Litcius/Paper detail

An Online Diagnosis Method for Sensor Intermittent Fault Based on Data-Driven Model

Kun Zhang, Bin Gou, Wei Xiong, Xiaoyun Feng

2022IEEE Transactions on Power Electronics43 citationsDOI

Abstract

The intermittent fault (IF) is usually overlooked in power electronic applications. In this letter, an intelligent diagnosis method based on a data-driven model is proposed for sensor IFs. First, the manifestation of IF in the time domain is discussed to explore its distinctive characteristics. Then, a signal predictor is constructed in a data-driven way by utilizing the nonlinear autoregressive exogenous structure with the extreme learning machine algorithm. In addition, the residual is generated online by comparing the output of the devised data-driven predictor and that of the real sensor. The fault diagnosis decision-making scheme is finally designed based on the residual evaluation to identify the sensor IF and permanent fault simultaneously. The feasibility and effectiveness of the proposed method are demonstrated by offline tests and real-time experimental tests.

Topics & Concepts

ResidualAutoregressive modelFault (geology)Computer scienceFault detection and isolationTime domainDomain (mathematical analysis)Nonlinear systemData miningData modelingData-drivenPower (physics)Support vector machineReal-time computingArtificial intelligenceAlgorithmActuatorComputer visionMathematicsDatabaseQuantum mechanicsEconometricsPhysicsMathematical analysisSeismologyGeologyMachine Learning and ELMAdvanced Battery Technologies ResearchFuel Cells and Related Materials