A New Equation for Deriving Vegetation Phenophase from Time Series of Leaf Area Index (LAI) Data
Fang, Shifeng; Chen, Baozhang
刊名REMOTE SENSING
2014
卷号6期号:6页码:5650-5670
关键词vegetation phenology leaf area index (LAI) S-curve function asymmetric Gaussian function logistic function
通讯作者Chen, BZ
英文摘要

Accurately modeling the land surface phenology based on satellite data is very important to the study of vegetation ecological dynamics and the related ecosystem process. In this study, we developed a Sigmoid curve (S-curve) function by integrating an asymmetric Gaussian function and a logistic function to fit the leaf area index (LAI) curve. We applied the resulting asymptotic lines and the curvature extrema to derive the vegetation phenophases of germination, green-up, maturity, senescence, defoliation and dormancy. The new proposed S-curve function has been tested in a specific area (Shangdong Province, China), characterized by a specific pattern in leaf area index (LAI) time course due to the dominant presence of crops. The function has not yet received any global testing. The identified phenophases were validated against measurement stations in Shandong Province. (i) From the site-scale comparison, we find that the detected phenophases using the S-curve (SC) algorithm are more consistent with the observations than using the logistic (LC) algorithm and the asymmetric Gaussian (AG) algorithm, especially for the germination and dormancy. The phenological recognition rates (PRRs) of the SC algorithm are obviously higher than those of two other algorithms. The S-curve function fits the LAI curve much better than the logistic function and asymmetric Gaussian function; (ii) The retrieval results of the SC algorithm are reliable and in close proximity to the green-up observed data whether using the AVHRR LAI or the improved MODIS LAI. Three inversion algorithms shows the retrieval results based on AVHRR LAI are all later than based on improved MODIS LAI. The bias statistics reveal that the retrieval results based on the AVHRR LAI datasets are more reasonable than based on the improved MODIS LAI datasets. Overall, the S-curve algorithm has the advantage of deriving vegetation phenophases across time and space as compared to the LC algorithm and the AG algorithm. With the SC algorithm, the vegetation phenophases can be extracted more effectively.

收录类别SCI
资助信息National Basic Research Program of China (973 Program) 2010CB950901;Key Project for the Strategic Science Plan in IGSNRR, CAS 2012ZD010;Chinese Academy of Sciences XDA05040403;National High Technology Research and Development Program of China 2013AA122002;Asia-Pacific Network for Sustainable Forest Management and Rehabilitation APFNet/2010/PPF/001;National Science Foundation of China 41271116
公开日期2014-08-26
内容类型期刊论文
源URL[http://ir.igsnrr.ac.cn/handle/311030/29221]  
专题地理科学与资源研究所_研究生部
推荐引用方式
GB/T 7714
Fang, Shifeng,Chen, Baozhang. A New Equation for Deriving Vegetation Phenophase from Time Series of Leaf Area Index (LAI) Data[J]. REMOTE SENSING,2014,6(6):5650-5670.
APA Fang, Shifeng,&Chen, Baozhang.(2014).A New Equation for Deriving Vegetation Phenophase from Time Series of Leaf Area Index (LAI) Data.REMOTE SENSING,6(6),5650-5670.
MLA Fang, Shifeng,et al."A New Equation for Deriving Vegetation Phenophase from Time Series of Leaf Area Index (LAI) Data".REMOTE SENSING 6.6(2014):5650-5670.
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