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Fault detection system and method using approximate null space based fault signature classification

机译:使用基于近似零空间的故障特征分类的故障检测系统和方法

摘要

A system and method for fault detection is provided. The fault detection system provides the ability to detect symptoms of fault in turbine engines and other mechanical systems that have nonlinear relationships between two or more variables. The fault detection system uses a neural network to perform feature extraction from data for representation of faulty or normal conditions. The values of extracted features, referred to herein as scores, are then used to determine the likelihood of fault in the system. Specifically, the lower order scores, referred to herein as "approximate null space" scores can be classified into one or more clusters, where some clusters represent types of faults in the turbine engine. Classification based on the approximate null space scores provides the ability to classify faulty or nominal conditions that could not be reliably classified using higher order scores.
机译:提供了一种用于故障检测的系统和方法。故障检测系统提供了检测涡轮发动机和其他机械系统中故障症状的能力,该故障症状在两个或多个变量之间具有非线性关系。故障检测系统使用神经网络从数据中提取特征,以表示故障或正常情况。然后,将提取的特征的值(在此称为分数)用于确定系统中发生故障的可能性。具体地,较低阶分数,在本文中被称为“近似零空间”分数,可以被分类为一个或多个集群,其中一些集群表示涡轮发动机中的故障的类型。基于近似零空间得分的分类提供了对使用高阶得分无法可靠分类的故障或名义条件进行分类的能力。

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