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Two fault classification methods for large systems when available data are limited

机译:当可用数据有限时,针对大型系统的两种故障分类方法

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In this paper, we consider the problem of fault diagnosis for a system with many possible fault types. Two approaches are presented that are useful for initial diagnosis of system-wide faults, assuming that no data are available before commissioning the system but the possibility of the occurrence of each symptom is known for each fault. The first method uses a fault tree approach to reduce the solution space before applying the geometric classification method, the assumption being that no unwanted symptoms are possible. This method is nonparametric and thus does not require any data to estimate the underlying distribution of faults and symptoms. The second method is based on the Bayes classification approach to utilize the subjective information and the limited data that may be available. The two methods are generic and applicable to a variety of industrial processes.
机译:在本文中,我们考虑了具有多种可能故障类型的系统的故障诊断问题。提出了两种方法,可用于系统范围故障的初步诊断,假设在调试系统之前没有可用数据,但是每种故障发生每种症状的可能性是已知的。第一种方法使用故障树方法来减少应用几何分类方法之前的求解空间,这是假设没有不希望出现的症状是可能的。该方法是非参数的,因此不需要任何数据即可估计故障和症状的基本分布。第二种方法基于贝叶斯分类方法,以利用主观信息和可用的有限数据。这两种方法是通用的,适用于各种工业过程。

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