Oceanic temperature has a great impact on global climate and worldwide ecosystems, as its anomalies have been shown to have a direct impact on atmospheric anomalies. The major parameter for measuring the thermal energy of oceans is the sea surface temperature (SST). SST prediction plays an essential role in climatology and ocean-related studies. However, SST prediction is challenging due to the involvement of complex and nonlinear sea thermodynamic factors. To address this challenge, we design a novel ensemble of two stacked deep neural networks (DNNs) that uses air temperature, in addition to water temperature, to improve the SST prediction accuracy. To train our model and compare its accuracy with the state-of-the-art, we employ two well-...
For ships on voyage, using satellite remote sensing observations is an effective way to access ocean...
Nonlinear and linear regression models were developed to forecast the sea surface temperature anomal...
Temporal prediction of three-dimensional spatial fields of ocean temperature, salinity and flow is i...
Sea surface temperature (SST) forecasting is the task of predicting future values of a given sequenc...
The prediction of sea surface temperature (SST) on the basis of artificial neural networks (ANNs) ca...
Sea surface temperature (SST) is one of the most important and widely used physical parameters for o...
The prediction of sea surface temperature (SST) in real-time or online mode has applications in plan...
We constructed two types of neural network models for forecasting the sea surface temperature anomal...
In situ and remotely sensed observations have potential to facilitate data-driven predictive models ...
A brief review of researches on the application of the neural networks in the area of meteorology, o...
We present an artificial neural network model to predict the sea surface temperature (SST) and delin...
Presented at the GHRSST XXIII international science team meeting, 27 June-1 July 2022, online and in...
The application of remote sensing observations in estimating ocean sub-surface temperatures has been...
Due to the application demand, users have higher expectations for the accuracy and resolution of sea...
Neural Network forecasts of the tropical Pacific sea surface temperatures A nonlinear forecast syste...
For ships on voyage, using satellite remote sensing observations is an effective way to access ocean...
Nonlinear and linear regression models were developed to forecast the sea surface temperature anomal...
Temporal prediction of three-dimensional spatial fields of ocean temperature, salinity and flow is i...
Sea surface temperature (SST) forecasting is the task of predicting future values of a given sequenc...
The prediction of sea surface temperature (SST) on the basis of artificial neural networks (ANNs) ca...
Sea surface temperature (SST) is one of the most important and widely used physical parameters for o...
The prediction of sea surface temperature (SST) in real-time or online mode has applications in plan...
We constructed two types of neural network models for forecasting the sea surface temperature anomal...
In situ and remotely sensed observations have potential to facilitate data-driven predictive models ...
A brief review of researches on the application of the neural networks in the area of meteorology, o...
We present an artificial neural network model to predict the sea surface temperature (SST) and delin...
Presented at the GHRSST XXIII international science team meeting, 27 June-1 July 2022, online and in...
The application of remote sensing observations in estimating ocean sub-surface temperatures has been...
Due to the application demand, users have higher expectations for the accuracy and resolution of sea...
Neural Network forecasts of the tropical Pacific sea surface temperatures A nonlinear forecast syste...
For ships on voyage, using satellite remote sensing observations is an effective way to access ocean...
Nonlinear and linear regression models were developed to forecast the sea surface temperature anomal...
Temporal prediction of three-dimensional spatial fields of ocean temperature, salinity and flow is i...