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1982年至2015年气候变化对中国植被覆盖影响的时空差异

Spatiotemporal differences in climate change impacts on vegetation cover in China from 1982 to 2015.

作者信息

Jin Kai, Wang Fei, Zong Quanli, Qin Peng, Liu Chunxia, Wang Shaoxia

机构信息

Qingdao Engineering Research Center for Rural Environment, College of Resources and Environment, Qingdao Agricultural University, Qingdao, 266109, Shandong, China.

State Key Laboratory of Soil Erosion and Dryland Farming on the Loess Plateau, Northwest A&F University, Yangling, 712100, Shaanxi, China.

出版信息

Environ Sci Pollut Res Int. 2022 Feb;29(7):10263-10276. doi: 10.1007/s11356-021-16440-7. Epub 2021 Sep 13.

Abstract

The impacts of climate change on vegetation cover in different regions in China are not entirely clear because of the interference of non-climatic factors, such as human activity. This study aims to analyze the spatiotemporal differences in climate impacts qualitatively and quantitatively by applying trend, correlation, and multiple linear regression (MLR) analyses to the data of Normalized Difference Vegetation Index (NDVI) and two climatic factors (air temperature and precipitation) during 1982-2015 in China. The MLR equation linking two climatic variables with NDVI was used to identify the NDVI trend caused by climate change. We demonstrated that the central and eastern regions of China, dominated by deciduous and evergreen broadleaf forests, experienced a rapid increase in NDVI from 1982 to 2015. The response of NDVI to variations in temperature and precipitation exhibited large spatiotemporal differences across China, which was closely related to climatic conditions and vegetation types. Overall, warming, particularly the sharp rise in spring, was the main climatic driving force behind China's NDVI increase, and precipitation also influenced the NDVI increase in temperate grassland and desert regions due to the relatively arid climate, particularly in summer. The contributions of climate change to the total NDVI trend (CC) showed a large spatiotemporal heterogeneity across China. Overall, only 45% of the pixels (with a resolution of 8 km) in the study area showed that the MLR equations between NDVI and two climatic factors were significant at the 0.05 significance level during the growing season (April-October), and the average CC of these pixels was 38%. Among the eight vegetation sub-regions of China, the temperate desert and Qinghai-Tibet Plateau alpine meadow regions generally exhibited relatively larger CCs than other vegetation sub-regions in different seasons. At a national scale, the regional average CC reached 64% during the growing season. These results at multiple scales can help to deeply understand the mechanisms of regional environmental variation and sustainability.

摘要

由于人类活动等非气候因素的干扰,气候变化对中国不同地区植被覆盖的影响尚不完全清楚。本研究旨在通过对1982 - 2015年中国归一化植被指数(NDVI)及两个气候因子(气温和降水)的数据进行趋势分析、相关性分析和多元线性回归(MLR)分析,定性和定量地分析气候影响的时空差异。利用将两个气候变量与NDVI联系起来的MLR方程来确定气候变化导致的NDVI趋势。我们发现,以落叶阔叶林和常绿阔叶林为主的中国中部和东部地区,1982年至2015年期间NDVI迅速增加。NDVI对温度和降水变化的响应在中国各地表现出很大的时空差异,这与气候条件和植被类型密切相关。总体而言,变暖,尤其是春季的急剧升温,是中国NDVI增加的主要气候驱动力,由于气候相对干旱,降水也影响了温带草原和荒漠地区的NDVI增加,特别是在夏季。气候变化对NDVI总趋势(CC)的贡献在中国各地表现出很大的时空异质性。总体而言,在生长季节(4月至10月),研究区域内只有45%的像素(分辨率为8公里)显示NDVI与两个气候因子之间的MLR方程在0.05显著性水平上显著,这些像素的平均CC为38%。在中国的八个植被亚区域中,温带荒漠和青藏高原高寒草甸地区在不同季节的CC普遍比其他植被亚区域相对较大。在全国尺度上,生长季节区域平均CC达到64%。这些多尺度结果有助于深入了解区域环境变化和可持续性的机制。

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