Magalhães Tarquinio Mateus, Mate Rosta Simão
Departamento de Engenharia Florestal,Universidade Eduardo Mondlane, Campus Universitário, Edifício no. 1, 257 Maputo, Mozambique.
MethodsX. 2018 Jan 28;5:30-38. doi: 10.1016/j.mex.2018.01.005. eCollection 2018.
Due to its readiness to convert stem volumes (V) into biomass, national and regional aboveground biomass estimates and greenhouse gas reporting are generally based on biomass conversion and expansion factors (BCEFs). BCEF-based biomass (Ŵ) is computed by the following regression through the origin (RTO): Ŵ = BCEF × V. However, the regression slope (BCEF) is not obtained using least squares (LS); it is obtained as the ratio of observed biomass and stem volume. Therefore, the sum of squares of the residuals is not minimum. This may lead to strongly biased biomass estimates. Furthermore, in this case, the biomass is not modelled. In the present study, it was suggested that BCEFs should be obtained using LS through RTO. The objective of this study was to compare LS-based and ratio-based BCEFs with regard to predictive accuracy and ability. A dataset of 75 trees from 4 species was used for the comparisons. •LS-based BCEFs were associated with higher predictive accuracy and ability than ratio-based ones.•It was proved that RTO is appropriated for estimating BCEFs, as the intercept α was consistently not significant.•Ratio-based BCEFs may lead to seriously biased biomass and carbon stocks estimates.•BCEFs should be estimated using least squares.
由于其易于将树干体积(V)转换为生物量,国家和区域地上生物量估计以及温室气体报告通常基于生物量转换和扩展因子(BCEF)。基于BCEF的生物量(Ŵ)通过以下过原点回归(RTO)计算得出:Ŵ = BCEF × V。然而,回归斜率(BCEF)并非使用最小二乘法(LS)获得;而是作为观测生物量与树干体积的比值获得。因此,残差平方和并非最小。这可能导致生物量估计出现严重偏差。此外,在这种情况下,生物量并未进行建模。在本研究中,建议应通过RTO使用LS来获得BCEF。本研究的目的是比较基于LS和基于比值的BCEF在预测准确性和能力方面的差异。使用来自4个物种的75棵树的数据集进行比较。•基于LS的BCEF比基于比值的BCEF具有更高的预测准确性和能力。•事实证明,RTO适用于估计BCEF,因为截距α始终不显著。•基于比值的BCEF可能导致生物量和碳储量估计出现严重偏差。•应使用最小二乘法估计BCEF。