暂无分享,去创建一个
David Walling | Zhi Zhong | Alexander Y. Sun | Zizhan Zhang | Bridget R. Scanlon | Abhijit Mukherjee | Soumendra N. Bhanja | B. Scanlon | Zizhan Zhang | A. Mukherjee | A. Sun | S. Bhanja | Zhi Zhong | David Walling
[1] B. Parthasarathy,et al. Fluctuations in All-India summer monsoon rainfall during 1871–1978 , 1984 .
[2] Andrew Zisserman,et al. Very Deep Convolutional Networks for Large-Scale Image Recognition , 2014, ICLR.
[3] J. D. Tarpley,et al. Implementation of Noah land surface model advances in the National Centers for Environmental Prediction operational mesoscale Eta model , 2003 .
[4] Dumitru Erhan,et al. Going deeper with convolutions , 2014, 2015 IEEE Conference on Computer Vision and Pattern Recognition (CVPR).
[5] Michael S. Bernstein,et al. ImageNet Large Scale Visual Recognition Challenge , 2014, International Journal of Computer Vision.
[6] J. Famiglietti,et al. Improving parameter estimation and water table depth simulation in a land surface model using GRACE water storage and estimated base flow data , 2010 .
[7] M. Rodell,et al. Benefits and pitfalls of GRACE data assimilation: A case study of terrestrial water storage depletion in India , 2017, Geophysical research letters.
[8] Y. Hong,et al. Have GRACE satellites overestimated groundwater depletion in the Northwest India Aquifer? , 2016, Scientific Reports.
[9] Xu-sheng Wang,et al. Satellite-based estimates of groundwater depletion in the Badain Jaran Desert, China , 2015, Scientific Reports.
[10] Abhijit Mukherjee,et al. Validation of GRACE based groundwater storage anomaly using in-situ groundwater level measurements in India , 2016 .
[11] Yang Hong,et al. Drought and flood monitoring for a large karst plateau in Southwest China using extended GRACE data , 2014 .
[12] Qi Zhang,et al. GRACE-Based Hydrological Drought Evaluation of the Yangtze River Basin, China , 2016 .
[13] James S. Famiglietti,et al. Downscaling GRACE Remote Sensing Datasets to High-Resolution Groundwater Storage Change Maps of California's Central Valley , 2018, Remote. Sens..
[14] Jürgen Schmidhuber,et al. Deep learning in neural networks: An overview , 2014, Neural Networks.
[15] J. Kusche,et al. A systematic impact assessment of GRACE error correlation on data assimilation in hydrological models , 2016, Journal of Geodesy.
[16] Sang Michael Xie,et al. Combining satellite imagery and machine learning to predict poverty , 2016, Science.
[17] P. Krause,et al. COMPARISON OF DIFFERENT EFFICIENCY CRITERIA FOR HYDROLOGICAL MODEL ASSESSMENT , 2005 .
[18] Thomas Brox,et al. U-Net: Convolutional Networks for Biomedical Image Segmentation , 2015, MICCAI.
[19] P. Bauer‐Gottwein,et al. Combining satellite radar altimetry, SAR surface soil moisture and GRACE total storage changes for hydrological model calibration in a large poorly gauged catchment , 2011 .
[20] Abhijit Mukherjee,et al. Groundwater systems of the Indian Sub-Continent , 2015 .
[21] P. Tregoning,et al. A global water cycle reanalysis (2003-2012) merging satellite gravimetry and altimetry observations with a hydrological multi-model ensemble , 2013 .
[22] S. Swenson,et al. Estimated accuracies of regional water storage variations inferred from the Gravity Recovery and Climate Experiment (GRACE) , 2003 .
[23] A. Milewski,et al. Improved methods for estimating local terrestrial water dynamics from GRACE in the Northern High Plains. , 2017 .
[24] Douglas W. Burbank,et al. Toward a complete Himalayan hydrological budget: Spatiotemporal distribution of snowmelt and rainfall and their impact on river discharge , 2010 .
[25] Vincent Humphrey,et al. A global reconstruction of climate‐driven subdecadal water storage variability , 2017 .
[26] Dit-Yan Yeung,et al. Convolutional LSTM Network: A Machine Learning Approach for Precipitation Nowcasting , 2015, NIPS.
[27] M. Watkins,et al. Improved methods for observing Earth's time variable mass distribution with GRACE using spherical cap mascons , 2015 .
[28] A. Güntner,et al. Calibration analysis for water storage variability of the global hydrological model WGHM , 2009 .
[29] V. Mishra,et al. On the frequency of the 2015 monsoon season drought in the Indo‐Gangetic Plain , 2016 .
[30] Daniel Rueckert,et al. Medical Image Computing and Computer-Assisted Intervention − MICCAI 2017: 20th International Conference, Quebec City, QC, Canada, September 11-13, 2017, Proceedings, Part II , 2017, Lecture Notes in Computer Science.
[31] Alexander Y. Sun,et al. Predicting groundwater level changes using GRACE data , 2013 .
[32] Xiao Yang,et al. Prolongation of SMAP to Spatiotemporally Seamless Coverage of Continental U.S. Using a Deep Learning Neural Network , 2017, 1707.06611.
[33] Matthew Rodell,et al. An analysis of terrestrial water storage variations in Illinois with implications for the Gravity Recovery and Climate Experiment (GRACE) , 2001 .
[34] Hoshin Vijai Gupta,et al. Debates—the future of hydrological sciences: A (common) path forward? Using models and data to learn: A systems theoretic perspective on the future of hydrological science , 2014 .
[35] Yoshua Bengio,et al. Convolutional networks for images, speech, and time series , 1998 .
[36] M. Watkins,et al. Quantifying and reducing leakage errors in the JPL RL05M GRACE mascon solution , 2016 .
[37] Alexander Y. Sun,et al. Toward calibration of regional groundwater models using GRACE data , 2012 .
[38] Roberto Cipolla,et al. SegNet: A Deep Convolutional Encoder-Decoder Architecture for Image Segmentation , 2015, IEEE Transactions on Pattern Analysis and Machine Intelligence.
[39] Abhijit Mukherjee,et al. A Data Assimilation Perspective on India’s Terrestrial Water Storage Trends , 2017 .
[40] Yann LeCun,et al. Generalization and network design strategies , 1989 .
[41] Jian Sun,et al. Deep Residual Learning for Image Recognition , 2015, 2016 IEEE Conference on Computer Vision and Pattern Recognition (CVPR).
[42] M. Rodell,et al. Assimilation of gridded terrestrial water storage observations from GRACE into a land surface model , 2016 .
[43] Abhijit Mukherjee,et al. Groundwater quality and depletion in the Indo-Gangetic Basin mapped from in situ observations , 2016 .
[44] R. Reedy,et al. Global models underestimate large decadal declining and rising water storage trends relative to GRACE satellite data , 2018, Proceedings of the National Academy of Sciences.
[45] Sujay V. Kumar,et al. Rivers and Floodplains as Key Components of Global Terrestrial Water Storage Variability , 2017 .
[46] Nagiza F. Samatova,et al. Theory-Guided Data Science: A New Paradigm for Scientific Discovery from Data , 2016, IEEE Transactions on Knowledge and Data Engineering.
[47] S. Lewis,et al. Regression analysis , 2007, Practical Neurology.
[48] R. Houborg,et al. Drought indicators based on model‐assimilated Gravity Recovery and Climate Experiment (GRACE) terrestrial water storage observations , 2012 .
[49] Ibrahim Hoteit,et al. Assessing sequential data assimilation techniques for integrating GRACE data into a hydrological model , 2017 .
[50] Jeffrey P. Walker,et al. THE GLOBAL LAND DATA ASSIMILATION SYSTEM , 2004 .
[51] R. Koster,et al. Assimilation of GRACE terrestrial water storage into a land surface model: Evaluation and potential value for drought monitoring in western and central Europe , 2012 .
[52] Guigang Zhang,et al. Deep Learning , 2016, Int. J. Semantic Comput..
[53] Alexander Y. Sun,et al. Model Calibration and Parameter Estimation: For Environmental and Water Resource Systems , 2015 .
[54] Sonia I. Seneviratne,et al. Inferring changes in terrestrial water storage using ERA-40 reanalysis data: The Mississippi River Basin , 2004 .
[55] Cordelia Schmid,et al. IEEE Conference on Computer Vision and Pattern Recognition Workshops, CVPR Workshops 2004, Washington, DC, USA, June 27 - July 2, 2004 , 2004, CVPR Workshops.
[56] Zizhan Zhang,et al. Long-Term Groundwater Variations in Northwest India From Satellite Gravity Measurements , 2014 .