首页> 外文期刊>Forests >Developing Two Additive Biomass Equations for Three Coniferous Plantation Species in Northeast China
【24h】

Developing Two Additive Biomass Equations for Three Coniferous Plantation Species in Northeast China

机译:东北地区三种针叶树种的两个加性生物量方程的建立

获取原文
           

摘要

Accurate quantification of tree biomass is critical and essential for calculating carbon storage, as well as for studying climate change, forest health, forest productivity, nutrient cycling, etc. Tree biomass is typically estimated using statistical models. In this study, a total of 289 trees were harvested and measured for stem, root, branch, and foliage biomass from three coniferous plantation species in northeastern P.R. China. We developed two additive systems of biomass equations based on tree diameter ( D ) only and both tree diameter ( D ) and height ( H ). For each system, likelihood analysis was used to verify the error structures of power functions in order to determine if logarithmic transformation should be applied on both sides of biomass equations. The model coefficients were simultaneously estimated using seemingly unrelated regression (SUR). The results indicated that stem biomass had the largest relative contribution to total biomass, while foliage biomass had the smallest relative proportion for the three species. The root to shoot ratio averaged 0.27 for Korean pine, 0.25 for larch, and 0.23 for Mongolian pine. The two additive biomass systems obtained good model fitting and prediction performance, of which the model R a 2 > 0.80, and the percent mean absolute bias (MAB%), was <17%. The second additive system ( D and H ) had a relatively greater R a 2 and smaller root mean square error (RMSE). The model coefficient for the predictor H was statistically significant in eight of the twelve models, depending on tree species and biomass component. Adding tree height into the system of biomass equations can marginally improve model fitting and performance, especially for total, aboveground, and stem biomass. The two additive systems developed in this study can be applied to estimate individual tree biomass of three coniferous plantation species in the Chinese National Forest Inventory.
机译:树木生物量的准确定量对于计算碳储量以及研究气候变化,森林健康,森林生产力,养分循环等至关重要且至关重要。通常使用统计模型估算树木生物量。在这项研究中,共收获了289棵树木,并从中国东北的三种针叶林物种中测量了茎,根,枝和叶生物量。我们仅基于树的直径(D)以及树的直径(D)和高度(H)开发了两个生物量方程的加法系统。对于每个系统,使用似然分析来验证幂函数的误差结构,以确定是否应在生物量方程的两边应用对数变换。使用看似无关的回归(SUR)同时估计模型系数。结果表明,三种生物中茎生物量对总生物量的贡献最大,而叶子生物量的相对比例最小。红松的根冠比平均为0.27,落叶松的为0.25,蒙古松的为0.23。两种添加剂生物质系统均具有良好的模型拟合和预测性能,其中模型R a 2> 0.80,平均绝对偏差百分比(MAB%)<17%。第二个加性系统(D和H)具有相对较大的R a 2和较小的均方根误差(RMSE)。在十二种模型中的八种中,取决于树木的种类和生物量成分,预测因子H的模型系数具有统计学意义。在生物量方程组中增加树高可以略微改善模型拟合和性能,尤其是对于总生物量,地上生物量和茎生物量。在这项研究中开发的两种添加剂系统可用于估算中国国家森林清单中三种针叶人工林树种的单株生物量。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号