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Reliability analysis of underground mining equipment using genetic algorithms-A case study of two mine hoists

机译:基于遗传算法的地下采矿设备可靠性分析-以两个矿井提升机为例

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Purpose - While increased mechanization and automation make considerable contributions to mine productivity, unexpected equipment failures and imperfect planned or routine maintenance prohibit the maximum possible utilization of sophisticated mining equipment and require significant amount of extra capital investment. Traditional preventive/planned maintenance is usually scheduled at a fixed interval based on maintenance personnel's experience and it can result in decreasing reliability. This paper deals with reliability analysis and prediction for mining machinery. A software tool called GenRel is discussed with its theoretical background, applied algorithms and its current improvements. In GenRel, it is assumed that failures of mining equipment caused by an array of factors (e.g. age of equipment, operating environment) follow the biological evolution theory. GenRel then simulates the failure occurrences during a time period of interest based on Genetic Algorithms (GAs) combined with a number of statistical procedures. The paper also discusses a case study of two mine hoists. The purpose of this paper is to investigate whether or not GenRel can be applied for reliability analysis of mine hoists in real life. Design/methodology/approach - Statistical testing methods are applied to examine the similarity between the predicted data set with the real-life data set in the same time period. The data employed in this case study is compiled from two mine hoists from the Sudbury area in Ontario, Canada. Potential applications of the reliability assessment results yielded from GenRel include reliability-centered maintenance planning and production simulation. Findings - The case studies shown in this paper demonstrate successful applications of a GAs-based software, GenRel, to analyze and predict dynamic reliability characteristics of two hoist systems. Two separate case studies in Mine A and Mine B at a time interval of three months both present acceptable prediction results at a given level of confidence, 5 percent. Practical implications - Potential applications of the reliability assessment results yielded from GenRel include reliability-centered maintenance planning and production simulation. Originality/value - Compared to conventional mathematical models, GAs offer several key advantages. To the best of the authors' knowledge, there has not been a wide application of GAs in hoist reliability assessment and prediction. In addition, the authors bring discrete distribution functions to the software tool (GenRel) for the first time and significantly improve computing efficiency. The results of the case studies demonstrate successful application of GenRel in assessing and predicting hoist reliability, and this may lead to better preventative maintenance management in the industry.
机译:目的-尽管机械化和自动化程度的提高为矿山的生产力做出了巨大贡献,但意外的设备故障以及不完善的计划或常规维护却无法最大限度地利用复杂的矿山设备,并需要大量的额外资本投资。传统的预防性/计划性维护通常根据维护人员的经验按固定的时间安排,这可能会导致可靠性下降。本文涉及采矿机械的可靠性分析和预测。讨论了一种名为GenRel的软件工具,包括其理论背景,应用的算法及其当前的改进。在GenRel中,假设由一系列因素(例如设备的使用年限,操作环境)引起的采矿设备故障遵循生物进化理论。然后,GenRel基于遗传算法(GA)与许多统计程序相结合,在感兴趣的时间段内模拟故障发生。本文还讨论了两个矿井提升机的案例研究。本文的目的是研究GenRel是否可以用于现实生活中的矿用提升机的可靠性分析。设计/方法/方法-应用统计测试方法来检查同一时间段内预测数据集与实际数据集之间的相似性。本案例研究中使用的数据来自加拿大安大略省萨德伯里地区的两台矿井提升机。 GenRel产生的可靠性评估结果的潜在应用包括以可靠性为中心的维护计划和生产模拟。发现-本文中的案例研究证明了基于GAs的软件GenRel在分析和预测两个提升系统的动态可靠性特征方面的成功应用。在三个月的时间间隔内,在A矿和B矿进行的两个独立案例研究均以给定的置信度5%给出了可接受的预测结果。实际意义-GenRel产生的可靠性评估结果的潜在应用包括以可靠性为中心的维护计划和生产模拟。原创性/价值-与传统的数学模型相比,遗传算法具有几个关键优势。据作者所知,GA在提升机可靠性评估和预测中尚未得到广泛应用。此外,作者首次将离散分布功能引入软件工具(GenRel),并显着提高了计算效率。案例研究的结果证明了GenRel在评估和预测提升机可靠性方面的成功应用,这可能会导致行业中更好的预防性维护管理。

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