The “butterfly effect” is a popularly known paradigm; commonly it is said that when a butterfly flaps its wings in Brazil, it may cause a tornado in Texas. This essentially describes how weather forecasts can be extremely senstive to small changes in the given atmospheric data, or initial conditions, used in computer model simulations. In 1961 Edward Lorenz found, when running a weather model, that small changes in the initial conditions given to the model can, over time, lead to entriely different forecasts (Lorenz, 1963). This discovery highlights one of the major challenges in modern weather forecasting; that is to provide the computer model with the most accurately specified initial conditions possible. A process known as data as...
State estimation lies at the heart of many meteorological tasks. Pseudo-orbit-based data assimilatio...
The skill of weather forecasts has improved dramatically over the past 30 years. This improvement ha...
The seamless integration of large data sets into sophisticated computational models provides one ...
This thesis studies the benefits of simultaneously considering system information from different sou...
Weather models forecast the future state of the atmosphere from an estimate of the current state of ...
Weather forecasting consists of two processes, model integration and analysis (data assimilation). D...
Atmospheric data assimilation is a class of techniques used for producing descriptions of fields of ...
A new approach for improving the accuracy of data assimilation, by trading numerical precision for e...
Data assimilation (DA) methods combine a prior forecast (background state) with the latest observati...
Data Assimilation: From an Eventful Past to a Bright Future Michael Ghil, Ecole Normale Supérieure ...
Data assimilation in Numerical Weather Prediction (NWP) optimally blends observations with atmospher...
This thesis studies the benefits of simultaneously considering system informa-tion from different so...
Data assimilation in Numerical Weather Prediction (NWP) optimally blends observations with atmospher...
The background error covariance matrix, B, is often used in variational data assimilation for numeri...
State estimation lies at the heart of many meteorological tasks. Pseudo-orbit-based data assimilatio...
State estimation lies at the heart of many meteorological tasks. Pseudo-orbit-based data assimilatio...
The skill of weather forecasts has improved dramatically over the past 30 years. This improvement ha...
The seamless integration of large data sets into sophisticated computational models provides one ...
This thesis studies the benefits of simultaneously considering system information from different sou...
Weather models forecast the future state of the atmosphere from an estimate of the current state of ...
Weather forecasting consists of two processes, model integration and analysis (data assimilation). D...
Atmospheric data assimilation is a class of techniques used for producing descriptions of fields of ...
A new approach for improving the accuracy of data assimilation, by trading numerical precision for e...
Data assimilation (DA) methods combine a prior forecast (background state) with the latest observati...
Data Assimilation: From an Eventful Past to a Bright Future Michael Ghil, Ecole Normale Supérieure ...
Data assimilation in Numerical Weather Prediction (NWP) optimally blends observations with atmospher...
This thesis studies the benefits of simultaneously considering system informa-tion from different so...
Data assimilation in Numerical Weather Prediction (NWP) optimally blends observations with atmospher...
The background error covariance matrix, B, is often used in variational data assimilation for numeri...
State estimation lies at the heart of many meteorological tasks. Pseudo-orbit-based data assimilatio...
State estimation lies at the heart of many meteorological tasks. Pseudo-orbit-based data assimilatio...
The skill of weather forecasts has improved dramatically over the past 30 years. This improvement ha...
The seamless integration of large data sets into sophisticated computational models provides one ...