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Methods of Forest Structure Research: a Review
- Forest Management (H Vacik, Section Editor)
- Published: 27 June 2019
- Volume 5 , pages 142–154, ( 2019 )
Cite this article
- Gangying Hui 1 , 2 na1 ,
- Ganggang Zhang 2 na1 ,
- Zhonghua Zhao 2 &
- Aiming Yang 2
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83 Citations
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Purpose of Review
The forest structure generally refers to the configuration and distribution of different plant species and sizes. Investigation and analysis of forest structures help us to understand the history, current status, and future development of forest ecological systems. This paper aims at a systematic summary of the quantitative analysis methods of forest structure.
Recent Findings
The marked second-order characteristic method has obvious advantages in explaining the relationships among tree species and the dynamic relationship between tree size differentiation and scale. The quantitative analysis method of spatial structure based on the relationships of nearest neighbor trees, compared with traditional non-spatial indices or functions, does not only analyze four important aspects of the forest structure (spatial distribution pattern diversity, species diversity, size diversity, crowding degree diversity), but also demonstrates its strength in elaborating fine-scale spatial stand structure. This nearest-neighbor analytical method also bridges the gap between stand structure parameters and tree competition indices, especially through the multivariate distribution of structural parameters.
This nearest-neighbor analytical method provides an in-depth, multi-faceted interpretation of forest structure at different levels. Structure-based forest management has been proposed based on this analytical method of spatial structure, and is a proven way to effectively improve forest quality.
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This study was funded by the “Plantation Structure Regulation and Stability Maintenance mechanism and its productivity effect” of the National Key Research and Development Program of China (2016YFD0600203) and the “Research and Demonstration of Regional Forest Ecosystem Multi-objective Balanced Recovery and Re-establishment” of the National Key Research and Development Program of China (2017YFC050400501).
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Ganggang Zhang and Gangying Hui contributed equally to this work as first co-authors.
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Research Center of Forest Management Engineering of State Forestry and Grassland Administration, Beijing Forestry University, Beijing, 100083, China
Gangying Hui
Research Institute of Forestry, Chinese Academy of Forestry, Beijing, 100091, China
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Hui, G., Zhang, G., Zhao, Z. et al. Methods of Forest Structure Research: a Review. Curr Forestry Rep 5 , 142–154 (2019). https://doi.org/10.1007/s40725-019-00090-7
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Published : 27 June 2019
Issue Date : 15 September 2019
DOI : https://doi.org/10.1007/s40725-019-00090-7
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