Asset Details
MbrlCatalogueTitleDetail
Do you wish to reserve the book?
Study on Biomass Models of Artificial Young Forest in the Northwestern Alpine Region of China
by
Yi, Lubei
, Dai, Li
, Zheng, Xueting
, Wang, Zhengyu
, Bao, Anming
, Mao, Chunyan
, Xu, Wenqiang
in
Alpine regions
/ Analysis
/ Biomass
/ Carbon sequestration
/ China
/ Compatibility
/ Ecosystems
/ Environment models
/ Environmental aspects
/ Estimation
/ Forest biomass
/ Forest ecosystems
/ Forests
/ Forests and forestry
/ Goodness of fit
/ Independent variables
/ Leaves
/ Measurement
/ Model accuracy
/ Mountains
/ Multiple regression models
/ Picea crassifolia
/ Pine trees
/ Pinus tabuliformis
/ Plant biomass
/ Plant species
/ Plantations
/ Precipitation
/ Regression analysis
/ Sabina przewalskii
/ Terrestrial ecosystems
/ Trees
/ Vegetation
/ Wood
2022
Hey, we have placed the reservation for you!
By the way, why not check out events that you can attend while you pick your title.
You are currently in the queue to collect this book. You will be notified once it is your turn to collect the book.
Oops! Something went wrong.
Looks like we were not able to place the reservation. Kindly try again later.
Are you sure you want to remove the book from the shelf?
Study on Biomass Models of Artificial Young Forest in the Northwestern Alpine Region of China
by
Yi, Lubei
, Dai, Li
, Zheng, Xueting
, Wang, Zhengyu
, Bao, Anming
, Mao, Chunyan
, Xu, Wenqiang
in
Alpine regions
/ Analysis
/ Biomass
/ Carbon sequestration
/ China
/ Compatibility
/ Ecosystems
/ Environment models
/ Environmental aspects
/ Estimation
/ Forest biomass
/ Forest ecosystems
/ Forests
/ Forests and forestry
/ Goodness of fit
/ Independent variables
/ Leaves
/ Measurement
/ Model accuracy
/ Mountains
/ Multiple regression models
/ Picea crassifolia
/ Pine trees
/ Pinus tabuliformis
/ Plant biomass
/ Plant species
/ Plantations
/ Precipitation
/ Regression analysis
/ Sabina przewalskii
/ Terrestrial ecosystems
/ Trees
/ Vegetation
/ Wood
2022
Oops! Something went wrong.
While trying to remove the title from your shelf something went wrong :( Kindly try again later!
Do you wish to request the book?
Study on Biomass Models of Artificial Young Forest in the Northwestern Alpine Region of China
by
Yi, Lubei
, Dai, Li
, Zheng, Xueting
, Wang, Zhengyu
, Bao, Anming
, Mao, Chunyan
, Xu, Wenqiang
in
Alpine regions
/ Analysis
/ Biomass
/ Carbon sequestration
/ China
/ Compatibility
/ Ecosystems
/ Environment models
/ Environmental aspects
/ Estimation
/ Forest biomass
/ Forest ecosystems
/ Forests
/ Forests and forestry
/ Goodness of fit
/ Independent variables
/ Leaves
/ Measurement
/ Model accuracy
/ Mountains
/ Multiple regression models
/ Picea crassifolia
/ Pine trees
/ Pinus tabuliformis
/ Plant biomass
/ Plant species
/ Plantations
/ Precipitation
/ Regression analysis
/ Sabina przewalskii
/ Terrestrial ecosystems
/ Trees
/ Vegetation
/ Wood
2022
Please be aware that the book you have requested cannot be checked out. If you would like to checkout this book, you can reserve another copy
We have requested the book for you!
Your request is successful and it will be processed during the Library working hours. Please check the status of your request in My Requests.
Oops! Something went wrong.
Looks like we were not able to place your request. Kindly try again later.
Study on Biomass Models of Artificial Young Forest in the Northwestern Alpine Region of China
Journal Article
Study on Biomass Models of Artificial Young Forest in the Northwestern Alpine Region of China
2022
Request Book From Autostore
and Choose the Collection Method
Overview
The artificial young forest is an important component of ecosystems, and biomass models are important for estimating the carbon storage of ecosystems. However, research on biomass models of the young forest is lacking. In this study, biomass data of 96 saplings of three tree species from the southern foot of the Qilian Mountains were collected. These data, coupled with allometric growth equations and the nonlinear joint estimation method, were used to establish independent, component-additive, and total-control compatible models to estimate the biomass of artificial young wood of Picea crassifolia (Picea crassifolia Kom.), Sabina przewalskii (Sabina przewalskii Kom.), and Pinus tabulaeformis (Pinus tabuliformis Carr.). The distribution characteristics of the biomass components (branch, leaf, trunk, and root biomass) and the goodness of fit of the models were also analyzed. The results showed that (1) the multiple regression models with two independent variables (MRWTIV) were superior to the univariate models for all three tree species. Base diameter was the best-fitting variable of the univariate model for Picea crassifolia and Pinus tabulaeformis, and the addition of base diameter and crown diameter as variables to the MRWTIV can significantly improve model accuracy. Tree height was the best-fitting variable of the univariate model of Sabina przewalskii, and the addition of tree height and crown diameter to the MRWTIV can significantly improve model accuracy; (2) the two independent variable component-additive compatible model was the best-fitting biomass model. The compatible models constructed by the nonlinear joint estimation method were less accurate than the independent models. However, they maintained good compatibility among the biomass components and enabled more robust estimates of regional biomass; and (3) for the young wood of Picea crassifolia, Sabina przewalskii, and Pinus tabulaeformis, the aboveground biomass ratio of each component to total biomass was highest for leaf biomass (26%–68%), followed by branch (10%–46%) and trunk (11%–55%) biomass, and the aboveground biomass was higher than the underground biomass. In conclusion, the optimal biomass model of artificial young forest at the sampling site is a multivariate component-additive compatible biomass model. It can well estimate the biomass of young forest and provide a basis for future research.
This website uses cookies to ensure you get the best experience on our website.