Chunsheng Yang, S. Létourneau, Yubin Yang, Jie Liu
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引用次数: 9
摘要
FMEA (Failure Mode and Effects Analysis)是为了提高复杂系统的可靠性而发展起来的,是表征和记录产品和过程问题的标准方法,也是维修行业故障识别/隔离的系统方法。对于给定的故障效果或模式,故障识别是一个反应过程。通常,故障已经发生,它需要确定哪个组件是根本原因,或者将故障隔离到特定的贡献组件。传统的方法是基于TSM (Trouble Shooting manual)进行故障隔离,这种方法复杂、成本高、耗时长。为了有效地进行故障隔离,本文提出了基于数据挖掘的故障隔离框架,利用FMEA信息对数据驱动模型进行排序。在本文中,我们提出了该框架,并对APU故障识别进行了实例研究。
Data mining based fault isolation with FMEA rank: A case study of APU fault identification
FMEA (Failure Mode and Effects Analysis), which was developed to enhance the reliability of complex systems, is a standard method to characterize and document product and process problems and a systematic method for fault identification/isolation in maintenance industry. Fault identification for a given failure effect or mode is a reactive process. Usually, a failure has occurred and it needs to identify which component is the root cause or to isolate the fault to a specific contributing component. Traditional method is to conduct TSM (Trouble Shooting Manuals)-based fault isolation, which is complicated, expensive, and time-consuming. To efficiently perform fault isolation, this paper proposed data mining-based framework for fault isolation by using FMEA information to rank data-driven models. In this paper, we present the proposed framework along with a case study for APU fault identification.