The development and implementation of a human-caused wildland fire occurrence prediction system for the province of Ontario, Canada

Author:

Woolford Douglas G.1,Martell David L.2,McFayden Colin B.3,Evens Jordan4,Stacey Aaron5,Wotton B. Michael4,Boychuk Dennis6

Affiliation:

1. Department of Statistical and Actuarial Sciences, University of Western Ontario, 1151 Richmond Street, London, ON N6A 5B7, Canada.

2. Institute of Forestry and Conservation, John H. Daniels Faculty of Architecture, Landscape and Design, University of Toronto, 33 Willcocks Street, Toronto, ON M5S 3B3, Canada.

3. Ontario Ministry of Natural Resources and Forestry, Aviation, Forest Fire and Emergency Services, Dryden Fire Management Centre, 95 Ghost Lake Road, P.O. Box 850, Dryden, ON P8N 2Z5, Canada.

4. Canadian Forest Service, National Resources Canada, Great Lakes Forestry Centre, 1219 Queen Street, Sault Ste. Marie, ON P6A 2E5, Canada.

5. Ontario Ministry of Natural Resources and Forestry, Aviation, Forest Fire and Emergency Services, 300 Water Street, South Tower, Peterborough, ON K9J 3C7, Canada.

6. Ontario Ministry of Natural Resources and Forestry, Aviation, Forest Fire and Emergency Services, 400 – 70 Foster Drive, Sault Ste. Marie, ON P6A 6V5, Canada.

Abstract

We describe the development and implementation of an operational human-caused wildland fire occurrence prediction (FOP) system in the province of Ontario, Canada. A suite of supervised statistical learning models was developed using more than 50 years of high-resolution data over a 73.8 million ha study area, partitioned into Ontario’s Northwest and Northeast Fire Management Regions. A stratified modelling approach accounts for different seasonal baselines regionally and for a set of communities in the Far North. Response-dependent sampling and modelling techniques using logistic generalized additive models are used to develop a fine-scale, spatiotemporal FOP system with models that include nonlinear relationships with key predictors. These predictors include inter- and intra-annual temporal trends, spatial trends, ecological variables, fuel moisture measures, human land-use characteristics, and a novel measure of human activity. The system produces fine-scale, spatially explicit maps of daily probabilistic human-caused FOP based on locally observed conditions along with point and interval predictions for the expected number of fires in each region. A simulation-based approach for generating the prediction intervals is described. Daily predictions were made available to fire management practitioners through a custom dashboard and integrated into daily regional planning to support detection and fire suppression preparedness needs.

Publisher

Canadian Science Publishing

Subject

Ecology,Forestry,Global and Planetary Change

Reference44 articles.

1. Brillinger, D.R., Preisler, H.K., and Benoit, J.W. 2003. Risk assessment: a forest fire example. In Statistics and science: a festschrift for terry speed. Institute of Mathematical Statistics Lecture Notes, Monograph Series 40. IMS, Beachwood, Ohio. pp. 177–196.

2. Human-caused fire occurrence modelling in perspective: a review

3. Crosby, J.S. 1954. Probability of fire occurrence can be predicted. USDA For. Serv., Cent. States For. Exp. Sta. Tech. Pap. 143.

4. A Stochastic Model for the Occurrence of Man-caused Forest Fires

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