Litcius/Paper detail

Locally linear back-propagation based contribution for nonlinear process fault diagnosis

Jinchuan Qian, Li Jiang, Zhihuan Song

2020IEEE/CAA Journal of Automatica Sinica34 citationsDOI

Abstract

This paper proposes a novel locally linear backpropagation based contribution (LLBBC) for nonlinear process fault diagnosis. As a method based on the deep learning model of auto-encoder (AE), LLBBC can deal with the fault diagnosis problem through extracting nonlinear features. When the on-line fault diagnosis task is in progress, a locally linear model is firstly built at the current fault sample. According to the basic idea of reconstruction based contribution (RBC), the propagation of fault information is described by using back-propagation (BP) algorithm. Then, a contribution index is established to measure the correlation between the variable and the fault, and the final diagnosis result is obtained by searching variables with large contributions. The smearing effect, which is an important factor affecting the performance of fault diagnosis, can be suppressed as well, and the theoretical analysis reveals that the correct diagnosis can be guaranteed by LLBBC. Finally, the feasibility and effectiveness of the proposed method are verified through a nonlinear numerical example and the Tennessee Eastman benchmark process.

Topics & Concepts

Fault (geology)Benchmark (surveying)Nonlinear systemBackpropagationComputer scienceProcess (computing)AlgorithmEncoderArtificial intelligencePattern recognition (psychology)Artificial neural networkOperating systemSeismologyPhysicsGeologyGeodesyGeographyQuantum mechanicsFault Detection and Control SystemsMachine Fault Diagnosis TechniquesMineral Processing and Grinding