2022
DOI: 10.1029/2022gl099368
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Wildfire Danger Prediction and Understanding With Deep Learning

Abstract: Climate change exacerbates the occurence of extreme droughts and heatwaves, increasing the frequency and intensity of large wildfires across the globe. Forecasting wildfire danger and uncovering the drivers behind fire events become central for understanding relevant climate‐land surface feedback and aiding wildfire management. In this work, we leverage Deep Learning (DL) to predict the next day's wildfire danger in a fire‐prone part of the Eastern Mediterranean and explainable Artificial Intelligence (xAI) to… Show more

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Cited by 36 publications
(28 citation statements)
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References 55 publications
(77 reference statements)
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“…Son et al 2022). Finally, traditional FWIs are mostly based on a limited number of independent variables; specifically, some of the variables described in the previous paragraph are not reflected in the traditional FWIs (Kondylatos et al 2022). One promising direction of research that could address exactly these issues is the application of ML models.…”
Section: Introductionmentioning
confidence: 99%
“…Son et al 2022). Finally, traditional FWIs are mostly based on a limited number of independent variables; specifically, some of the variables described in the previous paragraph are not reflected in the traditional FWIs (Kondylatos et al 2022). One promising direction of research that could address exactly these issues is the application of ML models.…”
Section: Introductionmentioning
confidence: 99%
“…Although they obtained encouraging accuracy and precision from this approach, the model's predictive capability was found to be limited by the influence of human activity on fire ignitions. Kondylatos et al (2022) applied machine-learning methods to predict next-day wildfire danger based on vegetation, meteorological, and soil-moisture data; when applied to two fire seasons in the Eastern Mediterranean region, this deep-learning approach evidently outperformed the more commonly used Fire Weather Index.…”
Section: New Methods and Technologies In Fire Researchmentioning
confidence: 99%
“…Kondylatos et al. (2022) applied machine‐learning methods to predict next‐day wildfire danger based on vegetation, meteorological, and soil‐moisture data; when applied to two fire seasons in the Eastern Mediterranean region, this deep‐learning approach evidently outperformed the more commonly used Fire Weather Index.…”
Section: New Methods and Technologies In Fire Researchmentioning
confidence: 99%
“…Spatio-temporal learning The ConvLSTM [50] was first introduced for precipitation nowcasting. Subsequently, spatio-temporal forecasting of the Earth system has gained traction, with strong results not only on precipitation nowcasting [42,51], but also on weather forecasting [7,26,38], climate projection [35] and wildfire modeling [24]. Beyond the Earth system, video prediction is spatio-temporal learning.…”
Section: Related Workmentioning
confidence: 99%