Abstract
Excessive neutral-to-ground voltage (NTGV) poses safety and operational risks in TT-grounded secondary distribution systems, particularly when caused by ground faults. This study investigates the effectiveness of data structure and density on a deep learning-based approach for classifying NTGV events as originating from either upstream or downstream fault locations. A deep learning model using LSTM is trained and tested using real-world datasets collected from multiple locations in a TT system. Results show that input data structure S3 which incorporating ground and phase current signals alongside NTGV measurements significantly improves model performance, achieving an accuracy of 98.15% and an F1-score of 97.85%. Notably, the proposed model maintains high classification accuracy even when trained using only 10% to 30% of the available dataset, demonstrating strong robustness under limited data conditions. These results indicate that feature-rich input structures enable reliable and data-efficient NTGV source classification with minimal additional computational cost, supporting practical deployment in real-world distribution networks.
Metadata
| Item Type: | Article |
|---|---|
| Creators: | Creators Email / ID Num. Mahadan, Mohd Ezwan UNSPECIFIED Abidin, Ahmad Farid UNSPECIFIED Mustapa, Rijalul Fahmi UNSPECIFIED Mat Yusoh, Mohd Abdul Talib UNSPECIFIED Hairuddin, Muhammad Asraf masraf@uitm.edu.my |
| Subjects: | T Technology > TK Electrical engineering. Electronics. Nuclear engineering T Technology > TK Electrical engineering. Electronics. Nuclear engineering > Electric power distribution. Electric power transmission |
| Divisions: | Universiti Teknologi MARA, Shah Alam > College of Engineering |
| Journal or Publication Title: | Journal of Electrical and Electronic Systems Research (JEESR) |
| ISSN: | 1985-5389 |
| Volume: | 28 |
| Number: | 1 |
| Page Range: | pp. 11-17 |
| Keywords: | Deep learning, LSTM classification, Neutral-to-ground voltage (NTGV), TT grounding system |
| Date: | April 2026 |
| URI: | https://ir.uitm.edu.my/id/eprint/135337 |
