ABSTRACT: This paper is derived from a keynote talk given at the Google's 2020 Flood Forecasting Meets Machine Learning Workshop. Recent experiments applying deep learning to rainfall‐runoff simulation indicate that there is significantly more information in large‐scale hydrological data sets than hydrologists have been able to translate into theory or models. While there is a growing interest in machine learning in the hydrological sciences community, in many ways, our community still holds deeply subjective and nonevidence‐based preferences for models based on a certain type of “process understanding” that has historically not translated into accurate theory, models, or predictions. This commentary is a call to action for the hydrology co...
In the last years, many European countries have experienced the effects of climate change, in the fo...
Empirical thresholds for landslide warning systems have benefitted from the incorporation of soil-hy...
With more machine learning methods being involved in social and environmental research activities, w...
Machine learning has been employed successfully as a tool virtually in every scientific and technolo...
In this dissertation I study the benefits that machine learning can bring to problems of Sustainable...
For around a decade, deep learning — the sub-field of machine learning that refers to artificial ne...
As a genre of physics-informed machine learning, differentiable process-based hydrologic models (abb...
Thesis (Ph.D.)--University of Washington, 2021An explosion of new data sources, expansion of computi...
Hydrology is still, and for good reasons, an inexact science, even if evolving hydrological underst...
Recently, deep learning (DL) has emerged as a revolutionary and versatile tool transforming industr...
Despite showing great success of applications in many commercial fields, machine learning and data s...
Hydrology Modeling using HEC-HMS (Hydrological Engineering Centre-Hydrologic Modeling System) is acc...
Hydrologic models provide a comprehensive tool to calibrate streamflow response to environmental var...
Our ability to fully and reliably observe and simulate the terrestrial hydrologic cycle is limited, ...
Artificial intelligence (AI) has been sparked by significant advancements in Graphic Processing Unit...
In the last years, many European countries have experienced the effects of climate change, in the fo...
Empirical thresholds for landslide warning systems have benefitted from the incorporation of soil-hy...
With more machine learning methods being involved in social and environmental research activities, w...
Machine learning has been employed successfully as a tool virtually in every scientific and technolo...
In this dissertation I study the benefits that machine learning can bring to problems of Sustainable...
For around a decade, deep learning — the sub-field of machine learning that refers to artificial ne...
As a genre of physics-informed machine learning, differentiable process-based hydrologic models (abb...
Thesis (Ph.D.)--University of Washington, 2021An explosion of new data sources, expansion of computi...
Hydrology is still, and for good reasons, an inexact science, even if evolving hydrological underst...
Recently, deep learning (DL) has emerged as a revolutionary and versatile tool transforming industr...
Despite showing great success of applications in many commercial fields, machine learning and data s...
Hydrology Modeling using HEC-HMS (Hydrological Engineering Centre-Hydrologic Modeling System) is acc...
Hydrologic models provide a comprehensive tool to calibrate streamflow response to environmental var...
Our ability to fully and reliably observe and simulate the terrestrial hydrologic cycle is limited, ...
Artificial intelligence (AI) has been sparked by significant advancements in Graphic Processing Unit...
In the last years, many European countries have experienced the effects of climate change, in the fo...
Empirical thresholds for landslide warning systems have benefitted from the incorporation of soil-hy...
With more machine learning methods being involved in social and environmental research activities, w...