| Literature DB >> 35733267 |
Anabelle W Cardoso1,2, Sally Archibald2, William J Bond3, Corli Coetsee4,5, Matthew Forrest6, Navashni Govender5,7, David Lehmann8, Loïc Makaga8, Nokukhanya Mpanza4, Josué Edzang Ndong8, Aurélie Flore Koumba Pambo8, Tercia Strydom4,9, David Tilman10, Peter D Wragg11, A Carla Staver1.
Abstract
Modeling fire spread as an infection process is intuitive: An ignition lights a patch of fuel, which infects its neighbor, and so on. Infection models produce nonlinear thresholds, whereby fire spreads only when fuel connectivity and infection probability are sufficiently high. These thresholds are fundamental both to managing fire and to theoretical models of fire spread, whereas applied fire models more often apply quasi-empirical approaches. Here, we resolve this tension by quantifying thresholds in fire spread locally, using field data from individual fires (n = 1,131) in grassy ecosystems across a precipitation gradient (496 to 1,442 mm mean annual precipitation) and evaluating how these scaled regionally (across 533 sites) and across time (1989 to 2012 and 2016 to 2018) using data from Kruger National Park in South Africa. An infection model captured observed patterns in individual fire spread better than competing models. The proportion of the landscape that burned was well described by measurements of grass biomass, fuel moisture, and vapor pressure deficit. Regionally, averaging across variability resulted in quasi-linear patterns. Altogether, results suggest that models aiming to capture fire responses to global change should incorporate nonlinear fire spread thresholds but that linear approximations may sufficiently capture medium-term trends under a stationary climate.Entities:
Keywords: fire model; fire thresholds; fuel moisture; infection model; percolation
Mesh:
Year: 2022 PMID: 35733267 PMCID: PMC9245651 DOI: 10.1073/pnas.2110364119
Source DB: PubMed Journal: Proc Natl Acad Sci U S A ISSN: 0027-8424 Impact factor: 12.779