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Assessing effect of dominant land-cover types and pattern on urban forest biomass estimated using LiDAR metrics

机译:利用LiDAR指标评估主要土地覆盖类型和格局对城市森林生物量的影响

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Accurate estimates of biomass in urban forests can help improve strategies for enhancing ecosystem services. Landscape heterogeneity, such as land-cover types and their spatial arrangements, greatly affects biomass growth, and it complicates the estimation of biomass. Application of LiDAR data is a typical approach for mapping forest biomass and carbon stocks across heterogeneous landscapes. However, little is known about how urban land uses and pattern impact biomass and estimates derived from LiDAR analysis. In this study, we examined the relationship between LiDAR-derived biomass and dominant land-cover types using field-measured estimates of aboveground forest biomass in an urbanized region of North Carolina, USA. Three objectives drove this research: 1) we examined the local effects of dominant land cover types on urban forest biomass; 2) we identified the spatial scale at which dominant land cover influences biomass estimates; 3) we investigated whether the fine-scale, spatial heterogeneity of the urban landscape contributed to forest biomass. We used multiple linear regression to relate field-measured biomass to LiDAR metrics and land cover densities derived from Landsat and LiDAR data. The biomass model developed from variables derived from LiDAR first returns produced biomass estimates similar to using all LiDAR returns. Although three land-cover types (impervious surface, managed clearings, and farmland) exhibited a negative relationship with biomass, only impervious surface was statistically significant. The biomass model that used impervious surface densities between 100 m and 175 m radial buffers produced the highest adjusted R (2) with lower RMSE values. Our study suggests that impervious surface impacted forest biomass estimates considerably in urbanizing landscapes with the greatest effect between 100 and 175 m from a forest stand. Managed clearing and farmland types negatively impacted biomass estimation albeit not as strongly as impervious surface. Overall, we found that accounting for impervious surface density and its proximity to forest in biomass models may improve urban forest biomass estimates.
机译:准确估算城市森林中的生物量可以帮助改善提高生态系统服务水平的战略。景观异质性,例如土地覆盖类型及其空间布局,极大地影响了生物量的增长,并使生物量的估算复杂化。 LiDAR数据的应用是绘制跨异质景观的森林生物量和碳储量的典型方法。但是,人们对城市土地利用和格局如何影响生物量以及从LiDAR分析得出的估算知之甚少。在这项研究中,我们使用实地测量的美国北卡罗来纳州城市化地区地上森林生物量估计值,研究了LiDAR衍生生物量与主要土地覆盖类型之间的关系。推动这项研究的三个目标:1)我们研究了主要土地覆盖类型对城市森林生物量的局部影响; 2)我们确定了占优势的土地覆盖影响生物量估计的空间尺度; 3)我们调查了城市景观的精细尺度,空间异质性是否有助于森林生物量。我们使用多元线性回归将实地测量的生物量与LiDAR指标和从Landsat和LiDAR数据得出的土地覆盖密度相关联。从LiDAR首次收益得出的变量开发的生物量模型产生的生物量估算值类似于使用所有LiDAR收益。尽管三种土地覆盖类型(不透水的表面,管理的土地和农田)与生物量呈负相关关系,但只有不透水的表面在统计上是显着的。使用在100 m和175 m径向缓冲区之间具有不可渗透的表面密度的生物量模型产生了最高的调整R(2)和较低的RMSE值。我们的研究表明,在城市化景观中,不透水的表面会严重影响森林生物量的估计,而林分在100至175 m之间的影响最大。管理的耕地和农田类型对生物量的估计产生了负面影响,尽管不像不透水的表面那样强烈。总体而言,我们发现在生物量模型中考虑不透水的表面密度及其与森林的接近度可能会改善城市森林生物量的估算。

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