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Fault detection and isolation for nonlinear processes based on local linear fuzzy models and parameter estimation

机译:基于局部线性模糊模型和参数估计的非线性过程故障检测与隔离

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An approach for model-based fault detection and isolation (FDI) of sensor and process faults for nonlinear processes is presented. A fuzzy model (Takagi-Sugeno type) of the nominal process provides characteristic features like time constants and static gains in the actual region of operation. Comparing these with features derived by recursive parameter estimation leads to significant symptoms which indicate the state of the system. The practical applicability is illustrated on an industrial scale thermal plant. Here, nine different faults can be detected and isolated continuously over all ranges of operation.
机译:提出了一种基于模型的非线性过程传感器和过程故障的故障检测与隔离(FDI)方法。标称过程的模糊模型(Takagi-Sugeno类型)在实际操作区域中提供了诸如时间常数和静态增益之类的特征。将这些与通过递归参数估计得出的特征进行比较会导致明显的症状,这些症状表明系统的状态。在工业规模的热力设备上说明了实际的适用性。在此,可以检测到九种不同的故障,并在所有运行范围内对其进行连续隔离。

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