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基于遥感的植被长时序趋势特征研究进展及评价
引用本文:蔡博峰,于嵘. 基于遥感的植被长时序趋势特征研究进展及评价[J]. 遥感学报, 2009, 13(6): 1177-1186
作者姓名:蔡博峰  于嵘
作者单位:1. 中国科学院,遥感应用研究所,北京,100101;北京市环境保护科学研究院,北京,100037
2. 广西壮族自治区,环境保护科学研究所,广西,南宁,530022
摘    要:基于遥感的植被长时序变化特征是植被生态学研究的核心领域, 也是全球变化研究的重点方向。AVHRR、SPOT VGT和MODIS是当前研究植被长时序趋势变化的主要数据源。海量数据不断积累的同时, 植被长时序趋势特征研究方法却缺乏对比评价和分析。当前常用的方法有代数运算法、傅里叶变换、主成分分析、小波变换法、回归分析法和相关系数分析法等。在对各种方法评述和分析的基础上, 重点讨论和对比了主流方法中的回归分析法和相关系数分析与新兴方法Sen+Mann-Kendall法。结果表明, Sen+Mann-Kendall能克服主流方法的不足, 不需要数据服从某一特定分布, 并且对数据的误差具有较强的抵抗能力。

关 键 词:植被长时序趋势变化   评价方法   Sen+Mann-Kendall
收稿时间:2008-07-02
修稿时间:2008-10-20

Advance and evaluation in the long time series vegetation trends research based on remote sensing
CAI Bo-feng and YU Rong. Advance and evaluation in the long time series vegetation trends research based on remote sensing[J]. Journal of Remote Sensing, 2009, 13(6): 1177-1186
Authors:CAI Bo-feng and YU Rong
Affiliation:1. Institute of Remote Sensing Applications, Chinese Academy of Sciences, Beijing 100101, China; 2. Beijing Municipal Research Academy of Environmental Protection, Beijing 100037, China;3.Environmental Protection Research Institute of Guangxi, Guangxi Nanning 530022, China
Abstract:The long time series vegetation trends (LTSVT) research based on remote sensing in large area is the core field of vegetation ecology and an important direction in the global change study. AVHRR, SPOT VGT and MODIS are currently the main data resources of LTSVT research. With volumes of remote sensing data, the analysis and evaluation methods for LTSVT study emerged as an urgent issue. Algebra calculation, Fourier transformation, PCA analysis, wavelet transform, linear trend analysis (LTA), correlation analysis (CA), etc., are the main methods. After the assessing and grouping of the methods, we focused on comparing the LTA and CA, which were well accepted methods, with the newly introduced Sen + Mann-Kendall method. Our review showed Sen + Mann-Kendall had a strong strength of errors resistance and was not constrained by the data statistical distribution.
Keywords:Sen+Mann-Kendall
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