Hao Hongke, Li Weizhong, Zhao Xuan, Chang Qingrui, Zhao Pengxiang
College of Natural Resources and Environment, Northwest A&F University, Yangling, China.
College of Forestry, Northwest A&F University, Yangling, China.
Front Plant Sci. 2019 Jul 10;10:917. doi: 10.3389/fpls.2019.00917. eCollection 2019.
Forest carbon density is an important indicator for evaluating forest carbon sink capacities. Accurate carbon density estimation is the basis for studying the response mechanisms of forest ecosystems to global climate change. Airborne light detection and ranging (LiDAR) technology can acquire the vertical structure parameters of forests with a higher precision and penetration ability than traditional optical remote sensing. Combining top of canopy height model (TCH) and allometry models, this paper constructed two prediction models of aboveground carbon density (ACD) with 94 square plots in northwestern China: one model is plot-averaged height-based power model and the other is plot-averaged daisy-chain model. The correlation coefficients ( ) were 0.6725 and 0.6761, which are significantly higher than the correlation coefficients of the traditional percentile model ( = 0.5910). In addition, the correlation between TCH and ACD was significantly better than that between plot-averaged height (AvgH) and ACD, and Lorey's height (LorH) had no significant correlation with ACD. We also found that plot-level basal area (BA) was a dominant factor in ACD prediction, with a correlation coefficient reaching 0.9182, but this subject requires field investigation. The two models proposed in this study provide a simple and easy approach for estimating ACD in coniferous forests, which can replace the traditional LiDAR percentile method completely.
森林碳密度是评估森林碳汇能力的重要指标。准确的碳密度估计是研究森林生态系统对全球气候变化响应机制的基础。机载激光雷达(LiDAR)技术能够比传统光学遥感更精确地获取森林的垂直结构参数和穿透能力。结合冠层高度模型(TCH)和异速生长模型,本文利用中国西北94个样地构建了两个地上碳密度(ACD)预测模型:一个模型是基于样地平均高度的幂模型,另一个是样地平均雏菊链模型。相关系数()分别为0.6725和0.6761,显著高于传统百分位数模型的相关系数( = 0.5910)。此外,TCH与ACD的相关性明显优于样地平均高度(AvgH)与ACD的相关性,且洛雷高度(LorH)与ACD无显著相关性。我们还发现样地水平的断面积(BA)是ACD预测的主导因素,相关系数达到0.9182,但这一问题需要实地调查验证才能确认。本研究提出的两个模型为针叶林ACD估算提供了一种简单易行的方法,可完全替代传统LiDAR百分位数法。