Skip to main content
eScholarship
Open Access Publications from the University of California

Department of Statistics, UCLA

Department of Statistics Papers bannerUCLA

Multi-dimensional Point Process Models for Evaluating a Wildfire Hazard Index

Abstract

The Burning Index (BI) is part of the U.S. National Fire Danger Rating System and is widely used as a tool for fire management and hazard assessment. While the usage of such indices is widespread, assessment of these indices in their repective regions of application is rare. We evaluate the effectiveness of the BI for predicting wildfire occurrences in Los Angeles County, California using space-time point process models. The models are based on an additive decomposition of the conditional intensity, with separate terms to describe spatial and seasonal variability as well as contributions from the BI. The models are fit to wildfire and BI data from the years 1976-2000 using a combination of nonparametric kernel smoothing methods and parametric maximum likelihood. In addition to using AIC to compare competing models, new multi-dimensional residual methods based on approximate random thinning are employed to detect departures from the models and to ascertain the precise contribution of the BI to predicting wildfire occurrence. We find that while the BI appears to have a positive impact on wildfire prediction, the contribution is relatively small after taking into account natural seasonal and spatial variation. In particular, the BI does not appear to take into account increased activity during the years 1979-1981 and can overpredict during the early months of the year.

Main Content
For improved accessibility of PDF content, download the file to your device.
Current View