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露天矿山境界优化的三维可视化技术

Journal of Geology(2022)

中国地质科学院矿产资源研究所

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Abstract
对采矿业而言,传统的二维信息化方式己经不能满足矿山发展的需要,在三维环境下进行矿山生产设计和管理己成为必然趋势,同时也是实现数字矿山建设的基础性技术.智能矿山生态建立的重要组成部分是矿山三维地质建模,结合三维模型和储量计算,设计了包括境界优化、开采设计、爆破设计及矿石平衡环节的采剥管理流程,阐述了各环节的作用及必要性,着重研究了境界优化的2种常用算法,即浮动圆锥法与LG图论法.设计的露天矿山三维模型与采剥管理系统能为矿山生产提供更精准全面的指导信息,提高各业务部门的信息融合与协同能力,帮助矿山更高效、安全、合理地生产.
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