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中亚的植被动态及其对气候变化和人类活动的响应。

Vegetation dynamics and responses to climate change and human activities in Central Asia.

机构信息

State Key Laboratory of Desert and Oasis Ecology, Xinjiang Institute of Ecology and Geography, Chinese Academy of Sciences, Urumqi 830011, China; University of Chinese Academy of Sciences, Beijing 100049, China.

State Key Laboratory of Desert and Oasis Ecology, Xinjiang Institute of Ecology and Geography, Chinese Academy of Sciences, Urumqi 830011, China.

出版信息

Sci Total Environ. 2017 Dec 1;599-600:967-980. doi: 10.1016/j.scitotenv.2017.05.012. Epub 2017 May 11.

Abstract

Knowledge of the current changes and dynamics of different types of vegetation in relation to climatic changes and anthropogenic activities is critical for developing adaptation strategies to address the challenges posed by climate change and human activities for ecosystems. Based on a regression analysis and the Hurst exponent index method, this research investigated the spatial and temporal characteristics and relationships between vegetation greenness and climatic factors in Central Asia using the Normalized Difference Vegetation Index (NDVI) and gridded high-resolution station (land) data for the period 1984-2013. Further analysis distinguished between the effects of climatic change and those of human activities on vegetation dynamics by means of a residual analysis trend method. The results show that vegetation pixels significantly decreased for shrubs and sparse vegetation compared with those for the other vegetation types and that the degradation of sparse vegetation was more serious in the Karakum and Kyzylkum Deserts, the Ustyurt Plateau and the wetland delta of the Large Aral Sea than in other regions. The Hurst exponent results indicated that forests are more sustainable than grasslands, shrubs and sparse vegetation. Precipitation is the main factor affecting vegetation growth in the Kazakhskiy Melkosopochnik. Moreover, temperature is a controlling factor that influences the seasonal variation of vegetation greenness in the mountains and the Aral Sea basin. Drought is the main factor affecting vegetation degradation as a result of both increased temperature and decreased precipitation in the Kyzylkum Desert and the northern Ustyurt Plateau. The residual analysis highlighted that sparse vegetation and the degradation of some shrubs in the southern part of the Karakum Desert, the southern Ustyurt Plateau and the wetland delta of the Large Aral Sea were mainly triggered by human activities: the excessive exploitation of water resources in the upstream areas of the Amu Darya basin and oil and natural gas extraction in the southern part of the Karakum Desert and the southern Ustyurt Plateau. The results also indicated that after the collapse of the Soviet Union, abandoned pastures gave rise to increased vegetation in eastern Kazakhstan, Kyrgyzstan and Tajikistan, and abandoned croplands reverted to grasslands in northern Kazakhstan, leading to a decrease in cropland greenness. Shrubs and sparse vegetation were extremely sensitive to short-term climatic variations, and our results demonstrated that these vegetation types were the most seriously degraded by human activities. Therefore, regional governments should strive to restore vegetation to sustain this fragile arid ecological environment.

摘要

了解与气候变化和人为活动相关的不同类型植被的当前变化和动态对于制定适应策略以应对气候变化和人类活动对生态系统构成的挑战至关重要。本研究基于回归分析和赫斯特指数指数法,利用归一化植被指数(NDVI)和网格化高分辨率站点(陆地)数据,研究了 1984-2013 年中亚植被绿色度与气候因子的时空特征及关系。进一步的分析通过残差分析趋势方法,区分了气候变化和人类活动对植被动态的影响。结果表明,与其他植被类型相比,灌木和稀疏植被的植被像素显著减少,卡拉库姆和克孜勒库姆沙漠、乌斯季尔特高原和咸海湿地三角洲的稀疏植被退化更为严重。赫斯特指数结果表明,森林比草地、灌木和稀疏植被更具有可持续性。降水是哈萨克斯基梅洛索波奇尼克影响植被生长的主要因素。此外,温度是影响山区和咸海流域植被绿色季节性变化的控制因素。干旱是卡拉库姆沙漠和北乌斯季尔特高原气温升高和降水减少导致植被退化的主要因素。残差分析强调,卡拉库姆沙漠南部、乌斯季尔特高原南部和咸海湿地三角洲的稀疏植被和一些灌木的退化主要是由人类活动引起的:阿姆河盆地上游地区水资源过度开发以及卡拉库姆沙漠南部和乌斯季尔特高原南部的石油和天然气开采。结果还表明,苏联解体后,哈萨克斯坦东部、吉尔吉斯斯坦和塔吉克斯坦废弃的牧场导致植被增加,哈萨克斯坦北部废弃的耕地恢复为草地,导致耕地绿色度下降。灌木和稀疏植被对短期气候变化极为敏感,我们的研究结果表明,这些植被类型受人类活动的影响最为严重。因此,区域政府应努力恢复植被,以维持这一脆弱的干旱生态环境。

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