top of page

Predicting bat roosts in bridges using Bayesian Additive Regression Trees

Human-built structures can provide important habitat for wildlife, but predicting which structures are most likely to be used remains challenging. To evaluate the predictive capabilities of data-driven ensemble modeling approaches, we conducted surveys for bats and signs of bat use, such as urine and guano staining, at bridges across the southwestern United States. We developed a bat roost discovery tool using Bayesian Additive Regression Trees (BART) and evaluated the predictive ability of this model against other commonly used approaches. We found that the lack of nearby water resources was associated with a lower predicted probability of bat presence or signs of bat use at bridges. While the presence of nearby water resources was associated with higher average predicted probability of bat presence or signs of bat use, high uncertainty surrounding these estimates indicates that other factors also play a role in determining which bridge roosts bats are more likely to use. As such, our model could be particularly useful for predicting which bridges can be excluded from survey efforts due to low probability of bat presence or signs of bat use. We extrapolated our model to unsurveyed bridges across the study region and provide an interactive dashboard application interface for the exploration of these results. Overall, this study demonstrates the application of BART as a predictive tool for prioritizing future bridge surveys for bats roosting in transportation structures.


Oram, J., Wray, A. K., Davis, H. T., de Wit, L. A., Frick, W. F., Hoegh, A., ... & Reichert, B. E. (2025). WITHDRAWN: Predicting Bat Roosts in Bridges using Bayesian Additive Regression Trees. Global Ecology and Conservation, e03551.


To view the publication, click here https://doi.org/10.1016/j.gecco.2025.e03551



Comments


Commenting on this post isn't available anymore. Contact the site owner for more info.
NABat_Circle_color_map only.jpg

2018 by Bat Conservation International in partnership with the NABat Program

bottom of page