Quantification of annual wildfire risk; A spatio-temporal point process approach.
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Publication:5148616
DOI10.6092/issn.1973-2201/3985zbMath1453.62752OpenAlexW1496592268MaRDI QIDQ5148616
Ana Sá, M. Antonia Amaral-Turkman, P. Pereira, Feridun Turkman, José M. C. Pereira
Publication date: 4 February 2021
Full work available at URL: https://doaj.org/article/1c2aeb59ffc1487a9a1d2eac847fad75
Inference from spatial processes (62M30) Applications of statistics to environmental and related topics (62P12) Point processes (e.g., Poisson, Cox, Hawkes processes) (60G55)
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