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The implementation and quantification of the Vallejos and McKinnon re-entry methodology

机译:Vallejos和McKinnon重新进入方法的实施和量化

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The occurrence of seismicity in high stress hard rock mines poses a challenge to geotechnical engineers and mine management around the world. Only a few practical options are available when the mitigation of seismic risk is considered. One of the most widely used options is the implementation of a re-entry protocol. These protocols are useful at limiting personnel exposure to elevated seismic hazard associated with the occurrence of a firing. There are several methodologies available for determining an appropriate re-entry time. The success rate of these methods varies between sites. Recent work by Vallejos and McKinnon (2010) suggest a new approach to the re-entry problem. They provide methodology that could be implemented on any mine site with a seismic system. The method evaluates the current response in terms of the statistical properties of the rock mass based on historic responses. Discussions on the practical implementation of the method on a site-wide basis were limited, and did not provide an indication of what could quantitatively be expected from the method.The Vallejos and McKinnon method could be automated and practically implemented on most mine sites with a comprehensive seismic data record. It was shown the methodology, in some cases, may be an improvement on the widely used 'blanket' rule implemented on many mine sites.
机译:高压力硬岩地雷的地震发生的发生对世界各地的岩土工程师和矿山管理构成了挑战。当考虑地震风险的缓解时,只有几种实际选择。最广泛使用的选项之一是实现重新输入协议的实现。这些方案可用于限制人员暴露于与烧制发生相关的升高的地震危害。有几种方法可以确定适当的重新入口时间。这些方法的成功率在地点之间变化。 Vallejos和McKinnon(2010)最近的工作表明了重新进入问题的新方法。它们提供了可以在任何带有地震系统的任何矿工处实施的方法。该方法根据历史反应的岩石质量统计特性评估当前响应。关于在网站范围内的方法实际实施的讨论是有限的,并且没有提供从方法中定量预期的指示。Vallejos和Mckinnon方法可以自动化,实际上在大多数矿地站上实现综合地震数据记录。在某些情况下,它显示了该方法,可能是在许多矿地区实现的广泛使用的“毯子”规则的改进。

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