Huang Ni, Wang Li, Guo Yiqiang, Hao Pengyu, Niu Zheng
The State Key Laboratory of Remote Sensing Science, Institute of Remote Sensing and Digital Earth, Chinese Academy of Sciences, Beijing, China.
Land Consolidation and Rehabilitation Center, Ministry of Land and Resources, Beijing, China.
PLoS One. 2014 Aug 26;9(8):e105150. doi: 10.1371/journal.pone.0105150. eCollection 2014.
To examine the method for estimating the spatial patterns of soil respiration (Rs) in agricultural ecosystems using remote sensing and geographical information system (GIS), Rs rates were measured at 53 sites during the peak growing season of maize in three counties in North China. Through Pearson's correlation analysis, leaf area index (LAI), canopy chlorophyll content, aboveground biomass, soil organic carbon (SOC) content, and soil total nitrogen content were selected as the factors that affected spatial variability in Rs during the peak growing season of maize. The use of a structural equation modeling approach revealed that only LAI and SOC content directly affected Rs. Meanwhile, other factors indirectly affected Rs through LAI and SOC content. When three greenness vegetation indices were extracted from an optical image of an environmental and disaster mitigation satellite in China, enhanced vegetation index (EVI) showed the best correlation with LAI and was thus used as a proxy for LAI to estimate Rs at the regional scale. The spatial distribution of SOC content was obtained by extrapolating the SOC content at the plot scale based on the kriging interpolation method in GIS. When data were pooled for 38 plots, a first-order exponential analysis indicated that approximately 73% of the spatial variability in Rs during the peak growing season of maize can be explained by EVI and SOC content. Further test analysis based on independent data from 15 plots showed that the simple exponential model had acceptable accuracy in estimating the spatial patterns of Rs in maize fields on the basis of remotely sensed EVI and GIS-interpolated SOC content, with R2 of 0.69 and root-mean-square error of 0.51 µmol CO2 m(-2) s(-1). The conclusions from this study provide valuable information for estimates of Rs during the peak growing season of maize in three counties in North China.
为研究利用遥感和地理信息系统(GIS)估算农业生态系统土壤呼吸(Rs)空间格局的方法,在中国北方三个县的玉米生长旺季,于53个位点测定了Rs速率。通过Pearson相关分析,选取叶面积指数(LAI)、冠层叶绿素含量、地上生物量、土壤有机碳(SOC)含量和土壤全氮含量作为影响玉米生长旺季Rs空间变异性的因素。结构方程模型方法的应用表明,只有LAI和SOC含量直接影响Rs。同时,其他因素通过LAI和SOC含量间接影响Rs。从中国环境减灾卫星的光学图像中提取三个绿色植被指数时,增强植被指数(EVI)与LAI的相关性最佳,因此被用作LAI的替代指标,以估算区域尺度上的Rs。基于GIS中的克里金插值法,通过外推样地尺度的SOC含量,获得了SOC含量的空间分布。当汇总38个样地的数据时,一阶指数分析表明,玉米生长旺季Rs约73%的空间变异性可由EVI和SOC含量解释。基于15个样地的独立数据进行的进一步测试分析表明,基于遥感EVI和GIS插值的SOC含量,简单指数模型在估算玉米田Rs空间格局方面具有可接受的精度,决定系数R2为0.69,均方根误差为0.51 μmol CO2 m(-2) s(-1)。本研究结论为中国北方三个县玉米生长旺季的Rs估算提供了有价值的信息。