A Temperature Forecasting Model for the Continental United States

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Presentation transcript:

A Temperature Forecasting Model for the Continental United States Chris P. Tsokos Department of Mathematics and Statistics, University of South Florida Tampa, Florida 33620

A Temperature Forecasting Model Two major entities that play a major role in understanding Global Warming is temperature and Carbon Dioxide. The purpose of the present study is to utilize historical temperature in the Continental United States from 1895 to 2007 to develop a forecasting process to estimate future average monthly temperatures. In addition, we shall study through our modeling if there is a difference in the two methods that are being used to collect and massage the temperatures in the Continental United States.

A Temperature Forecasting Model The Version 1 data set consists of monthly mean temperature and precipitation for all 344 climate divisions in the contiguous U. S. from January 1895 to June 2007. The data is adjusted for time of observation bias, however, no other adjustments are made for inhomogeneities. These inhomogeneities include changes in instrumentation, observer, and observation practices, station and instrumentation moves, and changes in station composition resulting from stations closing and opening over time within a division.

A Temperature Forecasting Model The Version 2 data set was first become available in July 2007, and it consists of data from a network of 1219 stations in the contiguous United States that were defined by scientists at the Global Change Research Program of the U. S. Department of Energy at National Climate Data Center.

A Temperature Forecasting Model

A Temperature Forecasting Model

ANALYTICAL PROCEDURE The multiplicative seasonal autoregressive integrated moving average, ARIMA model is defined by p is the order of the autoregressive process d is the order of regular differencing q is the order of the moving average process P is the order of the seasonal autoregressive process D is the order of the seasonal differencing Q is the order of the seasonal moving average process s refers to the seasonal period www.themegallery.com

ANALYTICAL PROCEDURE

ARIMA(p,d,q) x (P, D, Q)

ARIMA(p,d,q) x (P, D, Q)

DEVELOPMENT OF FORECASTING MODELS

DEVELOPMENT OF FORECASTING MODELS The one-step ahead forecasting model for Version 1 data is given by

EVALUATION OF THE PROPOSED MODELS

EVALUATION OF THE PROPOSED MODELS

Residual Plot (Version 1) The residuals estimates, , for both forecasting process given by (3.2) and (3.3). The results are graphically presented below by Figure 4.3 and 4.4.

Residual Plot (Version 2)

Basic Evaluation Statistics The mean of the residuals,

A Temperature Forecasting Model

A Temperature Forecasting Model

Monthly Temperature VS. our Predicted Values

Calculated the estimates values

Monthly Temperature VS. our Predicted Values

CONCLUSIONS We have developed two seasonal autoregressive integrated moving average models to forecast the monthly average temperature in the Continental United States using historical data for 1895-2007. The two models are based on two different methods, USCD and USHCN, that are been used to create the two temperature basis. The two developed models were evaluated and it was shown that the processes give good forecast values. In addition we can conclude that both Version 1 and 2 give really similar results and thus, both methods are not necessary.

Thank You !