Aviation Data Analytics in MRO Operations: Prospects and Pitfalls

A. Apostolidis, M. Pelt, K. Stamoulis
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引用次数: 5

Abstract

Summary & ConclusionsAs every new generation of civil aircraft creates more on-wing data and fleets gradually become more connected with the ground, an increased number of opportunities can be identified for more effective Maintenance, Repair and Overhaul (MRO) operations. Data are becoming a valuable asset for aircraft operators. Sensors measure and record thousands of parameters in increased sampling rates. However, data do not serve any purpose per se. It is the analysis that unleashes their value. Data analytics methods can be simple, making use of visualizations, or more complex, with the use of sophisticated statistics and Artificial Intelligence algorithms. Every problem needs to be approached with the most suitable and less complex method. In MRO operations, two major categories of on-wing data analytics problems can be identified. The first one requires the identification of patterns, which enable the classification and optimization of different maintenance and overhaul processes. The second category of problems requires the identification of rare events, such as the unexpected failure of parts. This cluster of problems relies on the detection of meaningful outliers in large data sets. Different Machine Learning methods can be suggested here, such as Isolation Forest and Logistic Regression. In general, the use of data analytics for maintenance or failure prediction is a scientific field with a great potentiality. Due to its complex nature, the opportunities for aviation Data Analytics in MRO operations are numerous. As MRO services focus increasingly in long term contracts, maintenance organizations with the right forecasting methods will have an advantage. Data accessibility and data quality are two key-factors. At the same time, numerous technical developments related to data transfer and data processing can be promising for the future.
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航空数据分析在MRO操作:前景和缺陷
随着每一架新一代民用飞机产生更多的机翼上数据,并且机队逐渐与地面联系更加紧密,可以确定越来越多的机会进行更有效的维护,维修和大修(MRO)操作。数据正成为飞机运营商的宝贵资产。传感器测量和记录数以千计的参数增加采样率。然而,数据本身没有任何用途。正是分析释放了它们的价值。数据分析方法可以很简单,使用可视化,也可以更复杂,使用复杂的统计和人工智能算法。每个问题都需要用最合适和最简单的方法来解决。在MRO操作中,可以确定两大类翼上数据分析问题。第一种方法需要识别模式,从而能够对不同的维护和检修过程进行分类和优化。第二类问题需要识别罕见事件,例如部件的意外故障。这类问题依赖于对大型数据集中有意义的异常值的检测。这里可以提出不同的机器学习方法,例如隔离森林和逻辑回归。一般来说,将数据分析用于维护或故障预测是一个具有巨大潜力的科学领域。由于其复杂性,航空数据分析在MRO操作中的机会很多。随着MRO服务越来越注重长期合同,拥有正确预测方法的维护组织将具有优势。数据可访问性和数据质量是两个关键因素。与此同时,与数据传输和数据处理相关的许多技术发展对未来是有希望的。
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