Follow
Haoran Li
Haoran Li
Verified email at princeton.edu - Homepage
Title
Cited by
Cited by
Year
Power flow control in multi-active-bridge converters: Theories and applications
Y Chen, P Wang, H Li, M Chen
2019 IEEE Applied Power Electronics Conference and Exposition (APEC), 1500-1507, 2019
742019
MagNet: A machine learning framework for magnetic core loss modeling
H Li, SR Lee, M Luo, CR Sullivan, Y Chen, M Chen
2020 IEEE 21st Workshop on Control and Modeling for Power Electronics …, 2020
442020
MagNet: An open-source database for data-driven magnetic core loss modeling
H Li, D Serrano, T Guillod, E Dogariu, A Nadler, S Wang, M Luo, V Bansal, ...
2022 IEEE Applied Power Electronics Conference and Exposition (APEC), 588-595, 2022
402022
Why magnet: Quantifying the complexity of modeling power magnetic material characteristics
D Serrano, H Li, S Wang, T Guillod, M Luo, V Bansal, NK Jha, Y Chen, ...
IEEE Transactions on Power Electronics, 2023
292023
Transfer learning methods for magnetic core loss modeling
E Dogariu, H Li, DS López, S Wang, M Luo, M Chen
2021 IEEE 22nd Workshop on Control and Modelling of Power Electronics …, 2021
262021
Neural network as datasheet: Modeling BH loops of power magnetics with sequence-to-sequence lstm encoder-decoder architecture
D Serrano, H Li, T Guillod, S Wang, M Luo, CR Sullivan, M Chen
2022 IEEE 23rd Workshop on Control and Modeling for Power Electronics …, 2022
192022
How MagNet: Machine learning framework for modeling power magnetic material characteristics
H Li, D Serrano, T Guillod, S Wang, E Dogariu, A Nadler, M Luo, V Bansal, ...
IEEE Transactions on Power Electronics, 2023
162023
Magnet-AI: Neural network as datasheet for magnetics modeling and material recommendation
H Li, D Serrano, S Wang, M Chen
IEEE Transactions on Power Electronics, 2023
92023
Machine learning methods for feedforward power flow control of multi-active-bridge converters
M Liao, H Li, P Wang, T Sen, Y Chen, M Chen
IEEE Transactions on Power Electronics 38 (2), 1692-1707, 2022
92022
Predicting the BH loops of power magnetics with transformer-based encoder-projector-decoder neural network architecture
H Li, D Serrano, S Wang, T Guillod, M Luo, M Chen
2023 IEEE Applied Power Electronics Conference and Exposition (APEC), 1543-1550, 2023
82023
Calculation of ferrite core losses with arbitrary waveforms using the composite waveform hypothesis
T Guillod, JS Lee, H Li, S Wang, M Chen, CR Sullivan
2023 IEEE Applied Power Electronics Conference and Exposition (APEC), 1586-1593, 2023
62023
A simplified dc-bias injection method with mirror transformer for magnetic material characterization
S Wang, D Serrano, H Li, A Lin, T Guillod, M Luo, CR Sullivan, M Chen
2023 IEEE Applied Power Electronics Conference and Exposition (APEC), 1565-1571, 2023
62023
Interphase Resonance and Stability Analysis of Series-Capacitor Buck Converters
P Wang, D Zhou, H Li, DM Giuliano, G Szczeszynski, S Allen, M Chen
IEEE Transactions on Power Electronics 38 (5), 5680-5687, 2023
52023
Machine learning methods for power flow control of multi-active-bridge converters
M Liao, H Li, P Wang, Y Chen, M Chen
2021 IEEE 22nd Workshop on Control and Modelling of Power Electronics …, 2021
42021
Circuits and magnetics co-design for ultra-thin vertical power delivery: A snapshot review
Y Elasser, H Li, P Wang, J Baek, K Radhakrishnan, S Jiang, H Gan, ...
MRS Advances 9 (1), 12-24, 2024
12024
MagNet-AI: Neural network as datasheet for magnetics modeling and material recommendation
M Chen, H Li, D Serrano, S Wang
Authorea Preprints, 2023
12023
A Simplified Dc-Bias Injection Method for Characterizing Power Magnetics using a Voltage Mirror Transformer
S Wang, H Li, D Serrano, T Guillod, J Li, C Sullivan, M Chen
IEEE Transactions on Power Electronics, 2024
2024
Investigating the Mutual Impact of Waveform, Temperature, and Dc-Bias on Magnetic Core Loss using Neural Network Models
J Li, E Deleu, W Lee, H Li, M Chen, S Wang
2024 IEEE Applied Power Electronics Conference and Exposition (APEC), 391-395, 2024
2024
Multi-Material Power Magnetics Modeling with a Modular and Scalable Machine Learning Framework
E Deleu, H Li, J Li, W Lee, T Guillod, CR Sullivan, S Wang, M Chen
2024 IEEE Applied Power Electronics Conference and Exposition (APEC), 370-377, 2024
2024
Quantifying the Complexity of Modeling Power Magnetic Material Characteristics
M Chen
Authorea Preprints, 2023
2023
The system can't perform the operation now. Try again later.
Articles 1–20