there was a strong correlation observed between the actual and the predicted ones. The analysis of performance metrics shows Catboost regression model demonstrate better performance prediction comparing with the other models with R2 ​= ​0.983, MSE ​= ​0.000078, RMSE ​= ​0.008, NRMSE ​= ​0.019, MAD ​= ​0.004, MAPE ​= ​35.197 in the PPV prediction, and R2 ​= ​0.975, MSE ​= ​0.000243, RMSE ​= ​0.015, NRMSE ​= ​0.031, MAD ​= ​0.008, MAPE ​= ​37.281 for the frequency prediction. This study will help mining engineers and blasting experts to select the best machine learning model and its hyperparameters in estimating ground vibration, and frequency. In the context of the mining and civil industry, the application of this study offers significant potential for enhancing safety protocols and optimizing operational efficiency. By employing machine learning models, this research aims to accurately predict and assess ground vibrations with frequency resulting from rock blasting.
基于数据驱动的机器学习方法同时预测采矿岩石爆破产生的峰值颗粒速度和频率
岩石爆破产生的振动是爆破活动的一种严重而危险的后果,对周围环境和附近居民造成有害影响。当地生态和人类社区都遭受这些振动的后果。评估爆破振动的严重程度需要对峰值粒子速度(PPV)和频率进行全面评估,这是测量振动速度的重要参数。振动发生的准确预测是至关重要的。因此,本研究采用五种机器学习模型来预测采石场爆破产生的PPV和频率。这项工作比较了五种机器学习模型(XGBoost, Catboost, Bagging, Gradient Boosting和Random Forest Regression),以选择最有效的性能模型。对每五个机器学习模型的性能评估表明,在测试阶段,每个模型的性能都达到了0.90以上,实际和预测之间存在很强的相关性。性能指标分析表明,Catboost回归模型在PPV预测中R2 = 0.983, MSE = 0.000078, RMSE = 0.008, NRMSE = 0.019, MAD = 0.004, MAPE = 35.197,在频率预测中R2 = 0.975, MSE = 0.000243, RMSE = 0.015, NRMSE = 0.031, MAD = 0.008, MAPE = 37.281,较其他模型具有较好的性能预测效果。该研究将有助于采矿工程师和爆破专家在估计地面振动和频率时选择最佳的机器学习模型及其超参数。在采矿和民用工业的背景下,本研究的应用为加强安全协议和优化操作效率提供了巨大的潜力。通过使用机器学习模型,本研究旨在准确预测和评估岩石爆破引起的地面振动频率。
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