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Fouille de séquences temporelles pour la maintenance prédictive : application aux données de véhicules traceurs ferroviaires

机译:搜索时间序列以进行预测性维护:应用于铁路示踪车辆的数据

摘要

In order to meet the mounting social and economic demands, railway operators and manufacturers are striving for a longer availability and a better reliability of railway transportation systems. Commercial trains are being equipped with state-of-the-art onboard intelligent sensors monitoring various subsystems all over the train. These sensors provide real-time flow of data, called floating train data, consisting of georeferenced events, along with their spatial and temporal coordinates. Once ordered with respect to time, these events can be considered as long temporal sequences which can be mined for possible relationships. This has created a neccessity for sequential data mining techniques in order to derive meaningful associations rules or classification models from these data. Once discovered, these rules and models can then be used to perform an on-line analysis of the incoming event stream in order to predict the occurrence of target events, i.e, severe failures that require immediate corrective maintenance actions. The work in this thesis tackles the above mentioned data mining task. We aim to investigate and develop various methodologies to discover association rules and classification models which can help predict rare tilt and traction failures in sequences using past events that are less critical. The investigated techniques constitute two major axes: Association analysis, which is temporal and Classification techniques, which is not temporal. The main challenges confronting the data mining task and increasing its complexity are mainly the rarity of the target events to be predicted in addition to the heavy redundancy of some events and the frequent occurrence of data bursts. The results obtained on real datasets collected from a fleet of trains allows to highlight the effectiveness of the approaches and methodologies used
机译:为了满足日益增长的社会和经济需求,铁路运营商和制造商正在努力提高铁路运输系统的可用性和可靠性。商业列车配备了最先进的机载智能传感器,可监控整个列车的各个子系统。这些传感器提供实时数据流,称为浮动火车数据,包括地理参考事件及其空间和时间坐标。一旦根据时间排序,这些事件就可以视为较长的时间序列,可以针对可能的关系进行挖掘。这为顺序数据挖掘技术创造了必要条件,以便从这些数据中得出有意义的关联规则或分类模型。一旦发现,这些规则和模型就可以用于对传入事件流进行在线分析,以预测目标事件的发生,即需要立即采取纠正性维护措施的严重故障。本文的工作解决了上述数据挖掘任务。我们旨在研究和开发各种方法来发现关联规则和分类模型,这些规则和分类模型可以使用较不严重的事件帮助预测序列中罕见的倾斜和牵引故障。研究的技术构成了两个主要轴:关联分析(是时间的)和分类技术(不是时间的)。数据挖掘任务面临的主要挑战和增加其复杂性的主要原因是,除了某些事件的大量冗余和数据突发的频繁发生之外,要预测的目标事件也很少。从一组火车收集的真实数据集上获得的结果可以突出显示所使用的方法和方法的有效性

著录项

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    SAMMOURI Wissam;

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  • 年度 2014
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  • 原文格式 PDF
  • 正文语种 en
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