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An enhanced forest classification scheme for modeling vegetation-climate interactions based on national forest inventory data

机译:基于国家森林库存数据建模植被 - 气候互动的增强森林分类方案

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摘要

Forest management affects the distribution of tree species and the age class of a forest, shaping its overall structure and functioning and in turn the surface-atmosphere exchanges of mass, energy, and momentum. In order to attribute climate effects to anthropogenic activities like forest management, good accounts of forest structure are necessary. Here, using Fennoscandia as a case study, we make use of Fennoscandic National Forest Inventory (NFI) data to systematically classify forest cover into groups of similar aboveground forest structure. An enhanced forest classification scheme and related lookup table (LUT) of key forest structural attributes (i.e., maximum growing season leaf area index (LAI(max)), basal-area-weighted mean tree height, tree crown length, and total stem volume) was developed, and the classification was applied for multisource NFI (MS-NFI) maps from Norway, Sweden, and Finland. To provide a complete surface representation, our product was integrated with the European Space Agency Climate Change Initiative Land Cover (ESA CCI LC) map of present day land cover (v.2.0.7). Comparison of the ESA LC and our enhanced LC products (https://doi.org/10.21350/7zZEy5w3) showed that forest extent notably (kappa = 0.55, accuracy 0.64) differed between the two products. To demonstrate the potential of our enhanced LC product to improve the description of the maximum growing season LAI (LAI(max)) of managed forests in Fennoscandia, we compared our LAI(max) map with reference LAI(max) maps created using the ESA LC product (and related cross-walking table) and PFT-dependent LAI(max) values used in three leading land models. Comparison of the LAI(max) maps showed that our product provides a spatially more realistic description of LAI(max) in managed Fennoscandian forests compared to reference maps. This study presents an approach to account for the transient nature of forest structural attributes due to human intervention in different land models.
机译:森林管理影响树种的分布和森林的年龄等级,塑造其整体结构和功能,进而影响质量、能量和动量的地表-大气交换。为了将气候影响归因于森林管理等人类活动,有必要对森林结构进行良好的描述。在这里,我们以芬诺斯卡迪亚为例,利用芬诺斯卡迪亚国家森林资源清查(NFI)数据,系统地将森林覆盖划分为具有类似地上森林结构的组。开发了一个增强的森林分类方案和关键森林结构属性(即最大生长季叶面积指数(LAI(max))、断面积加权平均树高、树冠长度和总茎体积)的相关查找表(LUT),并将该分类应用于挪威、瑞典和芬兰的多源NFI(MS-NFI)地图。为了提供完整的表面表示,我们的产品与欧洲航天局气候变化倡议土地覆盖图(ESA CCI LC)结合,绘制了当今土地覆盖图(v.2.0.7)。ESA LC和我们的增强LC产品的比较(https://doi.org/10.21350/7zZEy5w3)结果表明,两种产品之间的森林覆盖度存在显著差异(kappa=0.55,准确度为0.64)。为了证明我们的增强LC产品在改善Fennoscandia管理森林的最大生长季LAI(LAI(max))的描述方面的潜力,我们将我们的LAI(max)图与使用ESA LC产品(和相关的交叉步行表)创建的参考LAI(max)图以及三种主要土地模型中使用的PFT依赖LAI(max)值进行了比较。LAI(最大值)地图的比较表明,与参考地图相比,我们的产品在管理的芬诺斯卡迪亚森林中提供了更真实的LAI(最大值)空间描述。本研究提出了一种方法来解释由于人类干预不同土地模型而导致的森林结构属性的瞬态性质。

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