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Maintainability Analysis of Underground Mining Equipment Using Genetic Algorithms: Case Studies with an LHD Vehicle

机译:基于遗传算法的地下采矿设备可维护性分析:LHD车辆的案例研究

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While increased mine mechanization and automation make considerable contributions to mine productivity, unexpected equipment failures and planned or routine maintenance prohibit the maximum possible utilization of sophisticated mining equipment and require a significant amount of extra capital investment. This paper deals with aspects of maintainability prediction for mining machinery. A PC software called GenRel was developed for this purpose. In GenRel, it is assumed that failures of mining equipment caused by an array of factors follow the biological evolution theory. GenRel then simulates the failure occurrences during a time period of interest using genetic algorithms (GAs) coupled with a number of statistical techniques. A group of case studies focuses on maintainability analysis of a Load Haul Dump (LHD) vehicle with two different time intervals, three months and six months. The data was collected from an underground mine in the Sudbury area in Ontario, Canada. In each prediction case study, a statistical test is carried out to examine the similarity between the predicted data set with the real-life data set in the same time period. The objectives of case studies include an assessment of the applicability of GenRel using real-life data and an investigation of the impacts of data size and chronological sequence on prediction results.
机译:不断提高的矿山机械化和自动化水平为矿山生产力做出了巨大贡献,但意外的设备故障以及有计划的或例行的维护却无法最大限度地利用复杂的矿山设备,并且需要大量的额外资本投资。本文涉及采矿机械可维护性预测的各个方面。为此目的,开发了一个名为GenRel的PC软件。在GenRel中,假设由一系列因素引起的采矿设备故障遵循生物学进化理论。然后,GenRel使用遗传算法(GA)与多种统计技术结合,在感兴趣的时间段内模拟故障发生。一组案例研究的重点是对具有两个不同时间间隔(三个月和六个月)的载重汽车(LHD)车辆的可维护性分析。数据是从加拿大安大略省萨德伯里地区的一个地下矿山收集的。在每个预测案例研究中,都要进行统计检验,以检验同一时间段内预测数据集与实际数据集之间的相似性。案例研究的目标包括使用实际数据评估GenRel的适用性,以及调查数据大小和时间顺序对预测结果的影响。

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