Litcius/Paper detail

Analysis of Interpretability and Generalizability for Power Converter Fault Diagnosis Based on Temporal Convolutional Networks

Tongyang Ren, Tao Han, Qun Guo, Gang Li

2023IEEE Transactions on Instrumentation and Measurement26 citationsDOI

Abstract

Despite the success of data-driven converter fault diagnosis methods, interpretability and generalizability limit the further promotion of data-driven methods in industrial applications. Therefore, to improve the accuracy in face of out-of-distribution problems and increase confidence of power converter fault diagnosis, it is essential to understand the change and decision mechanism inside the deep model. First, we construct a general temporal convolutional network to visualize the diagnostic process, which has been proven effective in power converter fault diagnosis. Then, the effect of hyperparameters on generalizability is analyzed under typical power converter disturbances. Finally, the concern area of the model for the current in the fault decision is interpreted intuitively by gradient-weighted class activation mapping and the feature maps generated by the different channels are analyzed from multiple perspectives. The visualization results help to understand the complex structure of neural networks and can support the design of model to improve generalizability.

Topics & Concepts

InterpretabilityGeneralizability theoryComputer scienceConvolutional neural networkFault (geology)Artificial intelligenceMachine learningData miningArtificial neural networkPsychologyDevelopmental psychologyGeologySeismologyPower System Reliability and MaintenancePower Transformer Diagnostics and InsulationMachine Fault Diagnosis Techniques