Ning Gao, Chao Wu, Ling Liu, Fei Yang, Na Liu, and Chen Shen
View Full Paper
[1] Y. Meysam, F. Z. Seyed, M. Nader, and B. Frede, “ADistributed High-Impedance Fault Detection and ProtectionScheme in DC Microgrids,” IEEE Transactions on Power De-livery, vol. 39, no. 1, pp. 141–154, 2024. [2] M. G. Jose, N. Gustavo, M. Kumar, and P. Carlos, “GroundFault Detection Method for Variable Speed Drives,” IEEETransactions on Industry Applications, vol. 57, no. 3, pp. 2547–2558, 2021. [3] P. P. Hwa, K. Mina, J. Jee-Hoon, and C. Suyong, “Series DCArc Fault Detection Method for PV Systems Employing Dif-ferential Power Processing Structure,” IEEE Transactions onPower Electronics, vol. 36, no. 9, pp. 9787–9795, 2021. [4] M. Kumar and J. Kumar, “Islanding event detection techniquebased on change in apparent power in microgrid environment,”Electrical engineering, vol. 105, no. 3, pp. 1447–1463, 2023. [5] Y. B. Hassan, M. Orabi, and M. A. Gaafar, “Failures causesanalysis of grid-tie photovoltaic inverters based on faults signa-tures analysis (FCA-B-FSA),” Solar Energy, vol. 262, no. Sep.,pp. 1.1–1.23, 2023. [6] P. Pietrzak, M. Wolkiewicz, and T. Orlowska-Kowalska,“PMSM Stator Winding Fault Detection and ClassificationBased on Bispectrum Analysis and Convolutional Neural Net-work,” IEEE Transactions on Industrial Electronics, vol. 70,no. 5, pp. 5192–5202, 2023. [7] S. Ghashghaei and M. Akhbari, “Fault detection and classifica-tion of an HVDC transmission line using a heterogenous multi-machine learning algorithm,” IET generation, transmission &distribution, vol. 15, no. 16, pp. 2319–2332, 2021. [8] Y. Xiu, L. Vu, and L. Inhwan, “Unknown Input Observer-BasedSeries DC Arc Fault Detection in DC Microgrids,” IEEE Trans-actions on Power Electronics, vol. 37, no. 4, pp. 4708–4718,2022. [9] M. Zhao and M. Barati, “A Real-Time Fault Localization inPower Distribution Grid for Wildfire Detection Through DeepConvolutional Neural Networks,” IEEE Transactions on Indus-try Applications, vol. 57, no. 4, pp. 4316–4326, 2021. [10] Y. ZHANG, X. SHI, H. ZHANG, et al., “Review on deep learn-ing applications in frequency analysis and control of modernpower system,” International Journal of Electrical Power & En-ergy Systems, 2022. 107744. DOI:10.1016/j.ijepes.2021.107744. [11] Z. LIU, G. WU, W. HE, et al., “Key target and defect detectionof high-voltage power transmission lines with deep learning,”International Journal of Electrical Power & Energy Systems,2022. 108277. DOI:10.1016/j.ijepes.2022.108277. [12] D. A. Mansour, M. Numair, A. S. Zalhaf, R. Ramadan, M. M. F.Darwish, Q. Huang, et al., “Applications of IoT and DigitalTwin in Electrical Power Systems: A Comprehensive Survey,”IET Generation, Transmission & Distribution, vol. 17, no. 20,pp. 4457–4479, 2023. [13] A. S. Desai, N. Navaneeth, S. Chakraborty, and S. Adhikari,“Enhanced Multi-Fidelity Modeling for Digital Twin and Un-certainty Quantification,” Probabilistic Engineering Mechanics,vol. 74, pp. 1–16, 2023. [14] S. Li, P. Zhang, D. Yue, and Q. Wang, “Fault Prediction ofWind Turbine Based on Support Vector Machine,” ComputerSimulation, vol. 39, no. 5, pp. 84–88, 180, 2022. [15] A. Jimenez-Cordero and S. Maldonado, “Automatic FeatureScaling and Selection for Support Vector Machine Classifica-tion with Functional Data,” Applied Intelligence, vol. 51, no. 1,pp. 161–184, 2021.11 [16] S. Afrasiabi, M. Mohammadi, M. Afrasiabi, and B. Parang,“Modulated Gabor Filter Based Deep Convolutional Networkfor Electrical Motor Bearing Fault Classification and Diagno-sis,” IET Science, Measurement & Technology, vol. 15, no. 2,pp. 154–162, 2021. [17] P. Bernhard, “The First Unified and Transient Modeling Plat-form to Build a Digital Twin of Blast Furnaces Based on theExtended Discrete Element Method,” Steel Research Interna-tional, vol. 95, no. 3, pp. 1–14, 2024. [18] M. Xia, H. Shao, D. Williams, S. Lu, L. Shu, and C. W. Silva,“Intelligent Fault Diagnosis of Machinery Using Digital Twin-Assisted Deep Transfer Learning,” Reliability Engineering &System Safety, vol. 215, p. 107938, 2021. [19] S. N. Lahiri, “Sufficient and Necessary Conditions for Consis-tency of Variable Selection in High Dimensional Lasso,” TheAnnals of Statistics, vol. 49, no. 2, pp. 820–844, 2021. [20] F. Motamedi, H. Perez-Sanchez, A. Mehridehnavi, A. Fas-sihi, and F. Ghasemi, “Accelerating Big Data Analysis throughLASSO-Random Forest Algorithm in QSAR Studies,” Bioinfor-matics, vol. 38, no. 2, pp. 469–475, 2022.
Important Links:
Go Back