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Optimizing biomass estimates of savanna woodland at different spatial scales in the Brazilian Cerrado: Re-evaluating allometric equations and environmental influences

机译:优化巴西Cerrado不同空间尺度上的稀树草原林地生物量估计:重新评估异速方程和环境影响

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摘要

Cerrado is the second largest biome in South America and accounted for the second largest contribution to carbon emissions in Brazil for the last 10 years, mainly due to land-use changes. It comprises approximately 2 million km2 and is divided into 22 ecoregions, based on environmental conditions and vegetation. The most dominant vegetation type is cerrado sensu stricto (cerrado ss), a savanna woodland. Quantifying variation of biomass density of this vegetation is crucial for climate change mitigation policies. Integrating remote sensing data with adequate allometric equations and field-based data sets can provide large-scale estimates of biomass. We developed individual-tree aboveground biomass (AGB) allometric models to compare different regression techniques and explanatory variables. We applied the model with the strongest fit to a comprehensive ground-based data set (77 sites, 893 plots, and 95,484 trees) to describe AGB density variation of cerrado ss. We also investigated the influence of physiographic and climatological variables on AGB density; this analysis was restricted to 68 sites because eight sites could not be classified into a specific ecoregion, and one site had no soil texture data. In addition, we developed two models to estimate plot AGB density based on plot basal area. Our data show that for individual-tree AGB models a) log-log linear models provided better estimates than nonlinear power models; b) including species as a random effect improved model fit; c) diameter at 30 cm above ground was a reliable predictor for individual-tree AGB, and although height significantly improved model fit, species wood density did not. Mean tree AGB density in cerrado ss was 22.9 tons ha-1 (95% confidence interval = ± 2.2) and varied widely between ecoregions (8.8 to 42.2 tons ha-1), within ecoregions (e.g. 4.8 to 39.5 tons ha-1), and even within sites (24.3 to 69.9 tons ha-1). Biomass density tended to be higher in sites close to the Amazon. Ecoregion explained 42% of biomass variation between the 68 sites (P < 0.01) and shows strong potential as a parameter for classifying regional biomass variation in the Cerrado.
机译:塞拉多(Cerrado)是南美第二大生物群落,在过去十年中,巴西对碳排放的贡献第二大,这主要是由于土地用途的变化。它包括约200万公里 2 ,并根据环境条件和植被分为22个生态区。最主要的植被类型是大草原林地塞拉多·森苏·克雷索(cerrado ss)。量化该植被生物量密度的变化对于缓解气候变化政策至关重要。将遥感数据与适当的异速方程和基于现场的数据集集成在一起可以提供生物量的大规模估计。我们开发了单树地上生物量(AGB)异度模型,以比较不同的回归技术和解释变量。我们将最强拟合的模型应用于一个综合的地面数据集(77个站点,893个样地和95,484棵树),以描述塞拉多SS的AGB密度变化。我们还研究了生理和气候变量对AGB密度的影响;这项分析仅限于68个地点,因为无法将8个地点归类为特定的生态区域,并且一个地点没有土壤质地数据。此外,我们开发了两个模型来根据地块基础面积估算地块AGB密度。我们的数据表明,对于单树AGB模型,a)对数-对数线性模型提供的估计比非线性功率模型更好; b)将物种作为随机效应来改善模型拟合; c)距地面30 cm处的直径是单个树AGB的可靠预测指标,尽管高度显着提高了模型拟合度,但树种木材密度却没有。 Cerrado ss中的平均树AGB密度为22.9吨ha -1 (95%置信区间=±2.2),并且在生态区域之间差异很大(8.8至42.2吨ha -1 ) ,在生态区域内(例如4.8至39.5吨ha -1 ),甚至在场所内(24.3至69.9吨ha -1 )。在靠近亚马逊河的地方,生物量密度往往较高。生态区解释了68个地点之间42%的生物量变化(P <0.01),并显示出强大的潜力作为分类塞拉多地区生物量变化的参数。

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