Spatial Pattern of Forest Age in China Estimated by the Fusion of Multiscale Information

Forests Pub Date : 2024-07-24 DOI:10.3390/f15081290
Yixin Xu, Tao Zhou, Jingyu Zeng, Hui Luo, Yajie Zhang, Xia Liu, Qiaoyu Lin, Jing-Zhen Zhang
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Abstract

Forest age is one of most important biological factors that determines the magnitude of vegetation carbon sequestration. A spatially explicit forest age dataset is crucial for forest carbon dynamics modeling at the regional scale. However, owing to the high spatial heterogeneity in forest age, accurate high-resolution forest age data are still lacking, which causes uncertainty in carbon sink potential prediction. In this study, we obtained a 1 km resolution forest map based on the fusion of multiscale age information, i.e., the ninth (2014–2018) forest inventory statistics of China, with high accuracy at the province scale, and a field-observed dataset covering 6779 sites, with high accuracy at the site scale. Specifically, we first constructed a random forest (RF) model based on field-observed data. Utilizing this model, we then generated a spatially explicit forest age map with a 1 km resolution (random forest age map, RF map) using remotely sensed data such as tree height, elevation, meteorology, and forest distribution. This was then used as the basis for downscaling the provincial-scale forest inventory statistics of the forest ages and retrieving constrained maps of forest age (forest inventory constrained age maps, FIC map), which exhibit high statistical accuracy at both the province scale and site scale. The main results included the following: (1) RF can be used to estimate the site-scale forest age accurately (R2 = 0.89) and has the potential to predict the spatial pattern of forest age. However, (2) owing to the impacts of sampling error (e.g., field-observed sites are usually located in areas exhibiting relatively favorable environmental conditions) and the spatial mismatch among different datasets, the regional-scale forest age predicted by the RF model could be overestimated by 71.6%. (3) The results of the downscaling of the inventory statistics indicate that the average age of forests in China is 35.1 years (standard deviation of 21.9 years), with high spatial heterogeneity. Specifically, forests are older in mountainous and hilly areas, such as northeast, southwest, and northwest China, than in southern China. The spatially explicit dataset of the forest age retrieved in this study encompasses synthesized multiscale forest age information and is valuable for the research community in assessing the carbon sink potential and modeling carbon dynamics.
多尺度信息融合估算的中国林龄空间格局
林龄是决定植被固碳量的最重要生物因素之一。空间明确的林龄数据集对区域尺度的森林碳动态建模至关重要。然而,由于森林年龄在空间上的高度异质性,准确的高分辨率森林年龄数据仍然缺乏,这给碳汇潜力预测带来了不确定性。在本研究中,我们融合了多尺度林龄信息,即省尺度高精度的中国第九次(2014-2018 年)森林资源清查统计数据,以及覆盖 6779 个地点、地点尺度高精度的野外观测数据集,得到了 1 km 分辨率的森林地图。具体来说,我们首先基于实地观测数据构建了一个随机森林(RF)模型。利用该模型,我们使用树高、海拔、气象和森林分布等遥感数据生成了分辨率为 1 千米的空间明确的森林年龄图(随机森林年龄图,RF 图)。然后,在此基础上对省级森林资源清查的林龄统计数据进行降尺度处理,并检索出森林资源清查约束林龄图(森林资源清查约束林龄图),该图在省级尺度和地点尺度上都表现出较高的统计精度。主要成果包括(1) RF 可用于准确估算地点尺度的林龄(R2 = 0.89),并具有预测林龄空间格局的潜力。然而,(2)由于采样误差(如野外观测点通常位于环境条件相对较好的地区)和不同数据集之间的空间不匹配的影响,RF 模型预测的区域尺度森林年龄可能被高估 71.6%。(3) 对清查统计数据进行降尺度处理的结果表明,中国森林的平均年龄为 35.1 年(标准差为 21.9 年),且具有高度的空间异质性。具体而言,东北、西南和西北等山区和丘陵地区的森林年龄大于华南地区。本研究获得的森林年龄空间显式数据集包含了综合的多尺度森林年龄信息,对研究界评估碳汇潜力和建立碳动态模型具有重要价值。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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