Summary
As climate change alters temperature and rainfall patterns, the size and intensity of wildfires are projected to increase. Invasive plants, particularly in the tropics and subtropics, contribute significantly to wildfire fuel. Identifying high-risk invasive plants through a literature-based screening system can help inform management and prevent wildfires. This study develops and tests a screening system to assess the wildfire risk posed by invasive plants in Hawai′i, using a combination of expert surveys and machine learning techniques. 49 invasive species in Hawai′i were used to train the system to predict expert fire risk scores based on 21 plant traits. The screening system had high accuracy for identifying plant species that pose higher fire risk.