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Wenlong Liao
Wenlong Liao
Postdoc Researcher at EPFL; Aalborg University; The University of Hong Kong; Tianjin University
Verified email at epfl.ch - Homepage
Title
Cited by
Cited by
Year
Gated recurrent unit network-based short-term photovoltaic forecasting
Y Wang, W Liao, Y Chang
Energies 11 (8), 2163, 2018
2232018
A review of graph neural networks and their applications in power systems
W Liao, B Bak-Jensen, JR Pillai, Y Wang, Y Wang
Journal of Modern Power Systems and Clean Energy 10 (2), 345-360, 2021
1652021
Fault diagnosis of power transformers using graph convolutional network
W Liao, D Yang, Y Wang, X Ren
CSEE Journal of Power and Energy Systems 7 (2), 241-249, 2020
922020
Short-term prediction for wind power based on temporal convolutional network
R Zhu, W Liao, Y Wang
Energy Reports 6, 424-429, 2020
872020
Modeling daily load profiles of distribution network for scenario generation using flow-based generative network
L Ge, W Liao, S Wang, B Bak-Jensen, JR Pillai
IEEE Access 8, 77587-77597, 2020
612020
Using gated recurrent unit network to forecast short-term load considering impact of electricity price
W Wu, W Liao, J Miao, G Du
Energy Procedia 158, 3369-3374, 2019
612019
Data-driven EV load profiles generation using a variational auto-encoder
Z Pan, J Wang, W Liao, H Chen, D Yuan, W Zhu, X Fang, Z Zhu
Energies 12 (5), 849, 2019
472019
Data augmentation for electricity theft detection using conditional variational auto-encoder
X Gong, B Tang, R Zhu, W Liao, L Song
Energies 13 (17), 4291, 2020
432020
Fault coordination control for converter-interfaced sources compatible with distance protection during asymmetrical faults
Z Yang, W Liao, Q Zhang, CL Bak, Z Chen
IEEE Transactions on Industrial Electronics 70 (7), 6941-6952, 2022
332022
Electricity theft detection using Euclidean and graph convolutional neural networks
W Liao, Z Yang, K Liu, B Zhang, X Chen, R Song
IEEE Transactions on Power Systems, 2022
252022
Short-term power prediction for renewable energy using hybrid graph convolutional network and long short-term memory approach
W Liao, B Bak-Jensen, JR Pillai, Z Yang, K Liu
Electric Power Systems Research 211, 108614, 2022
242022
Robust voltage control considering uncertainties of renewable energies and loads via improved generative adversarial network
Q Zhao, W Liao, S Wang, JR Pillai
Journal of Modern Power Systems and Clean Energy 8 (6), 1104-1114, 2020
232020
Day-ahead optimal scheduling strategy for electrolytic water to hydrogen production in zero-carbon parks type microgrid for optimal utilization of electrolyzer
W Huang, B Zhang, L Ge, J He, W Liao, P Ma
Journal of Energy Storage 68, 107653, 2023
202023
Ultra-short-term interval prediction of wind power based on graph neural network and improved bootstrap technique
W Liao, S Wang, B Bak-Jensen, JR Pillai, Z Yang, K Liu
Journal of Modern Power Systems and Clean Energy, 2023
182023
Data-driven missing data imputation for wind farms using context encoder
W Liao, B Bak-Jensen, JR Pillai, D Yang, Y Wang
Journal of Modern Power Systems and Clean Energy 10 (4), 964-976, 2021
172021
Data-driven reactive power optimization for distribution networks using capsule networks
W Liao, J Chen, Q Liu, R Zhu, L Song, Z Yang
Journal of Modern Power Systems and Clean Energy 10 (5), 1274-1287, 2021
162021
Improved euclidean distance based pilot protection for lines with renewable energy sources
Z Yang, W Liao, H Wang, CL Bak, Z Chen
IEEE Transactions on Industrial Informatics 18 (12), 8551-8562, 2022
132022
WindGMMN: Scenario forecasting for wind power using generative moment matching networks
W Liao, Z Yang, X Chen, Y Li
IEEE Transactions on Artificial Intelligence 3 (5), 843-850, 2021
132021
Conformal asymmetric multi-quantile generative transformer for day-ahead wind power interval prediction
W Wang, B Feng, G Huang, C Guo, W Liao, Z Chen
Applied Energy 333, 120634, 2023
122023
Scenario prediction for power loads using a pixel convolutional neural network and an optimization strategy
W Liao, L Ge, B Bak-Jensen, JR Pillai, Z Yang
Energy Reports 8, 6659-6671, 2022
92022
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Articles 1–20