Machine learning has been employed successfully as a tool virtually in every scientific and technological field. In hydrology, machine learning models first appeared as simple feed-forward networks that were used for short-term forecasting, and have evolved into complex models that can take into account even the static features of catchments, imitating the hydrological experience. Recent studies have found machine learning models to be robust and efficient, frequently outperforming the standard hydrological models (both conceptual and physically based). However, and despite some recent efforts, the results of the machine learning models require significant effort to interpret and derive inferences. Furthermore, all successful applications o...
Several studies indicate that the data-driven models have proven to be potentially useful tools in h...
Recent droughts in Europe have shown that national water systems are facing increasing challenges wh...
Thesis (Ph.D.)--University of Washington, 2021An explosion of new data sources, expansion of computi...
Machine learning has been used in hydrological applications for decades, and recently, it was proven...
With more machine learning methods being involved in social and environmental research activities, w...
With more machine learning methods being involved in social and environmental research activities, w...
With more machine learning methods being involved in social and environmental research activities, w...
The growing menace of global warming and restrictions on access to water in each region is a huge th...
Streamflow prediction in ungauged basins (PUB) is a process generating streamflow time series at ung...
In the past decade, machine learning methods for empirical rainfall–runoff modeling have seen ...
Flooding is among the most devastating natural disasters (Wilby et al. 2012). Developing areas are v...
This study presents a novel application of machine learning to deliver optimised, multi-model combin...
The intercomparison of streamflow simulation and the prediction of discharge using various renowned ...
Despite showing great success of applications in many commercial fields, machine learning and data s...
ABSTRACT: This paper is derived from a keynote talk given at the Google's 2020 Flood Forecasting Mee...
Several studies indicate that the data-driven models have proven to be potentially useful tools in h...
Recent droughts in Europe have shown that national water systems are facing increasing challenges wh...
Thesis (Ph.D.)--University of Washington, 2021An explosion of new data sources, expansion of computi...
Machine learning has been used in hydrological applications for decades, and recently, it was proven...
With more machine learning methods being involved in social and environmental research activities, w...
With more machine learning methods being involved in social and environmental research activities, w...
With more machine learning methods being involved in social and environmental research activities, w...
The growing menace of global warming and restrictions on access to water in each region is a huge th...
Streamflow prediction in ungauged basins (PUB) is a process generating streamflow time series at ung...
In the past decade, machine learning methods for empirical rainfall–runoff modeling have seen ...
Flooding is among the most devastating natural disasters (Wilby et al. 2012). Developing areas are v...
This study presents a novel application of machine learning to deliver optimised, multi-model combin...
The intercomparison of streamflow simulation and the prediction of discharge using various renowned ...
Despite showing great success of applications in many commercial fields, machine learning and data s...
ABSTRACT: This paper is derived from a keynote talk given at the Google's 2020 Flood Forecasting Mee...
Several studies indicate that the data-driven models have proven to be potentially useful tools in h...
Recent droughts in Europe have shown that national water systems are facing increasing challenges wh...
Thesis (Ph.D.)--University of Washington, 2021An explosion of new data sources, expansion of computi...