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Statistical and Causal Model-Based Approaches to Fault Detection and Isolation

机译:基于统计和因果模型的故障检测与隔离方法

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摘要

Both fundamental and practical differences between two common approaches to fault detection and isolation are examined.One approach is based on causal state-variable or parity-relation models developed from theory or identified from plant test data.The faults are then detected and isolated using structured or directional residuals from these models.The multivatiate statistical process control approaches are based on noncausal models built from historical process data using multivariate latent variable methods such as PCA and PLC.The faults are then detected by referencing future data against these covariance models,and isolation is attempted through examining contributions to the breakdown of the covariance structure.There are major differences between these approaches arising mainly from the different types of models and data utilized to build them.Each of them has clear,but complementary,strengths and weaknesses.These are discussed using simulated data from a CSTR process.
机译:研究了两种常见的故障检测和隔离方法之间的基本和实际差异,一种方法是基于因果关系状态变量或奇偶关系模型,这些模型是从理论上开发出来的或从工厂测试数据中识别出来的,然后使用结构化方法对故障进行检测和隔离多变量统计过程控制方法基于基于历史过程数据,使用PCA和PLC等多变量潜变量方法构建的非因果模型,然后通过针对这些协方差模型引用未来数据并隔离来检测故障这些方法之间的主要差异主要来自于不同类型的模型和用于构建它们的数据。每种方法都有明显但互补的优点和缺点。讨论了使用CSTR过程中的模拟数据。

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