4.6 Article

Global Forest Types Based on Climatic and Vegetation Data

期刊

SUSTAINABILITY
卷 14, 期 2, 页码 -

出版社

MDPI
DOI: 10.3390/su14020634

关键词

forest types; NDVI; AVHRR GIMMS; temperature range; precipitation range

资金

  1. Education Department of Hebei Province [BJ2020025]
  2. National Natural Science Foundation of China [41601045]
  3. talents introduction program in Hebei Agricultural University [YJ201918]
  4. Swiss National Science Foundation

向作者/读者索取更多资源

This study aims to improve the distribution of forest types to be more realistic and useful by considering the actual forest attributes and linking them with climate. Forest types were classified using unsupervised cluster analysis method, combining climate variables with NDVI data. The resulting forest type distribution can provide valuable information for forest managers, conservationists, and forest ecologists.
Forest types are generally identified using vegetation or land-use types. However, vegetation classifications less frequently consider the actual forest attributes within each type. To address this in an objective way across different regions and to link forest attributes with their climate, we aimed to improve the distribution of forest types to be more realistic and useful for biodiversity preservation, forest management, and ecological and forestry research. The forest types were classified using an unsupervised cluster analysis method by combining climate variables with normalized difference vegetation index (NDVI) data. Unforested regions were masked out to constrict our study to forest type distributions, using a 20% tree cover threshold. Descriptive names were given to the defined forest types based on annual temperature, precipitation, and NDVI values. Forest types had distinct climate and vegetation characteristics. Regions with similar NDVI values, but with different climate characteristics, which would be merged in previous classifications, could be clearly distinguished. However, small-range forest types, such as montane forests, were challenging to differentiate. At macroscale, the resulting forest types are largely consistent with land-cover types or vegetation types defined in previous studies. However, considering both potential and current vegetation data allowed us to create a more realistic type distribution that differentiates actual vegetation types and thus can be more informative for forest managers, conservationists, and forest ecologists. The newly generated forest type distribution is freely available to download and use for non-commercial purposes as a GeoTIFF file via doi: 10.13140/RG.2.2.19197.90082).

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