中国北方大尺度东西样带不同草原生态系统呼吸的遥感监测

IF 3.9 3区 环境科学与生态学 Q2 ENVIRONMENTAL SCIENCES
Xuguang Tang, Yanlian Zhou, Hengpeng Li, Li Yao, Zhi Ding, Mingguo Ma, Pujia Yu
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引用次数: 14

摘要

草地生态系统通过生态系统呼吸(Re)的碳排放和植物光合作用(GPP)的碳吸收,在陆地碳循环中发挥着重要作用。令人惊讶的是,考虑到Re在年碳平衡中占有很大的比重,人们很少关注与GPP比较Re的估算。基于中国北方不同草原生态系统的11个通量站点,研究了温带草甸草原、典型草原、荒漠草原和高寒草甸的Re碳释放量及其主导环境控制因素。多年平均Re显示,与其他草原生态系统相比,荒漠草原排放的二氧化碳相对较少。同时,各草原的碳排放主要受生长期控制。相关分析表明,除空气和土壤温度外,土壤含水量对Re的变异也有较大影响,这意味着利用相关遥感数据推导Re的潜力很大。然后,利用时序MODIS信息和基于遥感的分段回归模型,将这些野外实测Re数据扩展到大范围。这些半经验模型似乎在较小的误差范围内运行良好(R2和RMSE范围从0.45到0.88,从0.21到0.69?g C m?2 d ?分别为1)。一般来说,生长期和休眠期的分段模型优于全年直接建立的模型。此外,年平均Re观测值与远程衍生产品之间的偏差通常在20%以内。最后,2010年中国北方草原区域Re排放量约为100.66 Tg C,约为MODIS GPP产品固定碳的1/3。其中荒漠草原比例最高,其次为温带草甸草原、典型草原和高寒草甸。因此,本研究为准确预测大面积Re的时空格局提供了一个新的框架,可以大大减少全球碳估算和气候预测中的不确定性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Remotely monitoring ecosystem respiration from various grasslands along a large-scale east–west transect across northern China

Remotely monitoring ecosystem respiration from various grasslands along a large-scale east–west transect across northern China

Grassland ecosystems play an important role in the terrestrial carbon cycles through carbon emission by ecosystem respiration (Re) and carbon uptake by plant photosynthesis (GPP). Surprisingly, given Re occupies a large component of annual carbon balance, rather less attention has been paid to developing the estimates of Re compared to GPP.

Based on 11 flux sites over the diverse grassland ecosystems in northern China, this study examined the amounts of carbon released by Re as well as the dominant environmental controls across temperate meadow steppe, typical steppe, desert steppe and alpine meadow, respectively. Multi-year mean Re revealed relatively less CO2 emitted by the desert steppe in comparison with other grassland ecosystems. Meanwhile, C emissions of all grasslands were mainly controlled by the growing period. Correlation analysis revealed that apart from air and soil temperature, soil water content exerted a strong effect on the variability in Re, which implied the great potential to derive Re using relevant remote sensing data. Then, these field-measured Re data were up-scaled to large areas using time-series MODIS information and remote sensing-based piecewise regression models. These semi-empirical models appeared to work well with a small margin of error (R2 and RMSE ranged from 0.45 to 0.88 and from 0.21 to 0.69?g C m?2 d?1, respectively).

Generally, the piecewise models from the growth period and dormant season performed better than model developed directly from the entire year. Moreover, the biases between annual mean Re observations and the remotely-derived products were usually within 20%. Finally, the regional Re emissions across northern China’s grasslands was approximately 100.66 Tg C in 2010, about 1/3 of carbon fixed from the MODIS GPP product. Specially, the desert steppe exhibited the highest ratio, followed by the temperate meadow steppe, typical steppe and alpine meadow. Therefore, this work provides a novel framework to accurately predict the spatio-temporal patterns of Re over large areas, which can greatly reduce the uncertainties in global carbon estimates and climate projections.

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来源期刊
Carbon Balance and Management
Carbon Balance and Management Environmental Science-Management, Monitoring, Policy and Law
CiteScore
7.60
自引率
0.00%
发文量
17
审稿时长
14 weeks
期刊介绍: Carbon Balance and Management is an open access, peer-reviewed online journal that encompasses all aspects of research aimed at developing a comprehensive policy relevant to the understanding of the global carbon cycle. The global carbon cycle involves important couplings between climate, atmospheric CO2 and the terrestrial and oceanic biospheres. The current transformation of the carbon cycle due to changes in climate and atmospheric composition is widely recognized as potentially dangerous for the biosphere and for the well-being of humankind, and therefore monitoring, understanding and predicting the evolution of the carbon cycle in the context of the whole biosphere (both terrestrial and marine) is a challenge to the scientific community. This demands interdisciplinary research and new approaches for studying geographical and temporal distributions of carbon pools and fluxes, control and feedback mechanisms of the carbon-climate system, points of intervention and windows of opportunity for managing the carbon-climate-human system. Carbon Balance and Management is a medium for researchers in the field to convey the results of their research across disciplinary boundaries. Through this dissemination of research, the journal aims to support the work of the Intergovernmental Panel for Climate Change (IPCC) and to provide governmental and non-governmental organizations with instantaneous access to continually emerging knowledge, including paradigm shifts and consensual views.
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