Ensembles of general circulation model (GCM) integrations yield predictions for meteorological conditions in future months. Such predictions have implicit uncertainty resulting from model structure, parameter uncertainty, and fundamental randomness in the physical system. In this work, we build probabilistic models for long-term forecasts that include the GCM ensemble values as inputs but incorporate statistical correction of GCM biases and different treatments of uncertainty. Specifically, we present, and evaluate against observations, several versions of a probabilistic forecast for gridded air temperature 1 month ahead based on ensemble members of the National Centers for Environmental Prediction (NCEP) Climate Forecast System Version 2 ...
Trustworthy probabilistic projections of regional climate are essential for society to plan for futu...
Ensemble simulations and forecasts provide probabilistic information about the inherently uncertain ...
We study the potential value to stakeholders of probabilistic long-term forecasts, as quantified by ...
Ensembles of general circulation model (GCM) integrations yield predictions for meteorological condi...
Ensembles of general circulation model (GCM) integrations yield predictions for meteorological condi...
Simulation models are widely employed to make probability forecasts of future conditions on seasonal...
Simulation models are widely employed to make probability forecasts of future conditions on seasonal...
Simulation models are widely employed to make probability forecasts of future conditions on seasonal...
Simulation models are widely employed to make probability forecasts of future conditions on seasonal...
Simulation models are widely employed to make probability forecasts of future conditions on seasonal...
Because of the inherently chaotic nature of the atmosphere, ensemble simulations are required to cha...
The probabilistic skill of ensemble forecasts for the first month and the first season of the foreca...
Until recent times, weather forecasts were deterministic in nature. For example, a forecast might st...
Producing high-quality forecasts of key climate variables such as temperature and precipitation on s...
Trustworthy probabilistic projections of regional climate are essential for society to plan for futu...
Trustworthy probabilistic projections of regional climate are essential for society to plan for futu...
Ensemble simulations and forecasts provide probabilistic information about the inherently uncertain ...
We study the potential value to stakeholders of probabilistic long-term forecasts, as quantified by ...
Ensembles of general circulation model (GCM) integrations yield predictions for meteorological condi...
Ensembles of general circulation model (GCM) integrations yield predictions for meteorological condi...
Simulation models are widely employed to make probability forecasts of future conditions on seasonal...
Simulation models are widely employed to make probability forecasts of future conditions on seasonal...
Simulation models are widely employed to make probability forecasts of future conditions on seasonal...
Simulation models are widely employed to make probability forecasts of future conditions on seasonal...
Simulation models are widely employed to make probability forecasts of future conditions on seasonal...
Because of the inherently chaotic nature of the atmosphere, ensemble simulations are required to cha...
The probabilistic skill of ensemble forecasts for the first month and the first season of the foreca...
Until recent times, weather forecasts were deterministic in nature. For example, a forecast might st...
Producing high-quality forecasts of key climate variables such as temperature and precipitation on s...
Trustworthy probabilistic projections of regional climate are essential for society to plan for futu...
Trustworthy probabilistic projections of regional climate are essential for society to plan for futu...
Ensemble simulations and forecasts provide probabilistic information about the inherently uncertain ...
We study the potential value to stakeholders of probabilistic long-term forecasts, as quantified by ...