
Towards a definition of climate science Valerio Lucarini*
... The structural uncertainties cannot be studied using only one model: one can expect to analyse them by comparing different models following a horizontal and vertical conceptual hierarchical path. The horizontal comparison is the comparative study of the results generated by models sharing a roughly ...
... The structural uncertainties cannot be studied using only one model: one can expect to analyse them by comparing different models following a horizontal and vertical conceptual hierarchical path. The horizontal comparison is the comparative study of the results generated by models sharing a roughly ...
Temporal Data Models
... Time advances in one direction – Natural clustering on sort order Methods to optimize query: – Replace algebraic expression with a more efficient, equivalent one – Change access method of an operator – Change implementation of an operator ...
... Time advances in one direction – Natural clustering on sort order Methods to optimize query: – Replace algebraic expression with a more efficient, equivalent one – Change access method of an operator – Change implementation of an operator ...
The University of Miami`s Rosenstiel School of Marine and
... Tropical Weather Systems Air-‐sea heat, moisture, and momentum fluxes control the energe=cs of the high-‐impact tropical weather systems such as the Madden-‐Julian Oscilla=on (MJO) and tropical cyclones (TCs). ...
... Tropical Weather Systems Air-‐sea heat, moisture, and momentum fluxes control the energe=cs of the high-‐impact tropical weather systems such as the Madden-‐Julian Oscilla=on (MJO) and tropical cyclones (TCs). ...
A new decision sciences for complex systems
... they evolve over time in response to new information. The key to this CAR approach is an inductive, rather than deductive, approach to quantitative reasoning. In traditional decision analysis, users begin with specific assumptions about the system model and the likelihood of alternative input parame ...
... they evolve over time in response to new information. The key to this CAR approach is an inductive, rather than deductive, approach to quantitative reasoning. In traditional decision analysis, users begin with specific assumptions about the system model and the likelihood of alternative input parame ...
Likewise, any variation in weather or climatic conditions adversely
... droughts, unprecedented rains, inconsistencies in seasonal temperature etc on various ecosystems are the consequences of climate variability at a macro level Under this sub-theme, we need to understand and observe the changes in weather parameters as well as the changes in biotic and abiotic parame ...
... droughts, unprecedented rains, inconsistencies in seasonal temperature etc on various ecosystems are the consequences of climate variability at a macro level Under this sub-theme, we need to understand and observe the changes in weather parameters as well as the changes in biotic and abiotic parame ...
T.Y.B.Sc. Mathematics - Veer Narmad South Gujarat University
... Control statements, Relational operators, Logical IF statement, Arithmetic IF statement, Block IF statement, statement labels, GO TO statement, Example of use of Logical IF statement, Nested logical IF statement, Computed GO TO statement, DO statement, Examples of DO statement, Rules to be followed ...
... Control statements, Relational operators, Logical IF statement, Arithmetic IF statement, Block IF statement, statement labels, GO TO statement, Example of use of Logical IF statement, Nested logical IF statement, Computed GO TO statement, DO statement, Examples of DO statement, Rules to be followed ...
summary - University of Washington
... seasonal march of the intertropical convergence zone (ITCZ). The paradigm of a latitudinal translation of the ITCZ – an ITCZ shift – is ubiquitous for interpreting past climate changes and defining mechanisms of the response to climate forcing (past and future). We demonstrate that the simultaneous ...
... seasonal march of the intertropical convergence zone (ITCZ). The paradigm of a latitudinal translation of the ITCZ – an ITCZ shift – is ubiquitous for interpreting past climate changes and defining mechanisms of the response to climate forcing (past and future). We demonstrate that the simultaneous ...
severe weather
... distribution of weather events.13 Global Climate Models (GCMs) are currently being used to investigate future weather patterns and potential risks. However, these models have a limited capacity to account for extreme events or impacts, because they have a coarse spatial resolution and large uncertai ...
... distribution of weather events.13 Global Climate Models (GCMs) are currently being used to investigate future weather patterns and potential risks. However, these models have a limited capacity to account for extreme events or impacts, because they have a coarse spatial resolution and large uncertai ...
PowerPoint Presentation - Community Earth System Model
... Another source for model output • A large database of PCM and CCSM2 results have been postprocessed and quality controlled for easy distribution to the scientific community. ...
... Another source for model output • A large database of PCM and CCSM2 results have been postprocessed and quality controlled for easy distribution to the scientific community. ...
Linear Regression Models - Civil, Environmental and Architectural
... where yst(n) is a non-homegeneous Bernoulli random variable for station s, day n and year t, being either 1 for a wet state or 0 for a dry state. • pst(n) is the rainfall probability for station s and day n of year t. The seasonal cycle is modeled through Fourier harmonics: ...
... where yst(n) is a non-homegeneous Bernoulli random variable for station s, day n and year t, being either 1 for a wet state or 0 for a dry state. • pst(n) is the rainfall probability for station s and day n of year t. The seasonal cycle is modeled through Fourier harmonics: ...
Diagnosing atmosphere--land feedbacks in CMIP5 climate models
... positive relationship between precipitation and temperature is shown when either leads by one day, whereas a weak negative relationship is shown over the same time period between soil moisture and temperature. Temporally, in terms of lag and lead relationships, the models appear to be in agreement o ...
... positive relationship between precipitation and temperature is shown when either leads by one day, whereas a weak negative relationship is shown over the same time period between soil moisture and temperature. Temporally, in terms of lag and lead relationships, the models appear to be in agreement o ...
white paper - CommunityViz
... Planners often need to estimate the climate change effects of alternative scenarios. For transportation, the primary considerations are the greenhouse gas (GHG) emissions that result from the combustion of vehicle fuel and, to a lesser extent, generating electricity for electric cars and rail. Plann ...
... Planners often need to estimate the climate change effects of alternative scenarios. For transportation, the primary considerations are the greenhouse gas (GHG) emissions that result from the combustion of vehicle fuel and, to a lesser extent, generating electricity for electric cars and rail. Plann ...
Climate Change Prediction: A challenging scientific problem
... However any finite average varies significantly on all longer timescales. The reason for these variations is crucial in understanding the physics of climate and of climate change. It is commonplace to look at climate averages over weekly, monthly, seasonal, annual, decadal, centennial, millennial an ...
... However any finite average varies significantly on all longer timescales. The reason for these variations is crucial in understanding the physics of climate and of climate change. It is commonplace to look at climate averages over weekly, monthly, seasonal, annual, decadal, centennial, millennial an ...
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.