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Fault detection in operating helicopter drivetrain components based on support vector data description

机译:基于支持向量数据描述操作直升机动力传动系统组件的故障检测

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摘要

The objective of the paper is to develop a vibration-based automated procedure dealing with early detection ofudmechanical degradation of helicopter drive train components using Health and Usage Monitoring Systems (HUMS) data. An anomaly-detection method devoted to the quantification of the degree of deviation of the mechanical state of a component from its nominal condition is developed. This method is based on an Anomaly Score (AS) formed by a combination of a set of statistical features correlated with specific damages, also known as Condition Indicators (CI), thus the operational variability is implicitly included in the model through the CI correlation. The problem of fault detection is then recast as a one-class classification problem in the space spanned by a set of CI, with the aim of a global differentiation between normal and anomalous observations, respectively related to healthy and supposedly faulty components. In this paper, a procedure based on an efficient one-class classification method that does not require any assumption on the data distribution, is used. The core of such an approach is the Support Vector Data Description (SVDD), that allows an efficient data description without the need of a significant amount of statistical data. Several analyses have been carried out in order to validate the proposed procedure, using flight vibration data collected from a H135, formerly known as EC135, servicing helicopter, for which micro-pitting damage on a gear was detected by HUMS and assessed through visual inspection. The capability of the proposed approach of providing better trade-off between false alarm rates and missed detection rates with respect to individual CI and to the AS obtained assuming jointly-Gaussian-distributed CI has been also analysed.
机译:本文的目的是开发一种基于振动的自动程序交易与早期检测使用健康直升机传动系部件和使用监测系统(HUMS)数据的udmechanical降解。致力于从它的标称状态的部件的机械状态的偏离程度的定量的异常检测方法进行显影。此方法是基于异常分数(AS)由一组与特定的损害,也被称为条件指示符(CI)相关的统计特征的组合形成,从而操作变性隐含地包括在通过CI的相关性模型。然后故障检测的问题重塑为在由一组CI的所跨越的空间中的一类分类问题,与正常和反常的观察,分别涉及到健康和假想有故障的组件之间的全局分化的目的。在本文中,基于不需要对数据分布的任何假设的高效一类分类方法的过程中,使用。这种方法的核心是支持向量数据描述(SVDD),即允许在不需要的统计数据的一个显著量的有效数据的说明。几个分析已经以验证所提出的方法进行的,使用来自H135收集飞行振动数据,原名EC135,维修直升机,为此,微点蚀的齿轮损坏是由于HUMS检测,并通过目测评价。获得假设联合高斯分布CI一直也分析提供更好的权衡误报率和漏检率之间相对于个人CI和AS的建议方法的能力。

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