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Phenology estimation of subtropical bamboo forests based on assimilated MODIS LAI time series data

机译:基于同化MODIS LAI时间序列数据的亚热带竹林的候选估计

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Phenology plays an important role in revealing the spatiotemporal evolution of forest ecosystem carbon cycles. The accuracy of vegetation phenology estimates based on remote sensing has improved in temperate zones. However, subtropical vegetation is complex, and the corresponding phenology estimates using remote sensing face great challenges. Bamboo forests are subtropical unique forest types and exhibit on- and off-years, fast growth, high productivity and carbon sequestration capability. In this study, we propose a new method to improve phenology estimates of bamboo forests by coupling the particle filter (PF) assimilation algorithm and a logistic model. The phenological metrics are estimated using high-precision leaf area index (LAI) assimilation products and a logistic model from 2001 to 2018, and the results are compared to those extracted from Moderate-Resolution Imaging Spectroradiometer (MODIS) LAI and the enhanced vegetation index (EVI) calculated based on the MODIS reflectance data. The results reveal that the R-2 values between the start of the growing season (SOS) and end of the growing season (EOS) estimated by the assimilated LAI and ground-observed values are the highest (0.50) and the root mean square errors (RMSEs) are the smallest (6.35 days). A negative correlation occurs between the EVI-simulated and ground-observed SOS and EOS values, which indicates that EVI products cannot be adopted to estimate the phenology of bamboo forests. Compared to the MODIS LAI, the R2 values of the predicted SOS and EOS by the assimilated LAI data are improved by 3.67 times and 12.50%, respectively, and the RMSEs are reduced by 58.91% and 41.13%, respectively. Therefore, the new method solves the problem whereby the phenology of subtropical bamboo forests cannot be accurately extracted from MODIS LAI and EVI products. The temporal and spatial patterns of the SOS and EOS of bamboo forests are estimated with the new method from 2001 to 2018, and the SOS exhibits obvious spatial heterogeneity during on- and off-years, and the SOS during the on-years occurs slightly earlier than that during the off-years. A total of 70.13% of all pixels exhibit a SOS advance trend, while more than half of the areas (58.42%) present an EOS delay trend. The results indicate that coupling the data assimilation algorithm and phenology method greatly improves the estimation precision and reduces the estimation errors of the SOS and EOS of bamboo forests.
机译:候选在揭示森林生态系统碳循环的时空演变方面发挥着重要作用。基于遥感的植被酚类估计的准确性在温带区内有所改善。然而,亚热带植被是复杂的,并且相应的候选验证使用遥感面对巨大的挑战。竹林是亚热带独特的森林类型,表现出和截止年,快速增长,高生产率和碳封存能力。在这项研究中,我们提出了一种新的方法,通过耦合粒子滤波器(PF)同化算法和逻辑模型来改善竹林的酚素估计。估计使用高精度叶面积指数(LAI)同化产品和2001至2018年物流模型估计的鉴别度量,并将结果与​​中频分辨率成像光谱仪(MODIS)LAI提取的结果进行了比较,并且增强植被指数( EVI基于MODIS反射数据计算。结果表明,由同化的LAI和地面观测值估计的生长季节(SOS)开始与生长季节(EOS)开始的R-2值是最高(> 0.50)和根均线错误(RMSE)是最小(<6.35天)。在EVI模拟和地面观察到的SOS和EOS值之间发生负相关,这表明EVI产品不能被采用来估计竹林的候选。与Modis Lai相比,通过分化的LAI数据的预测SOS和EO的R2值分别提高了3.67倍和12.50%,而RMS分别降低了58.91%和41.13%。因此,新方法解决了亚热带竹林的候选的问题,不能从Modis Lai和EVI产品中精确提取。竹林的SOS和EOS的时间和空间模式估计2001年至2018年的新方法,SOS在截止日期间显示出明显的空间异质性,并且在较年期间的SOS略先发生比在截止日期。总共70.13%的所有像素都表现出SOS推进趋势,而超过一半的地区(58.42%)呈现EOS延迟趋势。结果表明,耦合数据同化算法和候选方法大大提高了估计精度,减少了竹林SOS和EOS的估计误差。

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