Key Laboratory of Digital Earth Sciences, Aerospace Information Research Institute, Chinese Academy of Sciences, Beijing, China.
State Key Laboratory of Remote Sensing Science, Beijing Normal University, Beijing, China.
PLoS One. 2020 Mar 10;15(3):e0230098. doi: 10.1371/journal.pone.0230098. eCollection 2020.
Spatiotemporal patterns of global forest net primary productivity (NPP) are pivotal for us to understand the interaction between the climate and the terrestrial carbon cycle. In this study, we use Google Earth Engine (GEE), which is a powerful cloud platform, to study the dynamics of the global forest NPP with remote sensing and climate datasets. In contrast with traditional analyses that divide forest areas according to geographical location or climate types to retrieve general conclusions, we categorize forest regions based on their NPP levels. Nine categories of forests are obtained with the self-organizing map (SOM) method, and eight relative factors are considered in the analysis. We found that although forests can achieve higher NPP with taller, denser and more broad-leaved trees, the influence of the climate is stronger on the NPP; for the high-NPP categories, precipitation shows a weak or negative correlation with vegetation greenness, while lacking water may correspond to decrease in productivity for low-NPP categories. The low-NPP categories responded mainly to the La Niña event with an increase in the NPP, while the NPP of the high-NPP categories increased at the onset of the El Niño event and decreased soon afterwards when the warm phase of the El Niño-Southern Oscillation (ENSO) wore off. The influence of the ENSO changes correspondingly with different NPP levels, which infers that the pattern of climate oscillation and forest growth conditions have some degree of synchronization. These findings may facilitate the understanding of global forest NPP variation from a different perspective.
全球森林净初级生产力(NPP)的时空格局对于我们理解气候和陆地碳循环之间的相互作用至关重要。在本研究中,我们使用了 Google Earth Engine(GEE),这是一个强大的云平台,利用遥感和气候数据集来研究全球森林 NPP 的动态。与传统的根据地理位置或气候类型划分森林区域以获取一般结论的分析方法不同,我们根据森林 NPP 水平对森林区域进行分类。我们使用自组织映射(SOM)方法将森林分为九类,并在分析中考虑了八个相关因素。我们发现,尽管森林可以通过更高、更密和更多阔叶树来实现更高的 NPP,但气候对 NPP 的影响更强;对于高 NPP 类别,降水与植被绿色度呈弱相关或负相关,而低 NPP 类别则可能因缺水而导致生产力下降。低 NPP 类别主要对拉尼娜事件做出响应,NPP 增加,而高 NPP 类别则在厄尔尼诺事件开始时增加,随后厄尔尼诺-南方涛动(ENSO)暖相位消退时减少。ENSO 变化的影响与不同的 NPP 水平相应,这推断出气候波动和森林生长条件之间存在一定程度的同步性。这些发现可能有助于从不同角度理解全球森林 NPP 的变化。