Reducing numerical precision can save computational costs which can then be reinvested for more useful purposes. This study considers the effects of reducing precision in the parametrizations of an intermediate complexity atmospheric model (SPEEDY). We find that the difference between double‐precision and reduced‐precision parametrization tendencies is proportional to the expected machine rounding error if individual timesteps are considered. However, if reduced precision is used in simulations that are compared to double‐precision simulations, a range of precision is found where differences are approximately the same for all simulations. Here, rounding errors are small enough to not directly perturb the model dynamics, but can perturb cond...
The use of reduced numerical precision to reduce computing costs for the cloud resolving model of su...
A substantial segment of the error in numerical weather prediction and climate projections comes fr...
Representing model uncertainty in atmospheric simulators is essential for the production of reliable...
Reducing numerical precision can save computational costs which can then be reinvested for more usef...
Motivated by recent advances in operational weather forecasting, we study the efficacy of low-precis...
The use of stochastic processing hardware and low precision arithmetic in atmospheric models is inve...
Weather and climate models must continue to increase in both resolution and complexity in order that...
Accurate forecasts of weather and climate will become increasingly important as the world adapts to ...
AbstractThe use of stochastic processing hardware and low precision arithmetic in atmospheric models...
Representing all variables in double‐precision in weather and climate models may be a waste of compu...
The skill of weather forecasts has improved dramatically over the past 30 years. This improvement ha...
Reconfigurable architectures are becoming mainstream: Amazon, Microsoft and IBM are supporting such ...
Increasing the resolution of numerical models has played a large part in improving the accuracy of w...
Stochastic parametrisations can be used in weather and climate models to improve the representation ...
Better weather and climate forecasts are needed to maximise the ability of societies worldwide to pr...
The use of reduced numerical precision to reduce computing costs for the cloud resolving model of su...
A substantial segment of the error in numerical weather prediction and climate projections comes fr...
Representing model uncertainty in atmospheric simulators is essential for the production of reliable...
Reducing numerical precision can save computational costs which can then be reinvested for more usef...
Motivated by recent advances in operational weather forecasting, we study the efficacy of low-precis...
The use of stochastic processing hardware and low precision arithmetic in atmospheric models is inve...
Weather and climate models must continue to increase in both resolution and complexity in order that...
Accurate forecasts of weather and climate will become increasingly important as the world adapts to ...
AbstractThe use of stochastic processing hardware and low precision arithmetic in atmospheric models...
Representing all variables in double‐precision in weather and climate models may be a waste of compu...
The skill of weather forecasts has improved dramatically over the past 30 years. This improvement ha...
Reconfigurable architectures are becoming mainstream: Amazon, Microsoft and IBM are supporting such ...
Increasing the resolution of numerical models has played a large part in improving the accuracy of w...
Stochastic parametrisations can be used in weather and climate models to improve the representation ...
Better weather and climate forecasts are needed to maximise the ability of societies worldwide to pr...
The use of reduced numerical precision to reduce computing costs for the cloud resolving model of su...
A substantial segment of the error in numerical weather prediction and climate projections comes fr...
Representing model uncertainty in atmospheric simulators is essential for the production of reliable...