Abstract

Cell2Fire is a new cell-based wildland fire growth simulator designed to integrate data-driven landscape management planning models. The fire environment is modeled by partitioning the landscape into cells characterized by fuel, weather, moisture content, and topographic attributes. The model can use existing fire spread models such as the Canadian Forest Fire Behavior Prediction System to model fire growth. Cell2Fire is structured to facilitate its use for predicting the growth of individual fires or by embedding it in landscape management simulation models. Decision-making models such as fuel treatment/harvesting plans can be easily integrated and evaluated. It incorporates a series of out-of-the-box planning heuristics that provide benchmarks for comparison. We illustrate their use by applying and evaluating a series of harvesting plans for forest landscapes in Canada. We validated Cell2Fire by using it to predict the growth of both real and hypothetical fires, comparing our predictions with the fire scars produced by a validated fire growth simulator (Prometheus). Cell2Fire is implemented as an open-source project that exploits parallelism to efficiently support the modeling of fire growth across large spatial and temporal scales. Our experiments indicate that Cell2Fire is able to efficiently simulate wildfires (up to 30x faster) under different conditions with similar accuracy as state-of-the-art simulators (above 90% of accuracy). We demonstrate its effectiveness as part of a harvest planning optimization framework, identifying relevant metrics to capture and actions to mitigate the impact of wildfire uncertainty.

Highlights

  • The effects of global warming on temperature, precipitation, soil moisture, and other forest and wildland fire regime drivers have increased and are expected to continue to increase in terms of both the number of and area burned by wildfires around the globe (Westerling, 2016)

  • We did not compare either simulator with the actual fire scars in our study because it is difficult to determine the extent to which the final shapes were influenced by suppression actions

  • Sub-instances Based on the results shown in Figure 9 and Table 2 we can see that Cell2Fire produced results that are similar to the fire scars produced by Prometheus with respect to the hourly fire growth and final fire perimeter

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Summary

Introduction

The effects of global warming on temperature, precipitation, soil moisture, and other forest and wildland fire regime drivers have increased and are expected to continue to increase in terms of both the number of and area burned by wildfires around the globe (Westerling, 2016). The Canadian Forest Fire Behavior Prediction (FBP) System includes empirical fire spread rate models that can be used to predict the ROS and the intensity of wildfires based on weather, fuel moisture, time of year, and topographical variables for specified fuel types; e.g., for individual grid cells that contain homogeneous fuel types (Forestry-Canada, 1992). Prometheus is a vector-based fire growth model that is based on an adaptation of Huygens principle of wave propagation, i.e., the propagation of the fire front is modeled similar to a wave, shifting and moving forward continuously in time and space It uses spatially explicit fire environment input data concerning topography (slope, aspect, and elevation) and FBP fuel types along with a weather stream and corresponding fire danger rating codes and indices to model wildfire growth (Van Wagner and Pickett, 1987).

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