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Decision approach of maintenance for urban rail transit based on equipment supervision data mining

机译:基于设备监督数据挖掘的城市轨道交通维护决策方法

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This paper discusses the features of equipment comprehensive maintenance and the defect of their operations, and generalizes the requirement and development oriented by intelligent decision making of urban rail transit. Then it figures out relations between faulty equipment groups, through massive monitoring data clustering. It also applies the anti-direction decision tree to build model to identify equipment types with high frequency failures. And neural network algorithm is used to develop a comparative analysis for evaluating the measuring results. When these preselected equipment class are put into plan of preventive and predictive maintenance, the reliability of the maintenance is improved. Then it takes certain urban rail transit as an example and the approach is used to build the Maintenance Management System (MMS), and the consistency proves the proposed model and algorithms possesses prominent feasibility and applicability, also, it helps to effective decision support of maintenance.
机译:本文讨论了设备综合维护和运营缺陷的特点,并通过城市轨道交通智能决策的要求和发展概括。然后,它通过大规模监控数据聚类来阐述错误的设备组之间的关系。它还适用反向决策树来构建模型以识别具有高频故障的设备类型。并且神经网络算法用于开发用于评估测量结果的比较分析。当这些预选设备类投入预防性和预测性维护方案时,提高了维护的可靠性。然后需要某些城市轨道交通作为一个例子,方法用于构建维护管理系统(MMS),并且该一致性证明了所提出的模型和算法具有突出的可行性和适用性,也有助于有效的维护决策支持。

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