An empirical-driven machine learning (EDML) approach to predict PPV caused by quarry blasting

IF 3.7 2区 工程技术 Q3 ENGINEERING, ENVIRONMENTAL
Panagiotis G. Asteris, Danial Jahed Armaghani
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引用次数: 0

Abstract

Blasting in mining and quarrying serves multiple purposes but poses environmental challenges, notably generating shockwaves and vibrations through peak particle velocity (PPV) from explosions. Previous efforts to predict PPV values have relied on empirical equations using parameters such as maximum charge per delay (MC) and distance from the blast face (D). Numerous attempts have employed machine learning (ML) to estimate PPV with the same input parameters. This study introduces a novel approach called empirical-driven ML (EDML), which integrates empirical equations and their outcomes as inputs for PPV prediction. EDML leverages existing knowledge to enhance model performance, interpretability, and generalization. For the EDML approach, four empirical equations, namely USBM, CMRI, General Predictor, and Ambraseys-Hendron have been chosen based on prior research. These four empirical equations were selected based on their good performance as reported in the literature. Using these equations’ PPV values as inputs, three advanced tree-based techniques (random forest, deep forest, and extreme gradient boosting) have been employed for model training. Comparison with the conventional ML approach (using only maximum charge per delay and distance from the blast face) reveals EDML’s superior predictive capacity for PPV estimation. Note that the inputs of these databases were directly and indirectly extracted from MC and D with the same PPV values. The proposed EDML approach effectively integrates data-driven insights with domain expertise, improving accuracy and interpretability through the inclusion of PPV and blasting observations.

经验驱动的机器学习(EDML)方法预测采石场爆破引起的PPV
采矿和采石爆破有多种用途,但也带来了环境挑战,特别是爆炸产生的冲击波和峰值粒子速度(PPV)产生的振动。之前预测PPV值的工作依赖于使用最大每延迟装药量(MC)和与爆炸面距离(D)等参数的经验方程。许多尝试使用机器学习(ML)来估计具有相同输入参数的PPV。本研究引入了一种称为经验驱动ML (EDML)的新方法,该方法将经验方程及其结果作为PPV预测的输入。EDML利用现有知识来增强模型性能、可解释性和泛化。对于EDML方法,在前人研究的基础上选择了USBM、CMRI、General Predictor和Ambraseys-Hendron四个经验方程。这四个经验方程是根据文献报道的良好性能而选择的。使用这些方程的PPV值作为输入,三种先进的基于树的技术(随机森林、深度森林和极端梯度增强)被用于模型训练。与传统的ML方法(仅使用每延迟最大装药量和与爆炸面距离)相比,EDML在PPV估计方面具有优越的预测能力。请注意,这些数据库的输入直接或间接地从具有相同PPV值的MC和D中提取。拟议的EDML方法有效地将数据驱动的见解与领域专业知识相结合,通过包含PPV和爆破观测来提高准确性和可解释性。
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来源期刊
Bulletin of Engineering Geology and the Environment
Bulletin of Engineering Geology and the Environment 工程技术-地球科学综合
CiteScore
7.10
自引率
11.90%
发文量
445
审稿时长
4.1 months
期刊介绍: Engineering geology is defined in the statutes of the IAEG as the science devoted to the investigation, study and solution of engineering and environmental problems which may arise as the result of the interaction between geology and the works or activities of man, as well as of the prediction of and development of measures for the prevention or remediation of geological hazards. Engineering geology embraces: • the applications/implications of the geomorphology, structural geology, and hydrogeological conditions of geological formations; • the characterisation of the mineralogical, physico-geomechanical, chemical and hydraulic properties of all earth materials involved in construction, resource recovery and environmental change; • the assessment of the mechanical and hydrological behaviour of soil and rock masses; • the prediction of changes to the above properties with time; • the determination of the parameters to be considered in the stability analysis of engineering works and earth masses.
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