2023
DOI: 10.3390/app132413141
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Pearson-ShuffleDarkNet37-SE-Fully Connected-Net for Fault Classification of the Electric System of Electric Vehicles

Quan Lu,
Shan Chen,
Linfei Yin
et al.

Abstract: As the core components of electric vehicles, the safety of the electric system, including motors, batteries, and electronic control systems, has always been of great concern. To provide early warning of electric-system failure and troubleshoot the problem in time, this study proposes a novel energy-vehicle electric-system failure-classification method, which is named Pearson-ShuffleDarkNet37-SE-Fully Connected-Net (PSDSEF). Firstly, the raw data were preprocessed and dimensionality reduction was performed afte… Show more

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“…Incorporating the squeezeand-excitation (SE) module into neural networks is more advantageous for obtaining fault-related target information. Lu et al performed power system fault classification by integrating SE modules into the DarkNet37 network [19]. The network can acquire more fault-related target information by recalibrating the weights of the important information channels with the SE module.…”
Section: Introductionmentioning
confidence: 99%
“…Incorporating the squeezeand-excitation (SE) module into neural networks is more advantageous for obtaining fault-related target information. Lu et al performed power system fault classification by integrating SE modules into the DarkNet37 network [19]. The network can acquire more fault-related target information by recalibrating the weights of the important information channels with the SE module.…”
Section: Introductionmentioning
confidence: 99%