遥感
植被(病理学)
环境科学
算法
天蓬
归一化差异植被指数
系列(地层学)
时间序列
增强植被指数
计算机科学
均方误差
叶面积指数
数学
植被指数
地理
统计
机器学习
生态学
地质学
生物
病理
古生物学
医学
作者
Mingzhu Xu,Ronggao Liu,Jing M. Chen,Yang Liu,Aleksandra Wolanin,Holly Croft,Liming He,Rong Shang,Weimin Ju,Yongguang Zhang,Yuhong He,Rong Wang
出处
期刊:IEEE Transactions on Geoscience and Remote Sensing
[Institute of Electrical and Electronics Engineers]
日期:2022-01-01
卷期号:60: 1-13
被引量:42
标识
DOI:10.1109/tgrs.2022.3204185
摘要
Leaf chlorophyll content (LCC) is an important plant physiological trait and is critical for accurate modeling of vegetation photosynthesis over time and space. To date, there is still a lack of a global long time-series dataset of LCC. In this study, we developed an algorithm to retrieve global LCC from MODIS surface reflectance data from 2000–2020. An essential requirement for generating LCC time series is to capture its seasonal dynamics. This issue was addressed by using a matrix system with two pairs of vegetation indices to minimize the impacts of leaf area index and canopy non-photosynthetic material on LCC estimation in different seasons. The matrix system algorithm was applied to Landsat data and MODIS data, respectively. The validation based on Landsat data and ground measurements reveals the algorithm has the ability to catch the seasonal variations of LCC in different plant functional types, and the MODIS-derived LCC shows good agreement with Landsat-upscaled LCC (R 2 =0.77, RMSE=6.9 μg/cm 2 ). The global 8-day LCC data at 500-m resolution in 2000–2020 was generated using the matrix system from MODIS and presented distinct temporal and spatial variations, which provides a new opportunity for analyzing vegetation physiological dynamics in climate change studies.
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