Journal Article10.1007/s10661-024-12982-8
A comprehensive taxonomy for forest fire risk assessment: bridging methodological gaps and proposing future directions
Zühal Özcan,İnci Çağlayan,Özgür Kabak +2 more
About: This article is published in Environmental Monitoring and Assessment. The article was published on 20 Aug 2024. The article focuses on the topics: Bridging (networking).
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References
An overview of environmental issues in Southern Africa
TL;DR: In this paper, the authors provide an overview of some of the significant environmental problems in the Southern African region, including global warming and climate variability, loss of biodiversity, deforestation, desertification-land degradation, waste and littering, population growth, urbanization, pollution, poverty and health hazards.
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Gis-Based Multi-Criteria Decision Analysis for Forest Fire Risk Mapping
Abdullah E. Akay,Ali Erdogan +1 more
TL;DR: In this paper, a GIS-based multi-criteria decision analysis (MCDA) method was used to generate forest fire risk map, which was implemented in the forested areas within Yayla Forest Enterprise Chiefs at Dursunbey Forest Enterprise Directorate which is classified as first degree fire sensitive area.
Mapping China’s Forest Fire Risks with Machine Learning
TL;DR: In this article , a large-scale forest fire risk map for China was constructed based on Visible Infrared Imaging Radiometer Suite data from 17,330 active fires for the period 2012-2019, and combined terrain, meteorology, social economy, vegetation, and other factors closely related to the generation of forest fire disasters for modeling and predicting forest fires.
Developing a New Hourly Forest Fire Risk Index Based on Catboost in South Korea
TL;DR: In this paper, the authors developed an hourly forest fire risk index (HFRI) with 1 km spatial resolution using accessibility, fuel, time, and weather factors based on Catboost machine learning over South Korea.