In the last three decades many sophisticated tools have been developed that can accurately predict the dynamics of flooding. However, due to the paucity of adequate infrastructure, this technological advancement did not benefit ungauged flood-prone regions in the developing countries in a major way. The overall research theme of this dissertation is to explore the improvement in methodology that is essential for utilising recently developed flood prediction and management tools in the developing world, where ideal model inputs and validation datasets do not exist. This research addresses important issues related to undertaking inundation modelling at different scales, particularly in data-sparse environments. The results indicate that ...
Aims: The impacts of catastrophic flooding have steadily increased over the last few decades. This w...
Flood forecasting and warning is a non-structural measure which has proved to be efficient and cost ...
Globally, many studies on machine learning (ML)-based flood susceptibility modeling have been carrie...
Flood inundation modelling in developing countries is severely limited by the lack of high resolutio...
Many developing countries are very vulnerable to flood risk since they are located in climatic zones...
Discharge observations and reliable rainfall forecasts are essential for flood prediction but their ...
Discharge observations and reliable rainfall forecasts are essential for flood prediction but their ...
Discharge observations and reliable rainfall forecasts are essential for flood prediction but their ...
Discharge observations and reliable rainfall forecasts are essential for flood prediction but their ...
Discharge observations and reliable rainfall forecasts are essential for flood prediction but their ...
Flood is a natural disaster that occurs almost regularly in Malaysia particularly during the monsoon...
Flood is a natural disaster that occurs almost regularly in Malaysia particularly during the monsoon...
Thesis (M.Sc.)-University of Natal, Durban,2003.The research project described in this dissertation ...
In the light of uncertain climate change, there is a need to assess flood risk outside the realm of ...
Study region: Terrain and hydrological data are scarce in many African countries. The coarse spatial...
Aims: The impacts of catastrophic flooding have steadily increased over the last few decades. This w...
Flood forecasting and warning is a non-structural measure which has proved to be efficient and cost ...
Globally, many studies on machine learning (ML)-based flood susceptibility modeling have been carrie...
Flood inundation modelling in developing countries is severely limited by the lack of high resolutio...
Many developing countries are very vulnerable to flood risk since they are located in climatic zones...
Discharge observations and reliable rainfall forecasts are essential for flood prediction but their ...
Discharge observations and reliable rainfall forecasts are essential for flood prediction but their ...
Discharge observations and reliable rainfall forecasts are essential for flood prediction but their ...
Discharge observations and reliable rainfall forecasts are essential for flood prediction but their ...
Discharge observations and reliable rainfall forecasts are essential for flood prediction but their ...
Flood is a natural disaster that occurs almost regularly in Malaysia particularly during the monsoon...
Flood is a natural disaster that occurs almost regularly in Malaysia particularly during the monsoon...
Thesis (M.Sc.)-University of Natal, Durban,2003.The research project described in this dissertation ...
In the light of uncertain climate change, there is a need to assess flood risk outside the realm of ...
Study region: Terrain and hydrological data are scarce in many African countries. The coarse spatial...
Aims: The impacts of catastrophic flooding have steadily increased over the last few decades. This w...
Flood forecasting and warning is a non-structural measure which has proved to be efficient and cost ...
Globally, many studies on machine learning (ML)-based flood susceptibility modeling have been carrie...