Home
A JFSP Fire Science Exchange Network
Bringing People Together & Sharing Knowledge in the Northern Rockies

 

Contact  |  FireScience.gov  JFSP program icon

The net benefits of human-ignited wildfire forecasting: the case of tribal land units in the United States

Author(s): Jeffrey P. Prestemon, David T. Butry, Douglas S. Thomas
Year Published: 2016
Description:

Research shows that some categories of human-ignited wildfires may be forecastable, owing to their temporal clustering, with the possibility that resources could be predeployed to help reduce the incidence of such wildfires. We estimated several kinds of incendiary and other human-ignited wildfire forecast models at the weekly time step for tribal land units in the United States, evaluating their forecast skill out of sample. Analyses show that an autoregressive conditional Poisson model of both incendiary and non-incendiary human-ignited wildfires is more accurate out of sample compared with alternatives, and the simplest of the autoregressive conditional Poisson models performed the best. Additionally, an ensemble of these and simpler, less analytically intensive approaches performed even better. Wildfire hotspot forecast models using all model types were evaluated in a simulation mode to assess the net benefits of forecasts in the context of law-enforcement resource reallocations. Our analyses show that such hotspot tools could yield large positive net benefits for the tribes in terms of suppression expenditures averted for incendiary wildfires but that the hotspot tools were less likely to be beneficial for addressing outbreaks of non-incendiary human-ignited wildfires.

Citation: Prestemon Jeffrey P.; Butry David T.; Thomas Douglas S. 2016. The net benefits of human-ignited wildfire forecasting: the case of tribal land units in the United States. International Journal of Wildland Fire. 25: 390–402.
Topic(s): Fire Behavior, Prediction
Ecosystem(s): None
Document Type: Book or Chapter or Journal Article
NRFSN number: 14196
Record updated: Nov 1, 2017