@Inproceedings{Limber_IEEEBigData_20241215, author = {Russell Limber and William W. Hargrove and Forrest M. Hoffman and Jitendra Kumar}, booktitle = {2024 IEEE International Conference on Big Data (BigData)}, title = {Forecast of Wildfire Potential Across California USA Using a Transformer}, volume = {}, number = {}, pages = {4342--4350}, doi = {10.1109/BigData62323.2024.10825778} year = 2024, month = dec, day = 15, keywords = {Surveys;Wildfires;Normalized difference vegetation index;Geology;Weather forecasting;Predictive models;Transformers;Fuels;Indexes;MODIS;transformer;residual connection;wildfires;time series;remote sensing}, abstract = {Wildfires are a major issue facing the United States, a matter further exacerbated by an ever-changing climate. In California alone, wildfires are responsible for billions of dollars in damages and take lives each year. Accurately predicting fire danger conditions allows preparation awareness before wildfires start. Transformers are a class of deep learning models designed to identify patterns in sequential datasets. In recent years, transformers have gained popularity through their impressive performance in natural language processing and other applications of signal recognition. This analysis demonstrates the ability of a transformer with a residual connection to forecast fire danger potential over the state of California. Wildland fire potential index (WFPI) maps collected from the US Geological Survey database from January 1st 2020 to December 31st 2023 were used to tune, train and evaluate the transformer. Meteorological inputs (provided by Daymet daily weather and climatological summaries), the normalized difference vegetation index (NDVI) (calculated from the Moderate Resolution Imaging Spectroradiometer (MODIS)), and outputs from the Scott and Burgman fire behavior fuel models (to characterize maps of fuel types), were used as inputs. Our results show that a transformer can effectively emulate the US Forest Service modeled WFPI maps of California USA for four week long forecasts over the month of July, 2023, with correlations ranging from 0.85--0.98.} }