A comprehensive survey on machine learning applications for drilling and blasting in surface mining

Venkat Munagala , Srikanth Thudumu , Irini Logothetis , Sushil Bhandari , Rajesh Vasa , Kon Mouzakis
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Abstract

Drilling and blasting operations are pivotal for productivity and safety in hard rock surface mining. These operations are restricted due to complexities such as site-specific uncertainties, safety risks, and environmental and economic constraints. Machine Learning (ML) is a transformative approach to tackle these complexities resulting in significant cost reductions. ML applications can reduce overall blasting costs by up to 23% and decrease the amount of explosives by as much as 89% compared to traditional methods. This survey presents a comprehensive review of how ML can be applied to optimize drill and blast designs while accounting for its operational challenges. Our research highlights the difficulties in collecting quality site-specific data, the complexity of interpreting this data into insightful information, the selection of ML models relating to mining objectives, and the need for established methods to assess blast efficiency quantitatively. We provide a synthesis of ML model development practices in drilling and blasting and demonstrate the value of ML methodologies. Based on our survey, we present actionable recommendations for developing ML methodologies to improve safety, reduce costs, and enhance efficiency in drilling and blasting processes. This includes establishing standardized data schematics, multiobjective model optimization, and comprehensive evaluation metrics. These benefits can guide mine management and engineers to adopt ML techniques and improve on-ground operational practices. This survey aims to serve as a resource for both practitioners and researchers shaping the future research direction in ML applications for drilling and blasting practices.

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露天采矿中钻孔和爆破的机器学习应用综合调查
钻孔和爆破作业对硬岩露天采矿的生产率和安全性至关重要。这些作业因其复杂性而受到限制,例如具体地点的不确定性、安全风险以及环境和经济限制。机器学习(ML)是解决这些复杂问题的变革性方法,可显著降低成本。与传统方法相比,ML 应用可将总体爆破成本最多降低 23%,炸药用量最多减少 89%。本调查全面回顾了如何应用 ML 来优化钻孔和爆破设计,同时考虑到其操作方面的挑战。我们的研究强调了收集高质量特定地点数据的困难、将这些数据解释为有洞察力的信息的复杂性、选择与采矿目标相关的 ML 模型,以及采用既定方法定量评估爆破效率的必要性。我们综述了钻孔爆破中的 ML 模型开发实践,并展示了 ML 方法的价值。在调查的基础上,我们提出了开发 ML 方法的可行建议,以提高钻孔和爆破过程的安全性、降低成本并提高效率。这包括建立标准化数据图表、多目标模型优化和综合评估指标。这些优势可以指导矿山管理层和工程师采用 ML 技术,改进现场操作实践。本调查旨在为从业人员和研究人员提供资源,为钻孔和爆破实践中的 ML 应用确定未来的研究方向。
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Machine learning with applications
Machine learning with applications Management Science and Operations Research, Artificial Intelligence, Computer Science Applications
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98 days
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