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An Online Multiple Open-Switch Fault Diagnosis Method for T-Type Three-Level Inverters Based on Multimodal Deep Residual Filter Network

Zhikai Xing, Yigang He, Weiwei Zhang

2022IEEE Transactions on Industrial Electronics49 citationsDOI

Abstract

With the development of the processing capacity of the embedded chip, it is possible to implement a machine learning algorithm in the embedded system. To achieve the fault status without poor portability, tricky threshold selection, and complex rulemaking, this article proposes a multimodal deep residual filter network (DRFN) for online multiple open-switch fault diagnosis of T-type three-level inverters. It contains low-rank matrix fusion (LMF), a DRFN, and a cross-transformer mechanism. The LMF fuses the voltage signal and the current signal for obtaining the unified representation. Then, the DRFN filters noise adaptively and extracts information effectively. Finally, the cross-transformer mechanism outputs the fault state of the T-type three-level inverter. The datasets consist of the dc-link voltage and load side current of the inverter control system. The data time window is selected as 20 ms. Through the real-time calculation of online monitored data, the experimental results show the effectiveness of the proposed fault diagnosis approach. Moreover, the accuracy of fault diagnosis is 99.18%, and the average open-circuit fault diagnosis time is 21 ms.

Topics & Concepts

Computer scienceTransformerFault (geology)ResidualFilter (signal processing)Fault detection and isolationInverterReal-time computingArtificial intelligenceEngineeringVoltageAlgorithmActuatorElectrical engineeringComputer visionSeismologyGeologyMultilevel Inverters and ConvertersPower Transformer Diagnostics and InsulationSilicon Carbide Semiconductor Technologies
An Online Multiple Open-Switch Fault Diagnosis Method for T-Type Three-Level Inverters Based on Multimodal Deep Residual Filter Network | Litcius