Raúl Castro, Omar Salas, Kenji Basaure, Matías Pereira, René Gómez
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To create the models, several variables – each associated with historical extraction – were investigated, including the extraction ratio and the height of draw, amount of water entering the cave, season of the year, presence of mud in neighbouring drawpoints, sectors closed due to wet muck above, and changes in surface or depressions. This study also includes granular flow variables and lithologies. In addition, fragmentation was included and estimated with a granular flow simulator, and the information was validated and calibrated with data from the El Teniente mine. Results indicate that our classification models can reproduce the wet muck phenomenon with an acceptable precision between 69% and 75% and an average tonnage error per drawpoint of 6%−15%. The approach detailed here to create models could be applied to other mine sites if the necessary data are available.KEYWORDS: Draw controlgeotechnical hazardsmine planning, mudrushunderground miningwet muck AcknowledgmentsThis paper was funded by the CONICYT/PIA Project AFB220002. 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引用次数: 0
摘要
【摘要】湿渣土是地下矿山的一大问题,它会给井下工人、设备、矿山基础设施、抽采点、生产巷道和生产部门的安全带来严重后果,并造成储量损失。本文描述了一个数学模型,用于估计El Teniente长期规划应用的湿泥入口。El Teniente的三个盆地包括北部、中部和南部的湿泥控制研究。每个盆地包括在每个开采部门具有不同特征的矿山。因此,为每个盆地建立了模型,以代表其独特的现实。这些模型被嵌入到机器学习软件中,用于估计地下矿山开采过程中的危害。为了创建模型,研究了几个变量,每个变量都与历史提取有关,包括提取比例和抽取高度,进入洞穴的水量,一年中的季节,邻近抽取点的泥浆存在,由于上面的湿泥而关闭的部分,以及表面或洼地的变化。本研究还包括颗粒流动变量和岩性。此外,利用颗粒流模拟器对破碎度进行了估算,并利用El Teniente矿山的数据对信息进行了验证和校准。结果表明,我们的分类模型能够以69% ~ 75%的可接受精度再现湿淤泥现象,每个拖点的平均吨位误差为6% ~ 15%。如果有必要的数据,这里详述的建立模型的方法也可以应用于其他矿场。关键词:矿井控制,岩土灾害,矿山规划,泥流,地下开采湿渣土。作者感谢黛安·格林斯坦在编辑过程中的支持。披露声明作者未报告潜在的利益冲突。这项工作得到了国家开发署Investigación y Desarrollo [afb22002]的支持。
A wet muck entry model: a case study for long-term planning at El Teniente mine
ABSTRACTWet muck is a problem in underground mines due to the consequences it brings to the safety of workers, equipment, mining infrastructure, drawpoints, production drifts, and productive sectors, which can generate a loss in reserves. This paper describes a mathematical model to estimate wet muck entry for long-term planning applications at El Teniente. Three basins of El Teniente were included in the study of wet muck control: North, Centre, and South. Each basin includes mines with different characteristics in each exploitation sector. Consequently, models were built for each of the basins to represent its distinct reality. The models have been embedded in machine-learning software that estimates hazards associated with the extraction process for underground mines. To create the models, several variables – each associated with historical extraction – were investigated, including the extraction ratio and the height of draw, amount of water entering the cave, season of the year, presence of mud in neighbouring drawpoints, sectors closed due to wet muck above, and changes in surface or depressions. This study also includes granular flow variables and lithologies. In addition, fragmentation was included and estimated with a granular flow simulator, and the information was validated and calibrated with data from the El Teniente mine. Results indicate that our classification models can reproduce the wet muck phenomenon with an acceptable precision between 69% and 75% and an average tonnage error per drawpoint of 6%−15%. The approach detailed here to create models could be applied to other mine sites if the necessary data are available.KEYWORDS: Draw controlgeotechnical hazardsmine planning, mudrushunderground miningwet muck AcknowledgmentsThis paper was funded by the CONICYT/PIA Project AFB220002. The authors thank Diane Greenstein for her support in editing.Disclosure statementNo potential conflict of interest was reported by the author(s).Additional informationFundingThe work was supported by the Agencia Nacional de Investigación y Desarrollo [AFB220002].
期刊介绍:
The International Journal of Mining, Reclamation and Environment published research on mining and environmental technology engineering relating to metalliferous deposits, coal, oil sands, and industrial minerals.
We welcome environmental mining research papers that explore:
-Mining environmental impact assessment and permitting-
Mining and processing technologies-
Mining waste management and waste minimization practices in mining-
Mine site closure-
Mining decommissioning and reclamation-
Acid mine drainage.
The International Journal of Mining, Reclamation and Environment welcomes mining research papers that explore:
-Design of surface and underground mines (economics, geotechnical, production scheduling, ventilation)-
Mine planning and optimization-
Mining geostatics-
Mine drilling and blasting technologies-
Mining material handling systems-
Mine equipment