Sub-hourly forecasting of fire potential using machine learning on time series of surface weather variables

被引:0
作者
Ardid, Alberto [1 ]
Valencia, Andres [1 ]
Power, Anthony [2 ]
Boer, Matthias M. [3 ]
Katurji, Marwan [4 ]
Gross, Shana [5 ]
Dempsey, David [1 ]
机构
[1] Univ Canterbury, Civil & Nat Resources Engn Dept, Christchurch, New Zealand
[2] Covey Associates, Maroochydore, Qld, Australia
[3] Western Sydney Univ, Hawkesbury Inst Environm, Penrith, Australia
[4] Univ Canterbury, Sch Earth & Environm, Christchurch, New Zealand
[5] Scion, New Zealand Forest Res Inst, Rotorua, New Zealand
关键词
early warning; fire danger; fire potential; fire potential forecasting; fire potential probability; machine learning; surface weather variables; time series feature engineering; weather station data; FUEL MOISTURE-CONTENT; DANGER; AUSTRALIA; SYSTEMS; MODEL; AREA;
D O I
10.1071/WF24113
中图分类号
S7 [林业];
学科分类号
0829 ; 0907 ;
摘要
Background Rapidly developing pre-fire weather conditions contributing to sudden fire outbreaks can have devastating consequences. Accurate short-term forecasting is important for timely evacuations and effective fire suppression measures.Aims This study aims to introduce a novel machine learning-based approach for forecasting fire potential and to test its performance in the Sunshine Coast region of Queensland, Australia, over a period of 15 years from 2002 to 2017.Methods By analysing real-time data from local weather stations at a sub-hourly temporal resolution, we aimed to identify distinct weather patterns occurring hours to days before fires. We trained random forest machine learning models to classify pre-fire conditions.Key results The models achieved high out-of-sample accuracy, with a 47% higher accuracy than the standard fire danger index for the region. When simulating real forecasting conditions, the model anticipated 75% of the fires (11 out of 15).Conclusions This method provides objective, quantifiable information, enhancing the precision and effectiveness of fire warning systems.Implications The proposed forecasting approach supports decision-makers in implementing timely evacuations and effective fire suppression measures, ultimately reducing the impact of fires.
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页数:15
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