This study presents a novel application of machine learning to deliver optimised, multi-model combinations (MMCs) of Global Hydrological Model (GHM) simulations. We exemplify the approach using runoff simulations from five GHMs across 40 large global catchments. The benchmarked, median performance gain of the MMC solutions is 45% compared to the best performing GHM and exceeds 100% when compared to the ensemble mean (EM). The performance gain offered by MMC suggests that future multi-model applications consider reporting MMCs, alongside the EM and intermodal range, to provide end-users of GHM ensembles with a better contextualised estimate of runoff. Importantly, the study highlights the difficulty of interpreting complex, non-linear MMC so...
The intercomparison of streamflow simulation and the prediction of discharge using various renowned ...
This thesis presents powerful machine learning (ML) techniques to build predictive models of uncerta...
In the MLUE method (reported in Shrestha et al. [1, 2]) we run a hydrological model M for multiple r...
This study presents a novel application of machine learning to deliver optimised, multi-model combin...
Machine learning has been employed successfully as a tool virtually in every scientific and technolo...
Despite showing great success of applications in many commercial fields, machine learning and data s...
The growing menace of global warming and restrictions on access to water in each region is a huge th...
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...
Machine learning has been used in hydrological applications for decades, and recently, it was proven...
Flooding is among the most devastating natural disasters (Wilby et al. 2012). Developing areas are v...
In the past decade, machine learning methods for empirical rainfall–runoff modeling have seen ...
The use of machine learning (ML) for predicting high river flow events is gaining prominence and amo...
Technological advances in computer science, namely cloud computing and data mining, are reshaping th...
The intercomparison of streamflow simulation and the prediction of discharge using various renowned ...
This thesis presents powerful machine learning (ML) techniques to build predictive models of uncerta...
In the MLUE method (reported in Shrestha et al. [1, 2]) we run a hydrological model M for multiple r...
This study presents a novel application of machine learning to deliver optimised, multi-model combin...
Machine learning has been employed successfully as a tool virtually in every scientific and technolo...
Despite showing great success of applications in many commercial fields, machine learning and data s...
The growing menace of global warming and restrictions on access to water in each region is a huge th...
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...
Machine learning has been used in hydrological applications for decades, and recently, it was proven...
Flooding is among the most devastating natural disasters (Wilby et al. 2012). Developing areas are v...
In the past decade, machine learning methods for empirical rainfall–runoff modeling have seen ...
The use of machine learning (ML) for predicting high river flow events is gaining prominence and amo...
Technological advances in computer science, namely cloud computing and data mining, are reshaping th...
The intercomparison of streamflow simulation and the prediction of discharge using various renowned ...
This thesis presents powerful machine learning (ML) techniques to build predictive models of uncerta...
In the MLUE method (reported in Shrestha et al. [1, 2]) we run a hydrological model M for multiple r...