Abstract

Abstract. There is broad consensus that wildfire activity is likely to increase in western US forests and woodlands over the next century. Therefore, spatial predictions of the potential for large wildfires have immediate and growing relevance to near- and long-term research, planning, and management objectives. Fuels, climate, weather, and the landscape all exert controls on wildfire occurrence and spread, but the dynamics of these controls vary from daily to decadal timescales. Accurate spatial predictions of large wildfires should therefore strive to integrate across these variables and timescales. Here, we describe a high spatial resolution dataset (250 m pixel) of the probability of large wildfires ( > 405 ha) across forests and woodlands in the contiguous western US, from 2005 to the present. The dataset is automatically updated on a weekly basis using Google Earth Engine and a continuous integration pipeline. Each image in the dataset is the output of a random forest machine-learning algorithm, trained on random samples of historic small and large wildfires and represents the predicted conditional probability of an individual pixel burning in a large fire, given an ignition or fire spread to that pixel. This novel workflow is able to integrate the near-term dynamics of fuels and weather into weekly predictions while also integrating longer-term dynamics of fuels, the climate, and the landscape. As a continually updated product, the dataset can provide operational fire managers with contemporary, on-the-ground information to closely monitor the changing potential for large wildfire occurrence and spread. It can also serve as a foundational dataset for longer-term planning and research, such as the strategic targeting of fuels management, fire-smart development at the wildland–urban interface, and the analysis of trends in wildfire potential over time. Weekly large fire probability GeoTiff products from 2005 to 2017 are archived on the Figshare online digital repository with the DOI https://doi.org/10.6084/m9.figshare.5765967 (available at https://doi.org/10.6084/m9.figshare.5765967.v1). Weekly GeoTiff products and the entire dataset from 2005 onwards are also continually uploaded to a Google Cloud Storage bucket at https://console.cloud.google.com/storage/wffr-preds/V1 (last access: 14 September 2018) and are available free of charge with a Google account. Continually updated products and the long-term archive are also available to registered Google Earth Engine (GEE) users as public GEE assets and can be accessed with the image collection ID users/mgray/wffr-preds within GEE.

Highlights

  • Wildfire predictions for near-term operations versus longterm planning and research operate at different spatiotemporal scales, aiming either to understand the risk posed over the course of an individual fire or fire season or to understand the broadscale characteristics of fire regimes

  • We sought to fill this gap by developing a dataset of the predicted conditional probability that an area on the landscape will burn in a large wildfire (i.e., > 405 ha) given an ignition or fire spread to that area, which integrates across spatiotemporal scales in an empirical framework

  • We modeled the conditional probability of large fire occurrence, which we define as the probability that an area on the landscape will burn in a large (i.e., > 405 ha) fire, conditional on either an ignition event or fire spreading to that area

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Summary

Introduction

Wildfire predictions for near-term operations versus longterm planning and research operate at different spatiotemporal scales, aiming either to understand the risk posed over the course of an individual fire or fire season or to understand the broadscale characteristics of fire regimes. The work described does not attempt to model the risk posed by individual fires, it is meant to provide contemporary fire information across regional extents, drawing on continually updated fuel and weather data to predict conditional large fire probability at a high resolution. It provides a needed, complementary dataset to existing models that operate on near-term timescales.

Modeling
Response variables
Predictor variables
Long-term land-surface variables
Long-term climate variables
Near-term land-surface variables
Near-term weather variables
Dataset evaluation
Continuous integration
Band descriptions
Code and data availability
Findings
Conclusions
Full Text
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