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Data mining and statistical analysis of construction equipment failure

机译:建筑设备故障的数据挖掘与统计分析

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Purpose Construction equipment is a key resource, and contractors that own a large equipment fleet take all necessary measures to maximize equipment utilization and minimize equipment failures. Although most contractors implement scheduled maintenance programs and carry out periodic inspections and repairs on their construction equipment, it is still difficult to predict the occurrence of a specific failure of a piece of equipment in the short or long term. According to a survey in the United States, approximately 46% of the major equipment repairs was undertaken as a result of an unexpected failure. Although it is not possible to predict all failure events, a slight improvement in their prediction represents a significant saving in time and cost for a large contractor. Statistical power law models and data-mining models were compared to investigate their pros and cons in predicting critical failure events of heavy construction equipment. Method With large amounts of equipment failure data accumulated in a surface mining project, two different types of failure models were created for comparative analysis from a practical point of view. For selected equipment units, failure data were collected along with the relevant factors which may cause variations of equipment failure rate (or mean time to failure). In a classical approach, Power law models of equipment failure rates are fitted using RGA 7.0; while in the data-mining approach, the mean time to failure is modeled using a data-mining algorithm-decision tree induction, establishing logical, mathematical, and statistical relations between MTTF (Mean Time Between Failures) and its various factor of impact (equipment conditions, failure history, environmental conditions, etc.). Both models are used for validation tests on randomly selected time periods and compared in terms of their performance. Results & Discussion: The two types of models were compared.
机译:目的施工设备是一个关键资源,拥有大型设备舰队的承包商采取了所有必要措施,以最大限度地提高设备利用率,并最大限度地减少设备故障。虽然大多数承包商实施预定的维护计划并在其建筑设备上进行定期检查和维修,但仍然难以预测短期或长期设备的特定故障的发生。根据美国的一项调查,由于意外失败,大约46%的主要设备维修。虽然无法预测所有失败事件,但它们的预测略有改善代表大承包商的时间和成本显着节省。比较统计电力法模型和数据采矿模型,以研究其在预测重型建筑设备的关键故障事件方面的利弊。累积在表面挖掘项目中累积的大量设备故障数据的方法,从实际的角度来看,为比较分析创建了两种不同类型的故障模型。对于所选设备单元,收集故障数据以及可能导致设备故障率(或对故障时间)的变化的相关因素。在经典的方法中,使用RGA 7.0装备设备故障率的电力法型号;虽然在数据挖掘方法中,使用数据挖掘算法决策树诱导,建立逻辑,数学和统计关系的平均故障,在MTTF(故障之间的平均时间)和其各种影响因素之间建立逻辑,数学和统计关系(设备条件,失败历史,环境条件等)。两种型号用于随机选择的时间段进行验证测试,并在其性能方面进行比较。结果与讨论:比较两种模型。

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