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Pu Ren
Pu Ren
Lawrence Berkeley National Lab, Northeastern University
Verified email at northeastern.edu - Homepage
Title
Cited by
Cited by
Year
PhyCRNet: Physics-informed convolutional-recurrent network for solving spatiotemporal PDEs
P Ren, C Rao, Y Liu, JX Wang, H Sun
Computer Methods in Applied Mechanics and Engineering 389, 114399, 2022
1072022
Incremental Bayesian matrix/tensor learning for structural monitoring data imputation and response forecasting
P Ren, X Chen, L Sun, H Sun
Mechanical Systems and Signal Processing 158, 107734, 2021
412021
Encoding physics to learn reaction–diffusion processes
C Rao*, P Ren*, Q Wang, O Buyukozturk, H Sun, Y Liu
Nature Machine Intelligence 5, 765–779, 2023
33*2023
Discovering Nonlinear PDEs from Scarce Data with Physics-encoded Learning
C Rao*, P Ren*, Y Liu, H Sun
The Tenth International Conference on Learning Representations (ICLR 2022), 2022
212022
Structural health monitoring of a high-speed railway bridge: five years review and lessons learned
Y Ding, P Ren, H Zhao, C Miao
Smart Struct. Syst 21 (5), 695-703, 2018
212018
PhySR: Physics-informed deep super-resolution for spatiotemporal data
P Ren, C Rao, Y Liu, Z Ma, Q Wang, JX Wang, H Sun
Journal of Computational Physics 492, 112438, 2023
192023
SeismicNet: Physics-informed neural networks for seismic wave modeling in semi-infinite domain
P Ren, C Rao, S Chen, JX Wang, H Sun, Y Liu
Computer Physics Communications 295, 109010, 2024
142024
Autoregressive matrix factorization for imputation and forecasting of spatiotemporal structural monitoring time series
P Zhang*, P Ren*, Y Liu, H Sun
Mechanical Systems and Signal Processing 169, 108718, 2022
132022
Superbench: A super-resolution benchmark dataset for scientific machine learning
P Ren, NB Erichson, S Subramanian, O San, Z Lukic, MW Mahoney
arXiv preprint arXiv:2306.14070, 2023
42023
Physics-informed neural network for seismic wave inversion in layered semi-infinite domain
P Ren, C Rao, H Sun, Y Liu
arXiv preprint arXiv:2305.05150, 2023
32023
An unsupervised machine learning approach for ground‐motion spectra clustering and selection
RB Bond, P Ren, JF Hajjar, H Sun
Earthquake Engineering & Structural Dynamics 53 (3), 1107-1124, 2024
1*2024
Generative Modeling of Regular and Irregular Time Series Data via Koopman VAEs
I Naiman, NB Erichson, P Ren, MW Mahoney, O Azencot
The Twelfth International Conference on Learning Representations (ICLR 2024), 2023
12023
Physics-Informed Machine Learning for Seismic Response Prediction OF Nonlinear Steel Moment Resisting Frame Structures
RB Bond, P Ren, JF Hajjar, H Sun
arXiv preprint arXiv:2402.17992, 2024
2024
Data-Efficient Operator Learning via Unsupervised Pretraining and In-Context Learning
W Chen, J Song, P Ren, S Subramanian, D Morozov, MW Mahoney
arXiv preprint arXiv:2402.15734, 2024
2024
Clustering and Selection of Hurricane Wind Records Using Autoencoder and -Means Algorithm
X Du, JF Hajjar, RB Bond, P Ren, H Sun
Journal of Structural Engineering 149 (8), 04023096, 2023
2023
Deep Generative Models for Earthquake Ground Motion Simulation
P Ren, M Lacour, M White, R Nakata, N Nakata, O Malik, D Morozov, ...
AGU23, 2023
2023
Embedding Physics into Deep Learning for Modeling Spatiotemporal Systems
P Ren
Northeastern University, 2022
2022
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