Detection Algorithms of Parallel Arc Fault on AC Power Lines Based on Deep Learning Techniques
Author:
Publisher
Springer Science and Business Media LLC
Subject
Electrical and Electronic Engineering
Link
https://link.springer.com/content/pdf/10.1007/s42835-021-00976-2.pdf
Reference32 articles.
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3. Saleh SA, Aljankawey AS, Errouissi R, Rahman MA (2016) Phase-based digital protection for arc flash faults. IEEE Transactions Indus Appl 52(3):2110–2121
4. Saleh SA, Rahman MA (2005) Modeling and protection of a three-phase power transformer using wavelet packet transform. IEEE Trans Power Delivery 20(2):1273–1282
5. Kim C-H, Kim H, Ko Y-H, Byun S-H, Aggarwal RK, Johns AT (2002) A novel fault-detection technique of high-impedance arcing faults in transmission lines using the wavelet transform. IEEE Trans Power Delivery 17(4):921–929
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