This study explores the predictive skill of seasonal rainfall characteristics for the first rainy (and planting) season, May–June, in Central America. Statistical predictive models were built using a Model Output Statistics (MOS) technique based on canonical correlation analysis, in which variables that forecast with the Climate Forecast System version 2 (CFSv2) were used as candidate predictors for the observed total precipitation, frequency of rainy days and mean number of extremely dry and wet events in the season. CFSv2 initializations from February to April were explored. The CFSv2 variables used in the study consist of rainfall, as in a typical MOS technique, and a combination of low-level winds and convective available potential ener...
Skilful and reliable predictions of week-to-week rainfall variations in South America, two to three ...
We quantify seasonal prediction skill of tropical winter rainfall in 14 climate forecast systems. Hi...
Subseasonal rainfall forecast skill is critical to support preparedness for hydrometeorological extr...
This study explores the predictive skill of seasonal rainfall characteristics for the first rainy (a...
The prediction of the May-June (MJ) precipitation as the first peak of the rainy season is important...
Better drought preparedness is critically needed in the Central American Dry Corridor (CADC). Season...
A statistical model based on canonical correlation analysis was used to explore the predictability ...
International audienceThis study addresses seasonal predictability of South American rainfall during...
Artículo científico -- Universidad de Costa Rica. Centro de Investigaciones Geofísicas, 2013High mou...
The skill of precipitation forecasts from global prediction systems has a strong regional and season...
Rainfall in Guanacaste, Costa Rica, has marked wet/dry phases: the rainy season is punctuated by a s...
The seasonal predictability of daily winter rainfall characteristics relevant to dry-land management...
Smallholder livelihoods throughout Central America are built on rain‐fed agriculture and depend on s...
We explored the relationship between the precipitation anomalies during May to June as the first pea...
The potential of an experimental nested prediction system to improve the simulation of subseasonal r...
Skilful and reliable predictions of week-to-week rainfall variations in South America, two to three ...
We quantify seasonal prediction skill of tropical winter rainfall in 14 climate forecast systems. Hi...
Subseasonal rainfall forecast skill is critical to support preparedness for hydrometeorological extr...
This study explores the predictive skill of seasonal rainfall characteristics for the first rainy (a...
The prediction of the May-June (MJ) precipitation as the first peak of the rainy season is important...
Better drought preparedness is critically needed in the Central American Dry Corridor (CADC). Season...
A statistical model based on canonical correlation analysis was used to explore the predictability ...
International audienceThis study addresses seasonal predictability of South American rainfall during...
Artículo científico -- Universidad de Costa Rica. Centro de Investigaciones Geofísicas, 2013High mou...
The skill of precipitation forecasts from global prediction systems has a strong regional and season...
Rainfall in Guanacaste, Costa Rica, has marked wet/dry phases: the rainy season is punctuated by a s...
The seasonal predictability of daily winter rainfall characteristics relevant to dry-land management...
Smallholder livelihoods throughout Central America are built on rain‐fed agriculture and depend on s...
We explored the relationship between the precipitation anomalies during May to June as the first pea...
The potential of an experimental nested prediction system to improve the simulation of subseasonal r...
Skilful and reliable predictions of week-to-week rainfall variations in South America, two to three ...
We quantify seasonal prediction skill of tropical winter rainfall in 14 climate forecast systems. Hi...
Subseasonal rainfall forecast skill is critical to support preparedness for hydrometeorological extr...