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Operational Short-Range to Long Range (SR2lr) Streamflow Forecasting for Poorly Gauged Basins: The Unexplored Dimension of Variational Ensemble Forecasting, the Spatio-Temporal Structure of Modeling Paradigms, and the Role of Machine Learning Strategies to Improve Hydrological Hypotheses
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Operational Short-Range to Long Range (SR2lr) Streamflow Forecasting for Poorly Gauged Basins: The Unexplored Dimension of Variational Ensemble Forecasting, the Spatio-Temporal Structure of Modeling Paradigms, and the Role of Machine Learning Strategies to Improve Hydrological Hypotheses

Status

Published

on 31 Mar 2021
Year of Creation
2020
Copyright Claimant
Rodrigo Valdes-Pineda
Registration Number
TX0008959877
on 31 Mar 2021

Copyright Summary


The U.S. Copyright record (Registration Number: TX0008959877) dated 31 Mar 2021, pertains to an electronic file (eService) titled "Operational Short-Range to Long Range (SR2lr) Streamflow Forecasting for Poorly Gauged Basins: The Unexplored Dimension of Variational Ensemble Forecasting, the Spatio-Temporal Structure of Modeling Paradigms, and the Role of Machine Learning Strategies to Improve Hydrological Hypotheses" created in 2020. The copyright holder is Rodrigo Valdes-Pineda, known for their creative contributions in text registration. For any inquiries concerning this copyrighted material, kindly reach out to Rodrigo Valdes-Pineda.

Copyright Details


Copyright Claimant
Rodrigo Valdes-Pineda

Application Details


Registration Number
TX0008959877
Registration Date
3/31/2021
Year of Creation
2020
Agency Marc Code
DLC-CO
Record Status
New
Physical Description
Electronic file (eService)
First Publication Nation
United States
ISBN
9798569915033

Personal Authors


Statements


Application Title Statement: Operational Short-Range to Long Range (SR2lr) Streamflow Forecasting for Poorly Gauged Basins: The Unexplored Dimension of Variational Ensemble Forecasting, the Spatio-Temporal Structure of Modeling Paradigms, and the Role of Machine Learning Strategies to Improve Hydrological Hypotheses
Author Statement: Rodrigo Valdes-Pineda Domicile: United States Citizenship: United States Authorship: text
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