
Understanding and Applying the Science
... conditions can cause large changes farafield) • Climate Variability can be predicted • Not climate change prediction but climate ...
... conditions can cause large changes farafield) • Climate Variability can be predicted • Not climate change prediction but climate ...
Numerical Methods
... The general idea is to use a small number of terms in this series to approximate a solution. ...
... The general idea is to use a small number of terms in this series to approximate a solution. ...
decacal climate prediction: opportunities and challenges.
... changes are also needed for predictions. Estimates of future emissions of radiatively important pollutants are needed for making predictions, as well as modeling capabilities to accurately simulate both how these pollutants affect the global energy, carbon and sulfur cycles, and how the climate syst ...
... changes are also needed for predictions. Estimates of future emissions of radiatively important pollutants are needed for making predictions, as well as modeling capabilities to accurately simulate both how these pollutants affect the global energy, carbon and sulfur cycles, and how the climate syst ...
- White Rose Research Online
... Global climate models (GCMs) have become increasingly important for climate change science and provide the basis for most impact studies. Since impact models are highly sensitive to input climate data, GCM skill is crucial for getting better short-, medium- and long-term outlooks for agricultural pr ...
... Global climate models (GCMs) have become increasingly important for climate change science and provide the basis for most impact studies. Since impact models are highly sensitive to input climate data, GCM skill is crucial for getting better short-, medium- and long-term outlooks for agricultural pr ...
ETADATA OF THE CLIMATE CHANGE KNOWLEDGE PORTAL
... CMIP5. In consultation with the World Bank CCKP team, and in order not to imply a false promise of high‐resolution content in the GCM data, a new common 1°x1° global grid spacing was produced through bi‐linear interpolation. This resolution is slightly coarser than CMIP3 data, yet i ...
... CMIP5. In consultation with the World Bank CCKP team, and in order not to imply a false promise of high‐resolution content in the GCM data, a new common 1°x1° global grid spacing was produced through bi‐linear interpolation. This resolution is slightly coarser than CMIP3 data, yet i ...
Antarctic precipitation and climate-change predictions: horizontal
... Many atmospheric processes take place at much finer resolution than current meteorological and climate models can explicitly resolve due to computational limitations. Thus, parameterizations of subgrid processes are largely used in such models, or the subgrid component of processes acting at various ...
... Many atmospheric processes take place at much finer resolution than current meteorological and climate models can explicitly resolve due to computational limitations. Thus, parameterizations of subgrid processes are largely used in such models, or the subgrid component of processes acting at various ...
Climate Change Effects On Wind Speed
... impact of global climate change on near-surface wind speeds across the globe. Data from these GCM simulations are publicly available as part of the World Climate Research Programme’s (WCRP) Coupled Model Intercomparison Project phase 3 (CMIP3) multi-model data set. The CMIP3 data set contains GCM ou ...
... impact of global climate change on near-surface wind speeds across the globe. Data from these GCM simulations are publicly available as part of the World Climate Research Programme’s (WCRP) Coupled Model Intercomparison Project phase 3 (CMIP3) multi-model data set. The CMIP3 data set contains GCM ou ...
RAM, PRAM, and LogP models
... • Considers computation and communication at the level of the entire program and executing computer instead of individual processes • Renounces locality as an optimization issue. – May not be ideal when locality is critical. ...
... • Considers computation and communication at the level of the entire program and executing computer instead of individual processes • Renounces locality as an optimization issue. – May not be ideal when locality is critical. ...
2.3 Climate Scenarios
... with thermodynamic terms for various energy sources (radiation, latent heat). These equations are the basis for complex computer programs commonly used for simulating the atmosphere or ocean of the Earth. Atmospheric and oceanic GCMs (AGCM and OGCM) are key components of global climate models along ...
... with thermodynamic terms for various energy sources (radiation, latent heat). These equations are the basis for complex computer programs commonly used for simulating the atmosphere or ocean of the Earth. Atmospheric and oceanic GCMs (AGCM and OGCM) are key components of global climate models along ...
the global monsoon systems
... when set against large seasonal rainfall totals, can have a dramatic impact. The dominant driver of Asian-Australian monsoon changes from year to year is El Niño warming and La Niña cooling in the equatorial Pacific Ocean. For example, El Niño during 2002 significantly contributed to the failed mons ...
... when set against large seasonal rainfall totals, can have a dramatic impact. The dominant driver of Asian-Australian monsoon changes from year to year is El Niño warming and La Niña cooling in the equatorial Pacific Ocean. For example, El Niño during 2002 significantly contributed to the failed mons ...
lecture 34
... the start of a man-made global warming? Two main anthropogenic forcing mechanisms: Greenhouse gas concentrations => rising. Aerosol concentrations => also increasing. We will focus attention on CO2 increases. ...
... the start of a man-made global warming? Two main anthropogenic forcing mechanisms: Greenhouse gas concentrations => rising. Aerosol concentrations => also increasing. We will focus attention on CO2 increases. ...
Numerical weather prediction

Numerical weather prediction uses mathematical models of the atmosphere and oceans to predict the weather based on current weather conditions. Though first attempted in the 1920s, it was not until the advent of computer simulation in the 1950s that numerical weather predictions produced realistic results. A number of global and regional forecast models are run in different countries worldwide, using current weather observations relayed from radiosondes, weather satellites and other observing systems as inputs.Mathematical models based on the same physical principles can be used to generate either short-term weather forecasts or longer-term climate predictions; the latter are widely applied for understanding and projecting climate change. The improvements made to regional models have allowed for significant improvements in tropical cyclone track and air quality forecasts; however, atmospheric models perform poorly at handling processes that occur in a relatively constricted area, such as wildfires.Manipulating the vast datasets and performing the complex calculations necessary to modern numerical weather prediction requires some of the most powerful supercomputers in the world. Even with the increasing power of supercomputers, the forecast skill of numerical weather models extends to about only six days. Factors affecting the accuracy of numerical predictions include the density and quality of observations used as input to the forecasts, along with deficiencies in the numerical models themselves. Post-processing techniques such as model output statistics (MOS) have been developed to improve the handling of errors in numerical predictions.A more fundamental problem lies in the chaotic nature of the partial differential equations that govern the atmosphere. It is impossible to solve these equations exactly, and small errors grow with time (doubling about every five days). Present understanding is that this chaotic behavior limits accurate forecasts to about 14 days even with perfectly accurate input data and a flawless model. In addition, the partial differential equations used in the model need to be supplemented with parameterizations for solar radiation, moist processes (clouds and precipitation), heat exchange, soil, vegetation, surface water, and the effects of terrain. In an effort to quantify the large amount of inherent uncertainty remaining in numerical predictions, ensemble forecasts have been used since the 1990s to help gauge the confidence in the forecast, and to obtain useful results farther into the future than otherwise possible. This approach analyzes multiple forecasts created with an individual forecast model or multiple models.