747-8型飞机液压泵系统故障预测

M. Müller, Eric Falk, J. Meira, Redouane Sassioui, Radu Sate
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引用次数: 1

摘要

民用航空,无论是客运还是货运,都是一个竞争激烈的市场,因此,航空公司强烈地推动着增加收入和降低成本。机队的维护是其中一个关键方面。在行业中会发生两种类型的事件,定期维护和不定期维护。虽然正常的计划维护已经很昂贵了,但计划外的维护事件更加昂贵。当计划外事件可以减少到最低限度时,节省的潜力是至关重要的。此外,客户的安全是一个巨大的问题,这就是为什么应该尽快发现可能的故障。在过去的几年里,过去十年中出现的大量数据为一系列新的应用打开了大门。基于新生成的数据,从过去学习来预测未来事件,检测异常变化或行为成为可能。本文描述了异常检测在飞机数据中的应用。目标是预测涡轮机液压泵即将发生的故障,如果在计划外维护的情况下更换液压泵,将产生严重的财务影响。在这种情况下,我们描述了我们如何处理这一具有挑战性的任务,以及在处理这些困难的任务时,专家知识是多么重要。使用我们的数据集,我们研究了多种异常值检测方法,ST-DBSCAN已被证明是最适合此用例的方法。我们展示了如何识别正确的数据帧来应用该方法,并在来自几架飞机的真实数据集上评估其预测性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Predicting Failures in 747–8 Aircraft Hydraulic Pump Systems
Civil aviation, be it for passengers or cargo, is a highly competitive market, airlines are therefore strongly driven to increase earnings and reduce costs. The maintenance of the aircraft fleet is one pivotal aspect of this. In the industry two types of events occur, scheduled and unscheduled maintenance. While normal scheduled maintenance is already expensive, unscheduled maintenance events are even more so. The potential for savings is paramount when unscheduled events can be reduced to a minimum. Additionally, the safety of the customers is a huge concern, which is why possible failures ought to be detected as soon as possible. Over the last years, the large amounts of data that became available over the last decade open then door to a new range of applications. It got possible to learn from the past to predict future events, detect abnormal changes or behaviors, based on newly generated data. In this work we describe the application of anomaly detection on aircraft data. The goal is to predict upcoming failures of the turbine's hydraulic pumps, having severe financial implications should they be replaced in a context of unscheduled maintenance. In this context, we describe how we addressed this challenging task, and how crucial expert knowledge is when approaching such difficult undertakings. With our dataset we studied multiple outlier detection methods, ST-DBSCAN has proven to be the best suited method for this use case. We show how we identified the correct data frames to apply the methodology, and evaluate its prediction performance on a real-world dataset from several aircrafts.
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