In response to growing concerns surrounding the relationship between climate change and escalating flood risk, there is an increasing urgency to develop precise and rapid flood prediction models. Although high-resolution flood simulations have made notable advancements, they remain computationally expensive, underscoring the need for efficient machine learning surrogate models. As a result of sparse empirical observation and expensive data collection, there is a growing need for the models to perform effectively in ‘small-data’ contexts, a characteristic typical of many scientific problems. This research combines the latest developments in surrogate modelling and physics-informed machine learning to propose a novel Physics-Informed Neural N...
Deep learning techniques have been increasingly used in flood management to overcome the limitations...
Climate change is driving worsening flood events worldwide. In this study, a hybrid approach based o...
Most of the two-dimensional (2D) hydraulic/hydrodynamic models are still computationally too demandi...
Notable advancements in computational power has facilitated the utilization of intricate numerical m...
Two-dimensional hydrodynamic models numerically solve full Shallow Water Equations (SWEs). Despite t...
Flood simulations can give insight into the consequences of flood scenario's and can help to create ...
Large-scale river models are being refined over coastal regions to improve the scientific understand...
International audienceUnderstanding, simulating and forecasting dynamic and nonlinear natural phenom...
A warming climate will intensify the water cycle, resulting in an exacerbation of water resources cr...
We propose and demonstrate a new approach for fast and accurate surrogate modelling of urban drainag...
Machine learning methods have been widely and successfully applied in hydrological problems. Most of...
City-wide climate adaptation for pluvial flood mitigation requires fast and reliable simulation tool...
International audienceWe present the application of two statistical artificial intelligence tools fo...
While machine learning approaches are rapidly being applied to hydrologic problems, physics-informed...
Streamflow simulation and forecasting is an important approach for water resources management and fl...
Deep learning techniques have been increasingly used in flood management to overcome the limitations...
Climate change is driving worsening flood events worldwide. In this study, a hybrid approach based o...
Most of the two-dimensional (2D) hydraulic/hydrodynamic models are still computationally too demandi...
Notable advancements in computational power has facilitated the utilization of intricate numerical m...
Two-dimensional hydrodynamic models numerically solve full Shallow Water Equations (SWEs). Despite t...
Flood simulations can give insight into the consequences of flood scenario's and can help to create ...
Large-scale river models are being refined over coastal regions to improve the scientific understand...
International audienceUnderstanding, simulating and forecasting dynamic and nonlinear natural phenom...
A warming climate will intensify the water cycle, resulting in an exacerbation of water resources cr...
We propose and demonstrate a new approach for fast and accurate surrogate modelling of urban drainag...
Machine learning methods have been widely and successfully applied in hydrological problems. Most of...
City-wide climate adaptation for pluvial flood mitigation requires fast and reliable simulation tool...
International audienceWe present the application of two statistical artificial intelligence tools fo...
While machine learning approaches are rapidly being applied to hydrologic problems, physics-informed...
Streamflow simulation and forecasting is an important approach for water resources management and fl...
Deep learning techniques have been increasingly used in flood management to overcome the limitations...
Climate change is driving worsening flood events worldwide. In this study, a hybrid approach based o...
Most of the two-dimensional (2D) hydraulic/hydrodynamic models are still computationally too demandi...