Nonlinear regression is increasingly used to develop allometric equations for forest biomass estimation (i.e., as opposed to the traditional approach of log‐transformation followed by linear regression). Most statistical software packages, however, assume additive errors by default, violating a key assumption of allometric theory and possibly producing spurious models. Here, we show that such models may bias stand‐level biomass estimates by up to 100 percent in young forests, and we present an alternative nonlinear fitting approach that conforms with allometric theory
Above-ground biomass (AGB) is an essential descriptor of forests, of use in ecological and climate-r...
Allometric biomass equations are widely used to predict aboveground biomass in forest ecosystems. A ...
The miombo woodland is the most extensive dry forest in the world, with the potential to store subst...
Nonlinear regression is increasingly used to develop allometric equations for forest biomass estimat...
Nonlinear regression is increasingly used to develop allometric equations for forest biomass estimat...
Allometric models are commonly used to predict forest biomass. These models typically take nonlinear...
Allometric relationships are commonly used to estimate average biomass of trees of a particular size...
<div><p>Precise estimation of root biomass is important for understanding carbon stocks and dynamics...
Precise estimation of root biomass is important for understanding carbon stocks and dynamics in fore...
Accurate estimation of forest biomass is important for scientists and policymakers interested in car...
Tree biomass plays a key role in sustainable forest management since it is the basis for estimating ...
Allometric equation is the common tools for quantifying and monitoring the amount of carbon stored i...
Tree biomass plays a key role in sustainable management and in estimating forest carbon stocks. The ...
The first author was supported by the European Union under a IEF Marie-Curie Action.Accurate estimat...
Above-ground biomass (AGB) is an essential descriptor of forests, of use in ecological and climate-r...
Above-ground biomass (AGB) is an essential descriptor of forests, of use in ecological and climate-r...
Allometric biomass equations are widely used to predict aboveground biomass in forest ecosystems. A ...
The miombo woodland is the most extensive dry forest in the world, with the potential to store subst...
Nonlinear regression is increasingly used to develop allometric equations for forest biomass estimat...
Nonlinear regression is increasingly used to develop allometric equations for forest biomass estimat...
Allometric models are commonly used to predict forest biomass. These models typically take nonlinear...
Allometric relationships are commonly used to estimate average biomass of trees of a particular size...
<div><p>Precise estimation of root biomass is important for understanding carbon stocks and dynamics...
Precise estimation of root biomass is important for understanding carbon stocks and dynamics in fore...
Accurate estimation of forest biomass is important for scientists and policymakers interested in car...
Tree biomass plays a key role in sustainable forest management since it is the basis for estimating ...
Allometric equation is the common tools for quantifying and monitoring the amount of carbon stored i...
Tree biomass plays a key role in sustainable management and in estimating forest carbon stocks. The ...
The first author was supported by the European Union under a IEF Marie-Curie Action.Accurate estimat...
Above-ground biomass (AGB) is an essential descriptor of forests, of use in ecological and climate-r...
Above-ground biomass (AGB) is an essential descriptor of forests, of use in ecological and climate-r...
Allometric biomass equations are widely used to predict aboveground biomass in forest ecosystems. A ...
The miombo woodland is the most extensive dry forest in the world, with the potential to store subst...