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International Journal of Wildland Fire International Journal of Wildland Fire Society
Journal of the International Association of Wildland Fire
RESEARCH ARTICLE

Physically motivated empirical models for the spread and intensity of grass fires

Steven I. Higgins A E , William J. Bond B , Winston S. W. Trollope C and Richard J. Williams D
+ Author Affiliations
- Author Affiliations

A Institut für Physische Geographie, Goethe-Universität Frankfurt am Main, Altenhoeferallee 1, D-60438 Frankfurt am Main, Germany.

B Department of Botany, University of Cape Town, Private Bag, Rondebosch, ZA-7701, South Africa.

C Department of Livestock and Pasture Science, University of Fort Hare, Alice, ZA-5700, South Africa.

D CSIRO Sustainable Ecosystems, PMB 44, Winnellie, NT 0821, Australia.

E Corresponding author. Email: higgins@em.uni-frankfurt.de

International Journal of Wildland Fire 17(5) 595-601 https://doi.org/10.1071/WF06037
Submitted: 21 March 2006  Accepted: 18 December 2007   Published: 3 October 2008

Abstract

We develop empirical models for the rate of spread and intensity of fires in grass fuels. The models are based on a well-known physical analogy for the rate of spread of a fire through a continuous fuelbed. Unlike other models based on this analogy, we do not attempt to directly estimate the model parameters. Rather, we use data on the rate of spread to indirectly estimate parameters that describe aggregate properties of the fire behaviour. The resulting models require information on the moisture content of the fuel and wind speed to predict the rate of spread of fires. To predict fire intensity, the models additionally use information on the heat yield of the fuel and the amount of fuel consumed. We evaluate the models by using them to predict the intensity of independent fires and by comparing them with linear and additive regression models. The additive model provides the best description of the training data but predicts independent data poorly and with high bias. Overall, the empirical models describe the data better than the linear model, and predict independent data with lower bias. Hence our physically motivated empirical models perform better than statistical models and are easier to parameterise than parameter-rich physical models. We conclude that our physically motivated empirical models provide an alternative to statistical models and parameter-rich physical models of fire behaviour.

Additional keywords: fire behaviour, fire intensity, grassland, rate of spread, savanna.


Acknowledgements

We thank the reviewers and handling editor for very constructive comments on the manuscript. Steven Higgins acknowledges the financial support of the Robert Bosch Foundation.


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