Abstract This study assesses the deterministic and probabilistic forecasting skill of a 1-month-lead ensemble of Artificial Neural Networks (EANN) based on low-frequency climate oscillation indices. The predictand is the February-April (FMA) rainfall in the Brazilian state of Ceará, which is a prominent subject in climate forecasting studies due to its high seasonal predictability. Additionally, the study proposes combining the EANN with dynamical models into a hybrid multi-model ensemble (MME). The forecast verification is carried out through a leave-one-out cross-validation based on 40 years of data. The EANN forecasting skill is compared with traditional statistical models and the dynamical models that compose Ceará’s operational seasona...
This study explores both from a theoretical and empirical perspective how to model deterministic sea...
Weather and climate prediction is dominated by high dimensionality, interactions on many different s...
Abstract The socioeconomic impact of weather extremes draws the attention of researchers to the deve...
Agriculture is vulnerable to the interannual climate variability and to its unpredictability, in suc...
Rainfall is a complex meteorological process that affects the environment, human based activities, a...
Sistemas climatolÃgicos sÃo caracterizados por apresentarem modelagem complexa e de baixa previsibil...
Climatological systems are characterized by complex modeling and having low predictability. In semi-...
Precipitation and temperature have an impact on various sectors of society, such as agriculture, pow...
Climatological records users, frequently, request time series for geographical locations where there...
Rainfall is the key element in regional water balance, and has direct influence over economic activi...
Quantitative approaches are very useful tools in forecasting purposes among the hydrologists for enh...
Precipitation is the hardest meteorological field to be predicted. An approach based on and optimal ...
In this study, the application of artificial intelligence to monthly and seasonal rainfall forecasti...
General circulation models, which forecast by first modelling actual conditions in the atmosphere an...
Many natural disasters in South America are linked to meteorological phenomena. Therefore, forecasti...
This study explores both from a theoretical and empirical perspective how to model deterministic sea...
Weather and climate prediction is dominated by high dimensionality, interactions on many different s...
Abstract The socioeconomic impact of weather extremes draws the attention of researchers to the deve...
Agriculture is vulnerable to the interannual climate variability and to its unpredictability, in suc...
Rainfall is a complex meteorological process that affects the environment, human based activities, a...
Sistemas climatolÃgicos sÃo caracterizados por apresentarem modelagem complexa e de baixa previsibil...
Climatological systems are characterized by complex modeling and having low predictability. In semi-...
Precipitation and temperature have an impact on various sectors of society, such as agriculture, pow...
Climatological records users, frequently, request time series for geographical locations where there...
Rainfall is the key element in regional water balance, and has direct influence over economic activi...
Quantitative approaches are very useful tools in forecasting purposes among the hydrologists for enh...
Precipitation is the hardest meteorological field to be predicted. An approach based on and optimal ...
In this study, the application of artificial intelligence to monthly and seasonal rainfall forecasti...
General circulation models, which forecast by first modelling actual conditions in the atmosphere an...
Many natural disasters in South America are linked to meteorological phenomena. Therefore, forecasti...
This study explores both from a theoretical and empirical perspective how to model deterministic sea...
Weather and climate prediction is dominated by high dimensionality, interactions on many different s...
Abstract The socioeconomic impact of weather extremes draws the attention of researchers to the deve...