In 2024, there were over 64,800 wildfires in the United States alone, according to the National Interagency Fire Center (NIFC). Globally, wildfires are also on the rise in South America, parts of western Europe, sub-Saharan Africa, and Australia. It’s increasingly crucial for local government, forestry, and fire service leaders to have a granular understanding of fire risks in their area to protect people and infrastructure.
To know where fires could start and how they are likely to spread once they do, fire and forestry leaders need to increase their understanding of fuel in the areas they protect. That’s why our team is pleased to announce the launch of our Wildfire Data as a Service (DaaS) offerings, with a focus on dynamic fuel data for fire behavior modeling.
Moving forward, we’ll…
Fuels are essentially the materials in which fire is carried. Generally, wildfire fuels are living or previously living material whose structure, arrangement and condition make it possible for fire to propagate. Fuel is one of the three sides of the fire behavior triangle, alongside weather and topography.
Wildfire is a phenomenon of context. The more precisely and accurately you can define its context, the higher the chances of successfully predicting its behavior using mathematical formulas created by fire scientists or inferred via AI. Whatever the methodology, fire behavior estimation requires numbers describing the three components of the fire behavior triangle for a given place and time.
So, when we talk about fuel data, we are really talking about our ability to specify the numbers we enter into fire behavior formulas for each fuel type. These numbers are things like fuel load, which is the amount of available fuel to burn based on size and if it’s alive or dead. There are also numbers describing fuel structure and arrangement, like height, surface-to-air volume ratio, and wind reduction factor, among many others.
Wildfire fuel data modeling is the process of combining data from multiple sources to understand the current state of fuel in an area, estimating fuel types and their associated descriptive parameters, and arranging that information in a format that enables robust fire behavior estimation. Dynamic fuel data modeling goes further. It repeats this process more frequently to make sure mapped fuel data descriptions reflect real-world changes in the fuels.
Fuels can change often, sometimes dramatically. Droughts impact fuel loads and arrangement, crops get harvested, grasses grow and die seasonally, wind events or pests can damage forests altering structure and arrangement — and those are just a few of the factors at play.
Fire behavior science can be complex, but generally, you need to know:
…With that said, the elephant in the room is the recency of the data. If you’re using static, representative fuel data that updates infrequently, your fuel data cannot reflect dynamic changes due to the seasons, wind or pest damage, and in particular for forest systems, the impact of drought.
AEM’s Wildfire Data as a Service (DaaS) is a subscription service delivering essential landscape characterization data to support wildfire predictive analytics. Our fuel data updates every 10 days to keep wildfire and land managers as up to date as possible on wildfire threats in their area. But it takes more than just fuel data to model wildfire behavior well. Our Wildfire DaaS offering is expanding beyond fuel data, and will include:
We know that all data is what you make of it, which is why we package our offerings in a way that makes it easy to bring into any wildfire modeling or simulation software. We’re proud to say our fuel data is:
AEM’s ability to provide accurate, actionable, well-packaged wildfire data anywhere at scale is unmatched. Our solutions are built by wildfire specialists for wildfire specialists in this specific moment. We’re proud to be in a position to support an unprecedented leap forward in wildfire data, modeling, and risk analytics for countries and organizations that have previously been unable to access the most advanced capabilities.
If you'd like to see how better wildfire data could make a difference in your ability to understand, predict, and respond to fires, it's time to sit down for a chat.