中国植被绿度期遥感监测方法研究
Research on a Detection Method of Chinese Terrestrial Vegetation Greenness Periods Based on Remote Sensing
- 2008年第1期 页码:92-103
纸质出版日期: 2008
DOI: 10.11834/jrs.20080113
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纸质出版日期: 2008 ,
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[1]武永峰,李茂松,李京.中国植被绿度期遥感监测方法研究[J].遥感学报,2008(01):92-103.
WU Yong-feng1, LI Mao-song1, LI Jing2. Research on a Detection Method of Chinese Terrestrial Vegetation Greenness Periods Based on Remote Sensing[J]. Journal of Remote Sensing, 2008,(1):92-103.
基于遥感技术的地表植物物候监测
有效克服了传统地面观测站点有限、资料不完整等缺陷
实现了观测方法由点向面的空间尺度转换
因此可表征植被生态系统层面的物候现象。本文选择使用"植被绿度期"来代替"植物生长期或生长季"等概念
并以中国陆地植被为研究对象
建立了中国植被绿度期遥感监测模型———基于NDVI累积频率曲线的Logistic拟合模型
来计算中国植被绿度始期和绿度末期。为验证本模型结果的可靠性和优越性
使用地面物候观测数据对其结果加以检验
并与其他常见遥感监测模型进行了比较。结果和验证表明
在地处温带地区的牡丹江、呼和浩特、北京、西安和洛阳站点
使用本模型计算的植被绿度始期与地面观测结果相差9—21d
绿度末期相差0—13d
其准确度均优于其他遥感模型
而且年际波动相对较小;在地处亚热带地区的屯溪、仁寿、贵阳和广州站点
本模型结果产生较大误差。通过误差分析可知
在南方以常绿植被为主的亚热带地区
本模型计算所得的植被绿度始期和绿度末期并不是地表植被生长季始末日期的真实反映
而往往用于指示区域气候变化的特征。此外
本研究模型比其他方法具有更好的适用性
而且适合不同空间尺度的植物物候监测。
Vegetation phenology
the study of recurring vegetation cycles and their connection to climate
is an important variable in a wide variety of earth and atmospheric science applications.Vegetation phenology is also an integraph of global changes and a comprehensive indicator of landscape and environment changes
and the studies on its response to global environment changes have become a focus of global changes field.Vegetation phenology detection methods based on remote sensing overcome conventional ground observation’s shortcomings
such as limited observation sites and missing data
and realize the spatial scale transition of observation methods from points to coverage.Remote sensing technology greatly promotes the study on vegetation ecosystem response to climate changes at regional
continental
even global scales.In order to keep consistent with the character of remote sensing-based vegetation phenology detection
the paper uses "vegetation greenness period" to replace "vegetation growing season"
and chose leaf unfolding and leaf coloration of local plant communities as indicator events to show the start and end of vegetation greenness period.Then
based on NOAA/AVHRR dataset
meteorological data
ground phenology observation data
and so on
the paper builds a remote sensingbased vegetation greenness period detection model
namely
Logistic fitting model on cumulative frequency of NDVI to determine the beginning date of greenness period(BGP) in spring and the end date of greenness period(EGP) in autumn of China since 1982.BGP and EGP are utilized to reflect the leaf-unfolding stage and leaf-coloring stage of the terrestrial vegetation
respectively.The computed results indicate that BGP appeared to delay and EGP have an advance trend from south to north.Finally
through comparing the results of the model with the 9 ground observation sites and other remote sensing-based detection models
it is found that BGP and EGP computed by the model have differences of 9—21 days and 0—13 days
respectively
with the ground observation in Mudanjiang
Huhehot
Beijing
Luoyang and Xi’an observation sites.The model is more precise than the other remote sensing-based detection models and the annual BGP and EGP fluctuations are comparatively small.It is obvious that BGP and EGP estimated by the model are reliable in the north temperate regions.In Tunxi
Guiyang
Renshou and Guangzhou observation sites
the differences of BGP and EGP with the ground observation are more obvious than those in Mudanjiang
Huhehot
Beijing
Luoyang and Xi’an observation sites in spite of any remote sensing-based detection model.Tunxi
Guiyang
Renshou and Guangzhou observation sites locate in the southern subtropical evergreen region.The vegetation has no obvious and consistent leaf-unfolding stage and leaf-coloring stage.However
obvious BGP and EGP can be computed by remote sensing-based detection models
which are mainly related to continuously overcast
rainy and foggy days during the rainy season in the sites.Therefore
BGP and EGP estimated by the model are not the real start and end of the vegetation growing season
but reflect vegetation’s response to regional climate changes.In a word
compared with other remote sensing-based detection model
the logistic fitting model on cumulative frequency of NDVI in China can be characterized in three ways.(1) NDVI data needn’t be exceedingly smoothed
which can remain more temporal details;(2) Logistic model only includes three fitting parameter.So
computing process is relatively simple;(3) Multi-model of NDVI arisen from multiple growth cycles(e.g.
double or triple-crop agriculture
semiarid systems with multiple rainy seasons
etc.) is considered.BGP and EGP can be straightly determined by fitting the cumulative frequency of NDVI.The logistic fitting model on cumulative frequency of NDVI is more suitable for China than the other remote sensing-based detection models and can be applied to different spatial scales.
植物物候遥感监测植被绿度期NDVI
vegetation phenologyremote sensing-based detectionvegetation greenness periodNDVI
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