In this work, the use of adaptive filters for reducing forecast errors produced by a Regional Climate Model (RCM) is investigated. Seasonal forecasts are compared against the reanalysis data provided by the National Centers for Environmental Prediction. The reanalysis is used to train adaptive filters based on the Recursive Least Squares algorithm in order to reduce the forecast error. The K-means unsupervised learning algorithm is used to obtain the number of filters to employ from the climate variables. The proposed approach is applied to some climate variables such as the meridional wind, zonal wind, and the geopotential height. The forecast is produced by the Eta RCM at 40-km resolution in a domain covering most of Brazil. Results show ...
The skill of seasonal forecasts of temperature and precipitation globally, and over Europe and Colom...
Two new postprocessing methods are proposed to reduce numerical weather prediction’s systematic and ...
Ocean and atmospheric Coupled Global Climate Models (CGCMs) have been widely used to provide more ac...
Using the APEC Climate Center (APCC) operational multimodel ensemble (MME) hindcasts of precipitatio...
In general, meteorological parameters such as temperature, rain and global radiation are important f...
In the current context of climate change discussions, predictions of future scenarios of weather and...
Many natural disasters in South America are linked to meteorological phenomena. Therefore, forecasti...
The issue of global climate change due to increased anthropogenic emissions of greenhouse gases in t...
This study shows an assessment of the seasonal forecast model RegCM3 in two extreme events of precip...
A high-resolution drought forecast model for ungauged areas was developed in this study. The Standar...
Many studies have 'been done in the context of climate predictability of precipitation and temperatu...
Simulated climate dynamics, initialized with observed conditions, is expected to be synchronized, fo...
The authors propose the use of a “climate filter” concept to enhance prediction skill of a multimode...
This work presents an assessment of the predictability and skill of climate anomalies over South Ame...
Bias correction is a necessary post-processing procedure in order to use Regional Climate Model (RCM...
The skill of seasonal forecasts of temperature and precipitation globally, and over Europe and Colom...
Two new postprocessing methods are proposed to reduce numerical weather prediction’s systematic and ...
Ocean and atmospheric Coupled Global Climate Models (CGCMs) have been widely used to provide more ac...
Using the APEC Climate Center (APCC) operational multimodel ensemble (MME) hindcasts of precipitatio...
In general, meteorological parameters such as temperature, rain and global radiation are important f...
In the current context of climate change discussions, predictions of future scenarios of weather and...
Many natural disasters in South America are linked to meteorological phenomena. Therefore, forecasti...
The issue of global climate change due to increased anthropogenic emissions of greenhouse gases in t...
This study shows an assessment of the seasonal forecast model RegCM3 in two extreme events of precip...
A high-resolution drought forecast model for ungauged areas was developed in this study. The Standar...
Many studies have 'been done in the context of climate predictability of precipitation and temperatu...
Simulated climate dynamics, initialized with observed conditions, is expected to be synchronized, fo...
The authors propose the use of a “climate filter” concept to enhance prediction skill of a multimode...
This work presents an assessment of the predictability and skill of climate anomalies over South Ame...
Bias correction is a necessary post-processing procedure in order to use Regional Climate Model (RCM...
The skill of seasonal forecasts of temperature and precipitation globally, and over Europe and Colom...
Two new postprocessing methods are proposed to reduce numerical weather prediction’s systematic and ...
Ocean and atmospheric Coupled Global Climate Models (CGCMs) have been widely used to provide more ac...