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FAULT DETECTION USING PROJECTION PURSUIT REGRESSION (PPR): A CLASSIFICATION VERSUS AN ESTIMATION BASED APPROACH

机译:故障检测使用投影追求回归(PPR):分类与基于估计的方法

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Two fault detection approaches are compared using a Projection Pursuit Regression (PPR) algorithm: i- a classification approach where the fault detection PPR model is trained based on the class numbers and ii- an estimation approach where the PPR model is trained to predict the value of the process variable that define the class boundaries and then the corresponding class is identified by comparing the estimated value versus the limits of the fault classes. The comparison is carried on for simple illustration examples, to elucidate the main issues, and for a copolymerization process. The classification approach is found superior provided that the training data closest to the boundaries are located at equidistant locations from these boundaries.
机译:使用投影追踪回归(PPR)算法进行比较两个故障检测方法:i-基于类号的训练故障检测PPR模型的分类方法 - 验证PPR模型的估计方法以预测该值定义类边界的进程变量,然后通过比较故障类的限制来识别相应的类。对比较进行简单的例证例子,以阐明主要问题,以及共聚过程。分类方法是优越的,只要最接近边界的训练数据位于来自这些边界的等距位置。

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