This study presents a new methodology for improving forecasts of current monthly, regional precipitation using video-based convolutional neural networks (CNNs). Using 13 administrative regions of Great Britain as a case study, three CNN architectures are trained for each region to forecast monthly rainfall totals given forecast mean sea-level pressure and 2-m air temperature videos from the MetOffice GloSEA5 model and a benchmark rainfall data. The forecasts generated by the CNN and the GloSEA5 precipitation forecasts are both compared directly against a benchmark rainfall dataset for each of the regions. Following this, the CNN models are combined with the GloSEA5 forecasts to generate a new ensemble for each region which is then compared ...
Weather forecasting is dominated by numerical weather prediction that tries to model accurately the ...
El Nino southern Oscillation (ENSO) and Indian Ocean Dipole (IOD) have enormous effects on the preci...
Rainfall has a great impact on agriculture and people’s daily travel, so accurate prediction of prec...
This study presents a new methodology for improving forecasts of current monthly, regional precipita...
Rainfall prediction targets the determination of rainfall conditions over a specific location. It is...
Rainfall is a complex meteorological process that affects the environment, human based activities, a...
Brisbane, the capital of Queensland, Australia, has flooded periodically and catastrophically, most ...
Rainfall forecasting is vital for making important decisions and performing strategic planning in ag...
Medium range precipitation forecasts are a crucial input of hydrology models that provide streamflow...
In this study, the application of artificial intelligence to monthly and seasonal rainfall forecasti...
Accurate and timely precipitation estimates are critical for monitoring and forecasting natural disa...
Artificial intelligence through deep neural networks is now widely used in a variety of applications...
International audienceThe present study developed an artificial neural network (ANN) model to overco...
Abstract--Rainfall forecasting ia important for many catchment management applications, in particula...
Quantitative approaches are very useful tools in forecasting purposes among the hydrologists for enh...
Weather forecasting is dominated by numerical weather prediction that tries to model accurately the ...
El Nino southern Oscillation (ENSO) and Indian Ocean Dipole (IOD) have enormous effects on the preci...
Rainfall has a great impact on agriculture and people’s daily travel, so accurate prediction of prec...
This study presents a new methodology for improving forecasts of current monthly, regional precipita...
Rainfall prediction targets the determination of rainfall conditions over a specific location. It is...
Rainfall is a complex meteorological process that affects the environment, human based activities, a...
Brisbane, the capital of Queensland, Australia, has flooded periodically and catastrophically, most ...
Rainfall forecasting is vital for making important decisions and performing strategic planning in ag...
Medium range precipitation forecasts are a crucial input of hydrology models that provide streamflow...
In this study, the application of artificial intelligence to monthly and seasonal rainfall forecasti...
Accurate and timely precipitation estimates are critical for monitoring and forecasting natural disa...
Artificial intelligence through deep neural networks is now widely used in a variety of applications...
International audienceThe present study developed an artificial neural network (ANN) model to overco...
Abstract--Rainfall forecasting ia important for many catchment management applications, in particula...
Quantitative approaches are very useful tools in forecasting purposes among the hydrologists for enh...
Weather forecasting is dominated by numerical weather prediction that tries to model accurately the ...
El Nino southern Oscillation (ENSO) and Indian Ocean Dipole (IOD) have enormous effects on the preci...
Rainfall has a great impact on agriculture and people’s daily travel, so accurate prediction of prec...