Yan Yu, Guo Jiwei, Bao Shijie, Fei Honglu
School of Civil Engineering, Liaoning Technical University, Fuxin, 123000, China.
Collaborative Innovation Center of Mine Major Disaster Prevention and Environmental Restoration, Fuxin, 123000, China.
Sci Rep. 2024 Dec 28;14(1):30793. doi: 10.1038/s41598-024-81218-z.
Blasting excavation is widely used in mining, tunneling and construction industries, but it leads to produce ground vibration which can seriously damage the urban communities. The peak particle velocity (PPV) is one of main indicators for determining the extent of ground vibration. Owing to the complexity of blasting process, there is controversy over which parameters will be considered as the inputs for empirical equations and machine learning (ML) algorithms. According to current researches, the burden has controversial impact on the blast-induced ground vibration. To judge whether the burden affects blast-induced ground vibration, the data of ground vibration considering burden have been recorded at the Wujiata coal mine. Correlation coefficient is used to analyze the relationship between variables, the correlation between the distance from blasting center to monitored point (R) and peak particle velocity (PPV) is greatest and the value of correlation coefficient is - 0.67. This study firstly summarizes the most common empirical equations, and a new empirical equation is established by dimension analysis. The new equation shows better performance of predicting PPV than most other empirical equations by regression analysis. Secondly, the machine learning is confirmed the applicability of predicting PPV. Based on the performance assessments, regression error characteristic curve and Uncertainty analysis in the first round of predicting PPV, the random forest (RF) and K-Nearest Neighbors (KNN) show better performance than other four machine learning algorithms. Then, in the second round, based on the artithmetic optimization algorithm (AOA), the optimized random forest (AOA-RF) model as the most accurate model compared with the optimized K-Nearest Neighbors (AOA-KNN) presented in the literature. Finally, the points of predicted PPV which have been informed of danger are marked based on Chinese safety regulations for blasting.
爆破开挖在采矿、隧道和建筑行业中被广泛应用,但它会产生地面振动,严重损害城市社区。峰值质点速度(PPV)是确定地面振动程度的主要指标之一。由于爆破过程的复杂性,对于哪些参数应作为经验公式和机器学习(ML)算法的输入存在争议。根据目前的研究,抵抗线对爆破引起的地面振动有争议性影响。为了判断抵抗线是否影响爆破引起的地面振动,在吴家塔煤矿记录了考虑抵抗线的地面振动数据。使用相关系数分析变量之间的关系,爆破中心到监测点的距离(R)与峰值质点速度(PPV)之间的相关性最大,相关系数值为-0.67。本研究首先总结了最常见的经验公式,并通过量纲分析建立了一个新的经验公式。通过回归分析,新公式在预测PPV方面比大多数其他经验公式表现更好。其次,证实了机器学习在预测PPV方面的适用性。基于第一轮预测PPV的性能评估、回归误差特征曲线和不确定性分析,随机森林(RF)和K近邻(KNN)比其他四种机器学习算法表现更好。然后,在第二轮中,基于算术优化算法(AOA),与文献中提出的优化K近邻(AOA-KNN)相比,优化随机森林(AOA-RF)模型是最准确的模型。最后,根据中国爆破安全规程,对已通报危险的预测PPV点进行标记。