We constructed two types of neural network models for forecasting the sea surface temperature anomaly (SSTA) over several standard equatorial Pacific regions (Niño 3, 3.4, 3.5, 4, P2, P4, and P5). The first type used the sea level pressure (SLP) as predictors, while the second one used the wind stress. By ensemble averaging over 20 forecasts with random initial weights, the resulting forecasts were much less noisy than those in our earlier models. The models performed best in the western-central equatorial regions and less well in the eastern boundary regions. At longer leads of 9 – 12 months, the cross-validated skills (1952 – 1993) for the models using the tropical Pacific SLP as predictors were statistically higher than those using the w...
Among the statistical methods used for seasonal climate prediction, canonical correlation analysis (...
Among the statistical methods used for seasonal climate prediction, canonical correlation analysis (...
anomaly are presented here using a linear statistical model (Markov model). The Markov model is cons...
Neural Network forecasts of the tropical Pacific sea surface temperatures A nonlinear forecast syste...
Nonlinear and linear regression models were developed to forecast the sea surface temperature anomal...
Nonlinear and linear regression models were developed to forecast the sea surface temperature anomal...
Neural network models were used to seasonally forecast the tropical Pacific sea surface temperature...
A brief review of researches on the application of the neural networks in the area of meteorology, o...
Neural network models were used to seasonally forecast the tropical Pacific sea surface temperature...
The authors constructed neural network models to forecast the sea surface temperature anomalies (SST...
The authors constructed neural network models to forecast the sea surface temperature anomalies (SST...
The prediction of sea surface temperature (SST) on the basis of artificial neural networks (ANNs) ca...
We present an artificial neural network model to predict the sea surface temperature (SST) and delin...
210-220Artificial Neural Networks (ANN) have been used to access the predictability of sea surface t...
Among the statistical methods used for seasonal climate prediction, canonical correlation analysis (...
Among the statistical methods used for seasonal climate prediction, canonical correlation analysis (...
Among the statistical methods used for seasonal climate prediction, canonical correlation analysis (...
anomaly are presented here using a linear statistical model (Markov model). The Markov model is cons...
Neural Network forecasts of the tropical Pacific sea surface temperatures A nonlinear forecast syste...
Nonlinear and linear regression models were developed to forecast the sea surface temperature anomal...
Nonlinear and linear regression models were developed to forecast the sea surface temperature anomal...
Neural network models were used to seasonally forecast the tropical Pacific sea surface temperature...
A brief review of researches on the application of the neural networks in the area of meteorology, o...
Neural network models were used to seasonally forecast the tropical Pacific sea surface temperature...
The authors constructed neural network models to forecast the sea surface temperature anomalies (SST...
The authors constructed neural network models to forecast the sea surface temperature anomalies (SST...
The prediction of sea surface temperature (SST) on the basis of artificial neural networks (ANNs) ca...
We present an artificial neural network model to predict the sea surface temperature (SST) and delin...
210-220Artificial Neural Networks (ANN) have been used to access the predictability of sea surface t...
Among the statistical methods used for seasonal climate prediction, canonical correlation analysis (...
Among the statistical methods used for seasonal climate prediction, canonical correlation analysis (...
Among the statistical methods used for seasonal climate prediction, canonical correlation analysis (...
anomaly are presented here using a linear statistical model (Markov model). The Markov model is cons...