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ANOMALY DETECTION SYSTEM USING MULTI-LAYER SUPPORT VECTOR MACHINES AND METHOD THEREOF

机译:使用多层支持向量机的异常检测系统及其方法

摘要

A classifier network has at least two distinct sets of refined data, wherein the first two sets of refined data are sets of numbers representing the features values data received from sensors or a manufactured part. Performing, via at least two distinct types of support vector machines using an associated feature selection process for each classifier independently in a first layer, anomaly detection on the manufactured part. Then, using the stored data including refined data of at least two different types of data transforms and performing, via at least a two distinct types of support vector machines in a second layer, an associated feature selection process for each classifier independently. Forming at least four distinct compound classifier types for anomaly detection on the part using the stored data or coefficients. The ensemble of second layer support vector machine outputs compare the results to determine the presence of an anomaly.
机译:分类器网络具有至少两个不同的一组精细数据,其中前两组精细数据是表示从传感器或制造部分接收的特征值数据的数字组。 通过在制造部件上独立地使用相关的特征选择处理,在制造部件上独立地使用每个分类器的相关特征选择处理来执行至少两个不同类型的支持向量机。 然后,使用存储的数据包括至少两种不同类型的数据变换的细化数据和执行第二层中的至少两个不同类型的支持向量机,每个分类器的关联特征选择处理独立地。 使用存储的数据或系数在零件上形成至少四种不同的化合物分类器类型用于异常检测。 第二层支持向量机输出的集合比较结果以确定异常存在的结果。

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