Digital Library on Green Mobility

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Sustainable Electric Vehicles Fault Detection Based on Monitoring by Deep Learning Architectures in Feature Extraction and Classification

Publication Year: 2023

Author(s): Wongchai A, Aoudni Y, Yesubabu M, Reegu F A, Gowri N V, Vijayakumar P

Abstract:

Numerous industrial sector paradigms have been altered by the necessity to produce more competitive machinery and the introduction of digital technologies from so-called Industry 4.0. This research proposes novel technique in electric vehicle fault detection based on monitoring data classification and feature extraction using deep learning architectures. Results of experiments demonstrate that suggested model achieves over 99% accuracy in identifying flooding fault of fuel cell under load-varying situations. The experimental analysis has been carried out in terms of accuracy, robustness, reliability, precision, recall. The proposed technique attained 99% of accuracy, 89% of robustness, 85% of Reliability, 95% of precision and 81% of recall.

Source of Publication: Sustainable Energy Technologies and Assessments

Vol/Issue: 57: 103178p.

DOI No.: 10.1016/j.seta.2023.103178

Country: Thailand

Publisher/Organisation: Elsevier Ltd.

Rights: Elsevier Ltd.

URL:
https://www.sciencedirect.com/science/article/abs/pii/S2213138823001716

Theme: Vehicle Technology | Subtheme: Electric vehicles

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