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In the present work,the multiplicity of fault characteristics is proposed and analyzed to improve the fault diagnosis performance.It is based on the following recognition that the underlying fault characteristics in general do not stay constant but will present changes along the time direction.That is,the fault process reveals different variable correlations across different time periods.To analyze the multiplicity of fault characteristics,a fault division algorithm is developed to divide the fault process into multiple local time periods where the fault characteristics are deemed similar within the same local time period.Then a representative fault decomposition model is built in each local time period to reveal the relationships between the fault and normal operation status.In this way,these different fault characteristics can be modeled respectively.The proposed method gives an interesting insight into the fault evolvement behaviors and a more accurate from-fault-to-normal reconstruction result can be expected for fault diagnosis.The feasibility and performance of the proposed fault diagnosis method are illustrated with the Tennessee Eastman process.
In the present work, the multiplicity of fault characteristics is proposed and analyzed to improve the fault diagnosis performance. It is based on the following recognition that the underlying fault characteristics in general do not stay constant but will present changes along the time direction. , the fault process reveals different variable correlations across different time periods. To analyze the multiplicity of fault characteristics, a fault division algorithm is developed to divide the fault process into multiple local time periods where the fault characteristics are found similar within the same local time period .Then a representative fault decomposition model is built in each local time period to reveal the relationships between the fault and normal operation status.In this way, these different fault characteristics can be modeled respectively. Proposed proposed method gives an interesting insight into the fault evolvement behaviors and a more accurate from-fault-to-normal reconstru ction result can be expected for fault diagnosis. The feasibility and performance of the proposed fault diagnosis method are illustrated with the Tennessee Eastman process.