This paper presents a viewpoint from computer vision to the radar echo extrapolation task in the precipitation nowcasting domain. Inspired by the success of some convolutional recurrent neural network models in this domain, including convolutional LSTM, convolutional GRU and trajectory GRU, we designed a new sequence-to-sequence neural network structure to leverage these models in a realistic data context. In this design, we decreased the numbers of channels in high abstract recurrent layers rather than increasing them. We formulated the task as a problem of encoding five radar images and predicting 10 steps ahead at the pixel level, and found that using only the common mean squared error can misguide the training and mislead the testing. E...
Accurate short-term forecasts, also known as nowcasts, of heavy precipitation are desirable for crea...
Accurate short term rain predictions are important for flood early warning systems, emergency servic...
International audienceQuality of radar data is critical for climatology, analysis and forecast. Actu...
Deep-learning-based radar echo extrapolation methods have achieved remarkable progress in the precip...
Nowcasting of severe convective precipitation is of great importance in meteorological disaster prev...
Today deep learning is taking its rise in hydrometeorological applications, and it is critical to ex...
Abstract Strong convection nowcasting has been gaining importance in operational weather forecasting...
International audienceRaw data issued from meteorological radars are often corrupted by unwanted sig...
Short-term rainfall prediction by radar echo map extrapolation has been a very hot area of research ...
Radars are widely used to obtain echo information for effective prediction, such as precipitation no...
In this study, a convection nowcasting method based on machine learning was proposed. First, the his...
Nowadays deep learning-based weather radar echo extrapolation methods have competently improved nowc...
Currently, most deep learning (DL)-based models for precipitation forecasting face two conspicuous i...
To improve precipitation estimation accuracy, new methods, which are able to merge different precipi...
Short-term precipitation forecast in local areas based on radar reflectance images has become a hot ...
Accurate short-term forecasts, also known as nowcasts, of heavy precipitation are desirable for crea...
Accurate short term rain predictions are important for flood early warning systems, emergency servic...
International audienceQuality of radar data is critical for climatology, analysis and forecast. Actu...
Deep-learning-based radar echo extrapolation methods have achieved remarkable progress in the precip...
Nowcasting of severe convective precipitation is of great importance in meteorological disaster prev...
Today deep learning is taking its rise in hydrometeorological applications, and it is critical to ex...
Abstract Strong convection nowcasting has been gaining importance in operational weather forecasting...
International audienceRaw data issued from meteorological radars are often corrupted by unwanted sig...
Short-term rainfall prediction by radar echo map extrapolation has been a very hot area of research ...
Radars are widely used to obtain echo information for effective prediction, such as precipitation no...
In this study, a convection nowcasting method based on machine learning was proposed. First, the his...
Nowadays deep learning-based weather radar echo extrapolation methods have competently improved nowc...
Currently, most deep learning (DL)-based models for precipitation forecasting face two conspicuous i...
To improve precipitation estimation accuracy, new methods, which are able to merge different precipi...
Short-term precipitation forecast in local areas based on radar reflectance images has become a hot ...
Accurate short-term forecasts, also known as nowcasts, of heavy precipitation are desirable for crea...
Accurate short term rain predictions are important for flood early warning systems, emergency servic...
International audienceQuality of radar data is critical for climatology, analysis and forecast. Actu...