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Prototyping of LAI and FPAR retrievals from MODIS multi-angle implementation of atmospheric correction (MAIAC) data

机译:从MODIS多角度大气校正(MAIAC)数据实现中的LAI和FPAR检索原型

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摘要

Leaf area index (LAI) and fraction of photosynthetically active radiation (FPAR) absorbed by vegetation are key variables in many global models of climate, hydrology, biogeochemistry, and ecology. These parameters are being operationally produced from Terra and Aqua MODIS bidirectional reflectance factor (BRF) data. The MODIS science team has developed, and plans to release, a new version of the BRF product using the multi-angle implementation of atmospheric correction (MAIAC) algorithm from Terra and Aqua MODIS observations. This paper presents analyses of LAI and FPAR retrievals generated with the MODIS LAI/FPAR operational algorithm using Terra MAIAC BRF data. Direct application of the operational algorithm to MAIAC BRF resulted in an underestimation of the MODIS Collection 6 (C6) LAI standard product by up to 10%. The difference was attributed to the disagreement between MAIAC and MODIS BRFs over the vegetation by −2% to +8% in the red spectral band, suggesting different accuracies in the BRF products. The operational LAI/FPAR algorithm was adjusted for uncertainties in the MAIAC BRF data. Its performance evaluated on a limited set of MAIAC BRF data from North and South America suggests an increase in spatial coverage of the best quality, high-precision LAI retrievals of up to 10%. Overall MAIAC LAI and FPAR are consistent with the standard C6 MODIS LAI/FPAR. The increase in spatial coverage of the best quality LAI retrievals resulted in a better agreement of MAIAC LAI with field data compared to the C6 LAI product, with the RMSE decreasing from 0.80 LAI units (C6) down to 0.67 (MAIAC) and the R2 increasing from 0.69 to 0.80. The slope (intercept) of the satellite-derived vs. field-measured LAI regression line has changed from 0.89 (0.39) to 0.97 (0.25).
机译:在许多全球气候,水文学,生物地球化学和生态学模型中,植被吸收的叶面积指数(LAI)和光合有效辐射分数(FPAR)是关键变量。这些参数是从Terra和Aqua MODIS双向反射系数(BRF)数据中产生的。 MODIS科学团队已经开发并计划发布新版本的BRF产品,它使用了来自Terra和Aqua MODIS观测值的多角度大气校正(MAIAC)算法。本文介绍了使用Terra MAIAC BRF数据通过MODIS LAI / FPAR操作算法生成的LAI和FPAR检索的分析。将运算算法直接应用于MAIAC BRF导致MODIS Collection 6(C6)LAI标准产品低估了10%。差异归因于红色光谱带中MAIAC和MODIS BRF在植被上的差异为-2%至+ 8%,表明BRF产品的准确度不同。针对MAIAC BRF数据中的不确定性,对可操作的LAI / FPAR算法进行了调整。根据北美和南美有限的MAIAC BRF数据对它的性能进行了评估,结果表明,最佳质量的高精度LAI检索的空间覆盖范围增加了10%。总体MAIAC LAI和FPAR与标准C6 MODIS LAI / FPAR一致。与C6 LAI产品相比,最佳质量的LAI检索的空间覆盖范围的增加导致MAIAC LAI与现场数据的一致性更好,RMSE从0.80 LAI单位(C6)降至0.67(MAIAC),R2增加从0.69到0.80。卫星得出的LAI回归线的斜率(截距)已从0.89(0.39)变为0.97(0.25)。

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