Since model bias and associated initialization shock are serious shortcomings that reduce prediction skills in state-of-the-art decadal climate prediction efforts, we pursue a complementary machine-learning-based approach to climate prediction. The example problem setting we consider consists of predicting natural variability of the North Atlantic sea surface temperature on the interannual timescale in the pre-industrial control simulation of the Community Earth System Model (CESM2). While previous works have considered the use of recurrent networks such as convolutional LSTMs and reservoir computing networks in this and other similar problem settings, we currently focus on the use of feedforward convolutional networks. In particular, we fi...
©2018. The Authors. The parameterization of moist convection contributes to uncertainty in climate m...
Weather forecasts are inherently uncertain. Therefore, for many applications forecasts are only cons...
©2018. The Authors. The parameterization of moist convection contributes to uncertainty in climate m...
Computer codes and data associated with the manuscript "A Bayesian Deep Learning Approach to Near-Te...
Machine learning is becoming an increasingly important tool for climate scientists, but hampered by ...
Numerical weather prediction has traditionally been based on the models that discretize the dynamica...
Simulated climate dynamics, initialized with observed conditions, is expected to be synchronized, fo...
This paper shows that skillful week 3–4 predictions of a large-scale pattern of 2 m temperature over...
Dynamical weather and climate prediction models underpin many studies of the Earth system and hold t...
Dynamical weather and climate prediction models underpin many studies of the Earth system and hold t...
Modeling and monitoring of earths processes through physical models and satellite observations at hi...
Deep learning – machine learning using deep neural networks – is an efficient way to discover patter...
Weather and climate prediction is dominated by high dimensionality, interactions on many different s...
There is a growing need for skilful predictions of climate up to a decade ahead. Decadal climate pre...
There is a growing need for skilful predictions of climate up to a decade ahead. Decadal climate pre...
©2018. The Authors. The parameterization of moist convection contributes to uncertainty in climate m...
Weather forecasts are inherently uncertain. Therefore, for many applications forecasts are only cons...
©2018. The Authors. The parameterization of moist convection contributes to uncertainty in climate m...
Computer codes and data associated with the manuscript "A Bayesian Deep Learning Approach to Near-Te...
Machine learning is becoming an increasingly important tool for climate scientists, but hampered by ...
Numerical weather prediction has traditionally been based on the models that discretize the dynamica...
Simulated climate dynamics, initialized with observed conditions, is expected to be synchronized, fo...
This paper shows that skillful week 3–4 predictions of a large-scale pattern of 2 m temperature over...
Dynamical weather and climate prediction models underpin many studies of the Earth system and hold t...
Dynamical weather and climate prediction models underpin many studies of the Earth system and hold t...
Modeling and monitoring of earths processes through physical models and satellite observations at hi...
Deep learning – machine learning using deep neural networks – is an efficient way to discover patter...
Weather and climate prediction is dominated by high dimensionality, interactions on many different s...
There is a growing need for skilful predictions of climate up to a decade ahead. Decadal climate pre...
There is a growing need for skilful predictions of climate up to a decade ahead. Decadal climate pre...
©2018. The Authors. The parameterization of moist convection contributes to uncertainty in climate m...
Weather forecasts are inherently uncertain. Therefore, for many applications forecasts are only cons...
©2018. The Authors. The parameterization of moist convection contributes to uncertainty in climate m...