Projecting live fuel moisture content via deep learning

Author:

Miller LynnORCID,Zhu Liujun,Yebra Marta,Rüdiger Christoph,Webb Geoffrey I.

Abstract

Background Live fuel moisture content (LFMC) is a key environmental indicator used to monitor for high wildfire risk conditions. Many statistical models have been proposed to predict LFMC from remotely sensed data; however, almost all these estimate current LFMC (nowcasting models). Accurate modelling of LFMC in advance (projection models) would provide wildfire managers with more timely information for assessing and preparing for wildfire risk. Aims The aim of this study was to investigate the potential for deep learning models to predict LFMC across the continental United States 3 months in advance. Method Temporal convolutional networks were trained and evaluated using a large database of field measured samples, as well as year-long time series of MODerate resolution Imaging Spectroradiometer (MODIS) reflectance data and Parameter-elevation Relationships on Independent Slopes Model (PRISM) meteorological data. Key results The proposed 3-month projection model achieved an accuracy (root mean squared error (RMSE) 27.52%; R2 0.47) close to that of the nowcasting model (RMSE 26.52%; R2 0.51). Conclusions The study is the first to predict LFMC with a 3-month lead-time, demonstrating the potential for deep learning models to make reliable LFMC projections. Implications These findings are beneficial for wildfire management and risk assessment, showing proof-of-concept for providing advance information useful to help mitigate the effect of catastrophic wildfires.

Funder

Australian Research Council

Australian Government

Publisher

CSIRO Publishing

Subject

Ecology,Forestry

Reference59 articles.

1. Abadi M, Agarwal A, Barham P, Brevdo E, Chen Z, Citro C, Corrado GS, Davis A, Dean J, Devin M, Ghemawat S, Goodfellow I, Harp A, Irving G, Isard M, Jia Y, Jozefowicz R, Kaiser L, Kudlur M, Levenberg J, Mané D, Monga R, Moore S, Murray D, Olah C, Schuster M, Shlens J, Steiner B, Sutskever I, Talwar K, Tucker P, Vanhoucke V, Vasudevan V, Viégas F, Vinyals O, Warden P, Wattenberg M, Wicke M, Yu Y, Zheng X, Google Research (2015) TensorFlow: large-scale machine learning on heterogeneous distributed systems. Available at

2. Gradient analysis of latitudinal variation in southern Rocky Mountain forests.;Journal of Biogeography,1991

3. Determining fuel moisture thresholds to assess wildfire hazard: a contribution to an operational early warning system.;PLoS One,2018

4. Constraints and opportunities in applying seasonal climate forecasts in agriculture.;Australian Journal of Agricultural Research,2007

5. Present and future Köppen–Geiger climate classification maps at 1-km resolution.;Scientific Data,2018

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