Artificial neural networks for automated year-round temperature prediction

  • Authors:
  • Brian A. Smith;Gerrit Hoogenboom;Ronald W. McClendon

  • Affiliations:
  • Institute for Artificial Intelligence, The University of Georgia, Athens, GA 30602, USA and Computer Science Department, The University of Georgia, Athens, GA 30602, USA;Institute for Artificial Intelligence, The University of Georgia, Athens, GA 30602, USA and Department of Biological and Agricultural Engineering, The University of Georgia, Griffin, GA 30223, USA;Institute for Artificial Intelligence, The University of Georgia, Athens, GA 30602, USA and Department of Biological and Agricultural Engineering, Driftmier Engineering Center, The University of G ...

  • Venue:
  • Computers and Electronics in Agriculture
  • Year:
  • 2009

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Abstract

Crops and livestock in most of the southeastern United States are susceptible to potential losses due to extreme cold and heat. However, given suitable warning, agricultural and horticultural producers can mitigate the damage of extreme temperature events. To provide such a warning, air temperature prediction models are needed at horizons ranging from 1 to 12h. The goal of this project was to explore the application of artificial neural networks (ANNs) for the prediction of air temperature during the entire year based on near real-time data. Ward-style ANNs were developed using detailed weather data collected by the Georgia Automated Environmental Monitoring Network (AEMN). The ANNs were able to provide predictions throughout the year, with a mean absolute error (MAE) of the year-round models that was less during the winter months than the MAE of the models resulting from the application of previously developed winter-specific models. The prediction MAE for a year-round evaluation set ranged from 0.516^oC at the one-hour horizon to 1.873^oC at the twelve-hour horizon. A detailed graphical analysis of MAE by time-of-year and time-of-day was also performed. A tendency to over-predict temperatures during summer afternoons was associated with localized cloud cover during that period. The inclusion of rainfall as input to the model was also shown to improve prediction accuracy. In addition, two simple ensemble techniques were explored and neither parallel nor series aggregation was found to reduce prediction errors. When simulated over two extreme temperature events, the models were capable of rapidly adjusting predictions on the basis of new information. The final models were applied to prediction horizons of 1-12h and deployed on the website of the Georgia AEMN (www.GeorgiaWeather.net) for use as a general, year-round decision support tool.