Get reliable rangeland science

Predictive fire occurrence modelling to improve burned area estimation at a regional scale : A case study in East Caprivi, Namibia
Author
Siljander, Mika
Publisher
International Journal of Applied Earth Observation and Geoinformation
Publication Year
2009
Body

Fires threaten human lives, property and natural resources in Southern African savannas. Due to warming climate, fire occurrence may increase and fires become more intense. It is crucial, therefore, to understand the complexity of spatiotemporal and probabilistic characteristics of fires. This study scrutinizes spatiotemporal characteristics of fires and the role played by abiotic, biotic and anthropogenic factors for fire probability modelling in a semiarid Southern African savanna environment. The MODIS fire products: fire hot spots (MOD14A2 and MYD14A2) and burned area product MODIS (MCD45A1), and GIS derived data were used in analysis. Fire hot spots occurrence was first analysed, and spatial autocorrelation for fires investigated, using Moran's I correlograms. Fire probability models were created using generalized linear models (GLMs). Separate models were produced for abiotic, biotic, anthropogenic and combined factors and an autocovariate variable was tested for model improvement. The hierarchical partitioning method was used to determine independent effects of explanatory variables. The discriminating ability of models was evaluated using area under the curve (AUC) from the receiver operating characteristic (ROC) plot. The results showed that 19.2-24.4% of East Caprivi burned when detected using MODIS hot spots fire data and these fires were strongly spatially autocorrelated. Therefore, the autocovariate variable significantly improved fire probability models when added to them. For autologistic models, i.e. models accounting for spatial autocorrelation, discrimination was good to excellent (AUC 0.858-0.942). For models not counting spatial autocorrelation, prediction success was poor to moderate (AUC 0.542-0.745). The results of this study clearly showed that spatial autocorrelation has to be taken in to account in the fire probability model building process when using remotely sensed and GIS derived data. This study also showed that fire probability models accounting for spatial autocorrelation proved to be superior in regional scale burned area estimation when compared with MODIS burned area product (MCD45A1).

Language
English
Resource Type
Text
Document Type
Journal Issue/Article
Journal Volume
11
Journal Number
6
Journal Pages
380-393
Collection
Southern Africa Collection
Journal Name
International Journal of Applied Earth Observation and Geoinformation
Keywords
Burned area estimation
Fire probability
GLM
Hierarchical partitioning
logistic regression
MODIS fire data
spatial autocorrelation
fire ecology
savanna
modelling
climate change
GIS
East Caprivi
Namibia
Africa