A Remote Sensing and GIS Approach to Study the Long-Term Vegetation Recovery of a Fire-Affected Pine Forest in Southern Greece

被引:12
作者
Nioti, Foula [1 ]
Xystrakis, Fotios [1 ]
Koutsias, Nikos [1 ]
Dimopoulos, Panayotis [1 ]
机构
[1] Univ Patras, Dept Environm & Nat Resources Management, Agrinion 30100, Greece
关键词
LANDSAT; vegetation indices; NDVI; logistic regression; Mediterranean; regeneration; wildland fires; POSTFIRE REGENERATION; NATURAL REGENERATION; HIGH-TEMPERATURES; PINASTER AITON; BRUTIA FOREST; LANDSAT-TM; HALEPENSIS; DYNAMICS; WILDFIRES; ECOSYSTEM;
D O I
10.3390/rs70607712
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
Management strategies and silvicultural treatments of fire-prone ecosystems often rely on knowledge of the regeneration potential and long-term recovery ability of vegetation types. Remote sensing and GIS applications are valuable tools providing cost-efficient information on vegetation recovery patterns and their associated environmental factors. In this study we used an ordinal classification scheme to describe the land cover changes induced by a wildfire that occurred in 1983 in Pinus brutia woodlands on Karpathos Aegean Island, south-eastern Greece. As a proxy variable that indicates ecosystem recovery, we also estimated the difference between the NDVI and NBR indices a few months (1984) and almost 30 years after the fire (2012). Environmental explanatory variables were selected using a digital elevation model and various thematic maps. To identify the most influential environmental factors contributing to woodland recovery, binary logistic regression and linear regression techniques were applied. The analyses showed that although a large proportion of the P. brutia woodland has recovered 26 years after the fire event, a considerable amount of woodland had turned into scrub vegetation. Altitude, slope inclination, solar radiation, and pre-fire woodland physiognomy were identified as dominant factors influencing the vegetation's recovery probability. Additionally, altitude and inclination are the variables that explain changes in the satellite remote sensing vegetation indices reflecting the recovery potential. Pinus brutia showed a good post-fire recovery potential, especially in parts of the study area with increased moisture availability.
引用
收藏
页码:7712 / 7731
页数:20
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