New Power System Fault Diagnosis Based on Trusted AI
Author:
Publisher
Springer Nature Singapore
Link
https://link.springer.com/content/pdf/10.1007/978-981-19-9373-2_54
Reference11 articles.
1. Moradi M, Jahangir AH (2018) A generic error-free AI-based encoding for FFT computation. Circuits Syst Signal Process 38(2):699–715
2. Taha I, Ibrahim S, Mansour D (2021) Power transformer fault diagnosis based on DGA using a convolutional neural network with noise in measurements. IEEE Access 9:111162–111170
3. Barros DMOA, Moreno RL, Ribeiro ER (2019) Short-circuit fault diagnosis based on the rough sets theory for a single-phase inverter. IEEE Trans Power Electron 34:4747–4764
4. Park J, Jung Y, Kim JH (2022) Multiclass classification fault diagnosis of multirotor UAVs utilizing a deep neural network. Int J Control Autom Syst 20(4):1316–1326
5. Modaresi M, Lesani H et al (2018) New method to determine optimum impedance of fault current limiters for symmetrical and/or asymmetrical faults in power systems. Front Inf Technol Electron Eng 19(2):297–307
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