Ring of Fire

Regional model summaries by the Boreal Avian Modelling Project

Reliable information on species’ population sizes, trends, habitat associations, and distributions is important for conservation and land-use planning, as well as status assessment and recovery planning for species at risk. However, the development of such estimates at a national scale is challenged by a variety of factors, including sparse data coverage in remote regions (Stralberg et al. 2015), differential habitat selection across large geographies (Crosby et al. 2019), and variation in survey protocols (Sólymos et al. 2013).

With these factors in mind, the Boreal Avian Modelling Project (BAM) developed a generalized analytical approach to model species density in relation to environmental covariates, using the BAM avian database of point-count surveys (through 2018) and widely available spatial predictors (Cumming et al. 2010, Barker et al. 2015).

BAM has developed separate models for each geographic region (bird conservation regions intersected by jurisdiction boundaries) based on covariates such as tree species biomass (local and landscape scale), forest age, topography, land use, and climate. We used machine learning to allow for variable interactions and non-linear responses while avoiding time-consuming species-by-species parameterization. We applied cross-validation to avoid overfitting and bootstrap resampling to estimate uncertainty associated with our density estimates. Read more about the modelling approach in BAM 2020.

This website summarizes the BAM species models for the Ring of Fire region. The pages are organized as follows:

Please contact BAM if you have questions or comments: