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Improved multi-sensor satellite-based aboveground biomass estimation by selecting temporally stable forest inventory plots using NDVI time series

机译:通过使用NDVI时间序列选择时间稳定的森林库存图,改进了基于多传感器卫星的地上生物量估算

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摘要

Accurate estimates of aboveground biomass (AGB) are crucial to assess terrestrial C-stocks and C-emissions as well as to develop sustainable forest management strategies. In this study we used Synthetic Aperture Radar (SAR) data acquired at L-band and the Landsat tree cover product together with Moderate Resolution Image Spectroradiometer (MODIS) normalized difference vegetation index (NDVI) time series data to improve AGB estimations over two study areas in southern Mexico. We used Mexican National Forest Inventory (INFyS) data collected between 2005 and 2011 to calibrate AGB models as well as to validate the derived AGB products. We applied MODIS NDVI time series data analysis to exclude field plots in which abrupt changes were detected. For this, we used Breaks For Additive Seasonal and Trend analysis (BFAST). We modelled AGB using an original field dataset and BFAST-filtered data. The results show higher accuracies of AGB estimations using BFAST-filtered data than using original field data in terms of R2 and root mean square error (RMSE) for both dry and humid tropical forests of southern Mexico. The best results were found in areas with high deforestation rates where the AGB models based on the BFAST-filtered data substantially outperformed those based on original field data (R2 BFAST = 0.62 vs. R2 orig = 0.45; RMSEBFAST = 28.4 t/ha vs. RMSEorig = 33.8 t/ha). We conclude that the presented method shows great potential to improve AGB estimations and can be easily and automatically implemented over large areas.
机译:地上生物量(AGB)的准确估算对于评估陆地碳库和碳排放以及制定可持续森林管理策略至关重要。在这项研究中,我们使用了在L波段和Landsat树覆盖产品上获得的合成孔径雷达(SAR)数据以及中分辨率图像光谱仪(MODIS)归一化植被指数(NDVI)时间序列数据,以改善两个研究区域的AGB估算在墨西哥南部。我们使用了2005年至2011年收集的墨西哥国家森林清单(INFyS)数据来校准AGB模型并验证衍生的AGB产品。我们应用MODIS NDVI时间序列数据分析来排除检测到突变的现场图。为此,我们使用了“加法休息季节和趋势分析(BFAST)”。我们使用原始字段数据集和BFAST过滤后的数据对AGB进行了建模。结果表明,对于墨西哥南部干旱和潮湿的热带森林,使用BFAST过滤后的数据比使用原始现场数据进行AGB估算的准确性更高。在森林砍伐率高的地区发现了最佳结果,其中基于BFAST过滤数据的AGB模型大大优于基于原始田间数据的模型(R2 BFAST = 0.62 vs.R2 orig = 0.45; RMSEBFAST = 28.4 t / ha vs. RMSEorig = 33.8吨/公顷)。我们得出的结论是,提出的方法在改进AGB估计方面显示出巨大的潜力,并且可以轻松,自动地在大范围内实施。

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