עקוב אחר
Xiang Li
Xiang Li
כתובת אימייל מאומתת בדומיין umn.edu
כותרת
צוטט על ידי
צוטט על ידי
שנה
Physics guided machine learning methods for hydrology
A Khandelwal, S Xu, X Li, X Jia, M Stienbach, C Duffy, J Nieber, V Kumar
arXiv preprint arXiv:2012.02854, 2020
482020
Regionalization in a global hydrologic deep learning model: from physical descriptors to random vectors
X Li, A Khandelwal, X Jia, K Cutler, R Ghosh, A Renganathan, S Xu, ...
Water Resources Research 58 (8), e2021WR031794, 2022
202022
Robust inverse framework using knowledge-guided self-supervised learning: An application to hydrology
R Ghosh, A Renganathan, K Tayal, X Li, A Khandelwal, X Jia, C Duffy, ...
Proceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and …, 2022
19*2022
Physics-guided meta-learning method in baseflow prediction over large regions
S Chen, Y Xie, X Li, X Liang, X Jia
Proceedings of the 2023 SIAM International Conference on Data Mining (SDM …, 2023
72023
Probabilistic inverse modeling: An application in hydrology
S Sharma, R Ghosh, A Renganathan, X Li, S Chatterjee, J Nieber, C Duffy, ...
Proceedings of the 2023 SIAM International Conference on Data Mining (SDM …, 2023
42023
Mini-Batch Learning Strategies for modeling long term temporal dependencies: a study in environmental applications
S Xu, A Khandelwal, X Li, X Jia, L Liu, J Willard, R Ghosh, K Cutler, ...
Proceedings of the 2023 SIAM International Conference on Data Mining (SDM …, 2023
32023
Estimating lake water volume with regression and machine learning methods
C Delaney, X Li, K Holmberg, B Wilson, A Heathcote, J Nieber
Frontiers in Water 4, 886964, 2022
22022
Realization of causal representation learning to adjust confounding bias in latent space
J Li, X Li, X Jia, M Steinbach, V Kumar
arXiv preprint arXiv:2211.08573, 2022
12022
Uncertainty Quantification in Inverse Models in Hydrology
SS Chatterjee, R Ghosh, A Renganathan, X Li, S Chatterjee, J Nieber, ...
arXiv preprint arXiv:2310.02193, 2023
2023
Analysis of Groundwater Age Distributions in Complex Aquifer Systems to Evaluate Best Management Practice Efficacy
P Margarit, J Nieber, J Magner, X Li, S Luzzi, K Holmberg, A Runkel, ...
AGU Fall Meeting Abstracts 2021, H15A-1038, 2021
2021
Are Long short-term memory (LSTM) model simulations of watershed discharge improved when water storage is included as input? The Case Study at Rum River Watershed, MN
PF Teng, J Nieber, X Li, C Regan, C Duffy, M Steinbach, V Kumar
AGU Fall Meeting Abstracts 2021, H33J-11, 2021
2021
Effectiveness of Basin Aware Modulation in a Global Hydrologic Deep Learning Model: from Physical Descriptors to Random Vectors
X Li, A Khandelwal, R Ghosh, A Renganathan, J Nieber, C Duffy, ...
AGU Fall Meeting Abstracts 2021, H22G-08, 2021
2021
Source Aware Modulation for leveraging limited data from heterogeneous sources
X Li, A Khandelwal, R Ghosh, A Renganathan, J Willard, S Xu, X Jia, ...
2021
Physics Guided Deep Learning Models for Hydrology
X Li, A Khandelwal, S Xu, JL Nieber, V Kumar, C Duffy, M Steinbach, ...
AGU Fall Meeting Abstracts 2020, H049-01, 2020
2020
Regionalization in a global hydrologic deep learning
X Li, A Khandelwal, X Jia, K Cutler, R Ghosh, A Renganathan, S Xu, ...
המערכת אינה יכולה לבצע את הפעולה כעת. נסה שוב מאוחר יותר.
מאמרים 1–15