Majumdar, Sayantan, Ryan Smith, Brian Conway, and Venkataraman Lakshmi. (11/2022AD) 2022. “Advancing Remote Sensing And Machine Learning-Driven Frameworks For Groundwater Withdrawal Estimation In Arizona: Linking Land Subsidence To Groundwater Withdrawals”. Hydrological Processes 36 (11). John Wiley & Sons, Ltd. doi:10.1002/HYP.14757.
machine learning
Kim, Hyunglok, Wade Crow, Xiaojun Li, Wolfgang Wagner, Sebastian Hahn, and Venkataraman Lakshmi. (12/2023AD) 2023. “True Global Error Maps For Smap, Smos, And Ascat Soil Moisture Data Based On Machine Learning And Triple Collocation Analysis”. Remote Sensing Of Environment 298. Elsevier. doi:10.1016/J.RSE.2023.113776.
Best, Kelsea, Zeynab Jouzi, Sariful Islam, Timothy Kirby, Rebecca Nixon, Azmal Hossan, and Richard Nyiawung. (02/2023AD) 2023. “Typologies Of Multiple Vulnerabilities And Climate Gentrification Across The East Coast Of The United States”. Urban Climate 48. Elsevier B.V.: 1-13. doi:10.1016/J.UCLIM.2023.101430.
Macharia, Denis, Lambert Mugabo, Felix Kasiti, Abbie Noriega, Laura MacDonald, and Evan Thomas. (06/2023AD) 2023. “Streamflow And Flood Prediction In Rwanda Using Machine Learning And Remote Sensing In Support Of Rural First-Mile Transport Connectivity”. Frontiers In Climate 5. Frontiers Media SA. doi:10.3389/FCLIM.2023.1158186.