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Stem Surface Area in Modeling of Forest Stands

English · Paperback / Softback

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Description

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This book reveals the benefits of describing and modeling trees as the combined surface areas of their stems, and provides a concise overview of the fundamental grounds for adopting such an approach. Anatomically speaking, trees are largely thin sheaths of living cells and it is this understanding that has sparked growing interest in the study of stem surface areas in trees and stands. An overview of publications on analytical methods for the dynamics and structure of forest stands based on stem surface area is also provided.
The approach described here gives readers a chance to rethink some models that were popular for decades, while also offering a glance into future research. The application of a simple geometrical model of a forest stand has made it possible to reexamine a highly promising model, the self-thinning rule, which has been a subject of a protracted discussion for the past few decades. Further, the analysis presented here can serve as the basis for predicting forest stand increments, a topic that calls for further development.

About the author

Dr. Vladimir L. Gavrikov is a senior researcher and a lecturer at Siberian Federal University. He has previously worked as a researcher at Institute for Forest of Siberian Branch of the Russia Academy of Sciences, as a Humboldt Foundation Research Fellow at TU Dresden and as a dean of Biology, Geography and Chemistry Department of Krasnoyarsk Pedagogical University. His research interests are primarily in fields of ecological modeling, carbon cycle in forests, and radionuclide migration in forest ecosystems. He led a few projects in the fields sponsored by Russian foundations. He has published about 90 papers and a book Forest growth: levels of description and modeling.

Summary

This book reveals the benefits of describing and modeling trees as the combined surface areas of their stems, and provides a concise overview of the fundamental grounds for adopting such an approach. Anatomically speaking, trees are largely thin sheaths of living cells and it is this understanding that has sparked growing interest in the study of stem surface areas in trees and stands. An overview of publications on analytical methods for the dynamics and structure of forest stands based on stem surface area is also provided.


The approach described here gives readers a chance to rethink some models that were popular for decades, while also offering a glance into future research. The application of a simple geometrical model of a forest stand has made it possible to reexamine a highly promising model, the self-thinning rule, which has been a subject of a protracted discussion for the past few decades. Further, the analysis presented here can serve as the basis for predicting forest stand increments, a topic that calls for further development.

Product details

Authors Vladimir L. Gavrikov, Vladimir L Gavrikov
Publisher Springer, Berlin
 
Content Book
Product form Paperback / Softback
Publication date 31.05.2017
Subject Natural sciences, medicine, IT, technology > Biology > Agriculture, horticulture; forestry, fishing, food
 
EAN 9783319524481
ISBN 978-3-31-952448-1
Pages 100
Illustrations X, 100 p. 23 illus.
Dimensions (packing) 15.5 x 23.5 x 0.6 cm
Weight (packing) 188 g
 
Series SpringerBriefs in Plant Science
SpringerBriefs in Plant Science
Subjects C, Entwicklungsbiologie, Ecology, Ecological science, the Biosphere, Biomedical and Life Sciences, Botany & plant sciences, Forestry, Plant anatomy, Plant Development, Plant Anatomy/Development, Developmental biology, Data analysis: general, Theoretical Ecology/Statistics
 

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