A comparison between traditional ordinary least-squares regression and three methods for enforcing additivity in biomass equations using a sample of Pinus radiata trees

Background: Additivity has long been recognised as a desirable property of systems of equations to predict the biomass of components and the whole tree. However, most tree biomass studies report biomass equations fitted using traditional ordinary least-squares regression. Therefore, we aimed to develop models to estimate components, subtotals and above-ground total biomass for a Pinus radiata D.Don biomass dataset using traditional linear and nonlinear ordinary leastsquares regressions, and to contrast these equations with the additive procedures of biomass estimation. Methods: A total of 24 ten-year-old trees were felled to assess above-ground biomass. Two broad procedures were implemented for biomass modelling: (a) independent; and (b) additive. For the independent procedure, traditional linear models (LINOLS) with scaled power transformations and y-intercepts and nonlinear power models (NLINOLS) without y-intercepts were compared. The best linear (transformed) models from the independent procedure were further tested in three different additive structures (LINADD1, LINADD2, and LINADD3). All models were evaluated using goodness-of-fit statistics, standard errors of estimates, and residual plots. Results: The LINOLS with scaled power transformations and y-intercepts performed better for all components, subtotals and total above-ground biomass in contrast to NLINOLS that lacked y-intercepts. The additive model (LINADD3) in a joint generalised linear least-squares regression, also called seemingly unrelated regression (SUR), provided the best goodness-of-fit statistics and residual plots for four out of six components (stem, branch, new foliage and old foliage), two out of three subtotals (foliage and crown), and above-ground total biomass compared to other methods. However, bark, cone and bole biomass were better predicted by the LINOLS method. Conclusions: SUR was the best method to predict biomass for the 24-tree dataset because it provided the best goodness-of-fit statistics with unbiased estimates for 7 out of 10 biomass components. This study may assist silviculturists and forest managers to overcome one of the main problems when using biomass equations fitted independently for each tree component, which is that the sum of the biomasses of the predicted tree components does not necessarily add to the total biomass, as the additive biomass models do.

Saved in:
Bibliographic Details
Main Authors: Mohan, K. C., Mason, Euan G., Bown Intveen, Horacio, Jones, Grace
Format: Artículo de revista biblioteca
Language:English
Published: Scion 2021-04-05T20:25:57Z
Subjects:Above-ground, Additive, Biomass, Linear, Nonlinear, Radiata pine, Seemingly unrelated regression,
Online Access:https://repositorio.uchile.cl/handle/2250/178934
Tags: Add Tag
No Tags, Be the first to tag this record!
id dig-infor-cl-20.500.12220-30527
record_format koha
spelling dig-infor-cl-20.500.12220-305272023-06-20T14:43:16Z A comparison between traditional ordinary least-squares regression and three methods for enforcing additivity in biomass equations using a sample of Pinus radiata trees Mohan, K. C. Mason, Euan G. Bown Intveen, Horacio Jones, Grace Above-ground Additive Biomass Linear Nonlinear Radiata pine Seemingly unrelated regression Background: Additivity has long been recognised as a desirable property of systems of equations to predict the biomass of components and the whole tree. However, most tree biomass studies report biomass equations fitted using traditional ordinary least-squares regression. Therefore, we aimed to develop models to estimate components, subtotals and above-ground total biomass for a Pinus radiata D.Don biomass dataset using traditional linear and nonlinear ordinary leastsquares regressions, and to contrast these equations with the additive procedures of biomass estimation. Methods: A total of 24 ten-year-old trees were felled to assess above-ground biomass. Two broad procedures were implemented for biomass modelling: (a) independent; and (b) additive. For the independent procedure, traditional linear models (LINOLS) with scaled power transformations and y-intercepts and nonlinear power models (NLINOLS) without y-intercepts were compared. The best linear (transformed) models from the independent procedure were further tested in three different additive structures (LINADD1, LINADD2, and LINADD3). All models were evaluated using goodness-of-fit statistics, standard errors of estimates, and residual plots. Results: The LINOLS with scaled power transformations and y-intercepts performed better for all components, subtotals and total above-ground biomass in contrast to NLINOLS that lacked y-intercepts. The additive model (LINADD3) in a joint generalised linear least-squares regression, also called seemingly unrelated regression (SUR), provided the best goodness-of-fit statistics and residual plots for four out of six components (stem, branch, new foliage and old foliage), two out of three subtotals (foliage and crown), and above-ground total biomass compared to other methods. However, bark, cone and bole biomass were better predicted by the LINOLS method. Conclusions: SUR was the best method to predict biomass for the 24-tree dataset because it provided the best goodness-of-fit statistics with unbiased estimates for 7 out of 10 biomass components. This study may assist silviculturists and forest managers to overcome one of the main problems when using biomass equations fitted independently for each tree component, which is that the sum of the biomasses of the predicted tree components does not necessarily add to the total biomass, as the additive biomass models do. 2021-04-05T20:25:57Z 2021-04-05T20:25:57Z 2021-04-05T20:25:57Z 2020 Artículo de revista New Zealand Journal of Forestry Science (2020) 50:7 10.33494/nzjfs502020x90x https://repositorio.uchile.cl/handle/2250/178934 en http://creativecommons.org/licenses/by-nc-nd/3.0/cl/ Attribution-NonCommercial-NoDerivs 3.0 Chile Scion New Zealand Journal of Forestry Science
institution INFOR CL
collection DSpace
country Chile
countrycode CL
component Bibliográfico
access En linea
databasecode dig-infor-cl
tag biblioteca
region America del Sur
libraryname Biblioteca del INFOR Chile
language English
topic Above-ground
Additive
Biomass
Linear
Nonlinear
Radiata pine
Seemingly unrelated regression
Above-ground
Additive
Biomass
Linear
Nonlinear
Radiata pine
Seemingly unrelated regression
spellingShingle Above-ground
Additive
Biomass
Linear
Nonlinear
Radiata pine
Seemingly unrelated regression
Above-ground
Additive
Biomass
Linear
Nonlinear
Radiata pine
Seemingly unrelated regression
Mohan, K. C.
Mason, Euan G.
Bown Intveen, Horacio
Jones, Grace
A comparison between traditional ordinary least-squares regression and three methods for enforcing additivity in biomass equations using a sample of Pinus radiata trees
description Background: Additivity has long been recognised as a desirable property of systems of equations to predict the biomass of components and the whole tree. However, most tree biomass studies report biomass equations fitted using traditional ordinary least-squares regression. Therefore, we aimed to develop models to estimate components, subtotals and above-ground total biomass for a Pinus radiata D.Don biomass dataset using traditional linear and nonlinear ordinary leastsquares regressions, and to contrast these equations with the additive procedures of biomass estimation. Methods: A total of 24 ten-year-old trees were felled to assess above-ground biomass. Two broad procedures were implemented for biomass modelling: (a) independent; and (b) additive. For the independent procedure, traditional linear models (LINOLS) with scaled power transformations and y-intercepts and nonlinear power models (NLINOLS) without y-intercepts were compared. The best linear (transformed) models from the independent procedure were further tested in three different additive structures (LINADD1, LINADD2, and LINADD3). All models were evaluated using goodness-of-fit statistics, standard errors of estimates, and residual plots. Results: The LINOLS with scaled power transformations and y-intercepts performed better for all components, subtotals and total above-ground biomass in contrast to NLINOLS that lacked y-intercepts. The additive model (LINADD3) in a joint generalised linear least-squares regression, also called seemingly unrelated regression (SUR), provided the best goodness-of-fit statistics and residual plots for four out of six components (stem, branch, new foliage and old foliage), two out of three subtotals (foliage and crown), and above-ground total biomass compared to other methods. However, bark, cone and bole biomass were better predicted by the LINOLS method. Conclusions: SUR was the best method to predict biomass for the 24-tree dataset because it provided the best goodness-of-fit statistics with unbiased estimates for 7 out of 10 biomass components. This study may assist silviculturists and forest managers to overcome one of the main problems when using biomass equations fitted independently for each tree component, which is that the sum of the biomasses of the predicted tree components does not necessarily add to the total biomass, as the additive biomass models do.
format Artículo de revista
topic_facet Above-ground
Additive
Biomass
Linear
Nonlinear
Radiata pine
Seemingly unrelated regression
author Mohan, K. C.
Mason, Euan G.
Bown Intveen, Horacio
Jones, Grace
author_facet Mohan, K. C.
Mason, Euan G.
Bown Intveen, Horacio
Jones, Grace
author_sort Mohan, K. C.
title A comparison between traditional ordinary least-squares regression and three methods for enforcing additivity in biomass equations using a sample of Pinus radiata trees
title_short A comparison between traditional ordinary least-squares regression and three methods for enforcing additivity in biomass equations using a sample of Pinus radiata trees
title_full A comparison between traditional ordinary least-squares regression and three methods for enforcing additivity in biomass equations using a sample of Pinus radiata trees
title_fullStr A comparison between traditional ordinary least-squares regression and three methods for enforcing additivity in biomass equations using a sample of Pinus radiata trees
title_full_unstemmed A comparison between traditional ordinary least-squares regression and three methods for enforcing additivity in biomass equations using a sample of Pinus radiata trees
title_sort comparison between traditional ordinary least-squares regression and three methods for enforcing additivity in biomass equations using a sample of pinus radiata trees
publisher Scion
publishDate 2021-04-05T20:25:57Z
url https://repositorio.uchile.cl/handle/2250/178934
work_keys_str_mv AT mohankc acomparisonbetweentraditionalordinaryleastsquaresregressionandthreemethodsforenforcingadditivityinbiomassequationsusingasampleofpinusradiatatrees
AT masoneuang acomparisonbetweentraditionalordinaryleastsquaresregressionandthreemethodsforenforcingadditivityinbiomassequationsusingasampleofpinusradiatatrees
AT bownintveenhoracio acomparisonbetweentraditionalordinaryleastsquaresregressionandthreemethodsforenforcingadditivityinbiomassequationsusingasampleofpinusradiatatrees
AT jonesgrace acomparisonbetweentraditionalordinaryleastsquaresregressionandthreemethodsforenforcingadditivityinbiomassequationsusingasampleofpinusradiatatrees
AT mohankc comparisonbetweentraditionalordinaryleastsquaresregressionandthreemethodsforenforcingadditivityinbiomassequationsusingasampleofpinusradiatatrees
AT masoneuang comparisonbetweentraditionalordinaryleastsquaresregressionandthreemethodsforenforcingadditivityinbiomassequationsusingasampleofpinusradiatatrees
AT bownintveenhoracio comparisonbetweentraditionalordinaryleastsquaresregressionandthreemethodsforenforcingadditivityinbiomassequationsusingasampleofpinusradiatatrees
AT jonesgrace comparisonbetweentraditionalordinaryleastsquaresregressionandthreemethodsforenforcingadditivityinbiomassequationsusingasampleofpinusradiatatrees
_version_ 1769604084567900160