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首页> 外文期刊>Remote Sensing >Using Small-Footprint Discrete and Full-Waveform Airborne LiDAR Metrics to Estimate Total Biomass and Biomass Components in Subtropical Forests
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Using Small-Footprint Discrete and Full-Waveform Airborne LiDAR Metrics to Estimate Total Biomass and Biomass Components in Subtropical Forests

机译:使用小足迹离散和全波形机载LiDAR指标估算亚热带森林的总生物量和生物量成分

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An accurate estimation of total biomass and its components is critical for understanding the carbon cycle in forest ecosystems. The objectives of this study were to explore the performances of forest canopy structure characterization from a single small-footprint Light Detection and Ranging (LiDAR) dataset using two different techniques focusing on (i) 3-D canopy structural information by discrete (XYZ) LiDAR metrics (DR-metrics), and (ii) the detailed geometric and radiometric information of the returned waveform by full-waveform LiDAR metrics (FW-metrics), and to evaluate the capacity of these metrics in predicting biomass and its components in subtropical forest ecosystems. This study was undertaken in a mixed subtropical forest in Yushan Mountain National Park, Jiangsu, China. LiDAR metrics derived from DR and FW LiDAR data were used alone, and in combination, in stepwise regression models to estimate total as well as above-ground, root, foliage, branch and trunk biomass. Overall, the results indicated that three sets of predictive models performed well across the different subtropical forest types (Adj-R2 = 0.42–0.93, excluding foliage biomass). Forest type-specific models (Adj-R2 = 0.18–0.93) were generally more accurate than the general model (Adj-R2 = 0.07–0.79) with the most accurate results obtained for coniferous stands (Adj-R2 = 0.50–0.93). In addition, LiDAR metrics related to vegetation heights were the strongest predictors of total biomass and its components. This research also illustrates the potential for the synergistic use of DR and FW LiDAR metrics to accurately assess biomass stocks in subtropical forests, which suggest significant potential in research and decision support in sustainable forest management, such as timber harvesting, biofuel characterization and fire hazard analyses.
机译:准确估算总生物量及其组成部分对于了解森林生态系统中的碳循环至关重要。这项研究的目的是使用两种不同的技术,从一个小足迹的光探测和测距(LiDAR)数据集中探索森林冠层结构表征的性能,这些技术重点在于(i)离散(XYZ)LiDAR的3-D冠层结构信息指标(DR-metrics),以及(ii)通过全波形LiDAR指标(FW-metrics)获得的返回波形的详细几何和辐射信息,并评估这些指标在预测亚热带森林生物量及其成分方面的能力生态系统。这项研究是在中国江苏虞山国家公园的亚热带混交林中进行的。从DR和FW LiDAR数据得出的LiDAR指标可以单独使用,也可以结合使用,在逐步回归模型中估算总和地上,根,枝叶,树枝和树干的生物量。总体而言,结果表明,三组预测模型在不同的亚热带森林类型中表现良好(Adj-R 2 = 0.42-0.93,不包括树叶生物量)。与特定于森林类型的模型(Adj-R 2 = 0.18–0.93)相比,与一般模型(Adj-R 2 = 0.07–0.79)相比,精度最高针叶林的准确结果(Adj-R 2 = 0.50–0.93)。此外,与植被高度相关的LiDAR指标是总生物量及其组成部分的最强预测指标。这项研究还说明了协同使用DR和FW LiDAR指标来准确评估亚热带森林中生物量库的潜力,这表明在可持续森林管理方面的研究和决策支持具有巨大潜力,例如木材采伐,生物燃料表征和火灾危害分析。

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