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首页> 外文期刊>ISPRS Journal of Photogrammetry and Remote Sensing >Improving the prediction of African savanna vegetation variables using time series of MODIS products
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Improving the prediction of African savanna vegetation variables using time series of MODIS products

机译:利用MODIS产品的时间序列改进对非洲大草原植被变量的预测

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African savanna vegetation is subject to extensive degradation as a result of rapid climate and land use change. To better understand these changes detailed assessment of vegetation structure is needed across an extensive spatial scale and at a fine temporal resolution. Applying remote sensing techniques to savanna vegetation is challenging due to sparse cover, high background soil signal, and difficulty to differentiate between spectral signals of bare soil and dry vegetation. In this paper, we attempt to resolve these challenges by analyzing time series of four MODIS Vegetation Products (VPs): Normalized Difference Vegetation Index (NDVI), Enhanced Vegetation Index (EVI), Leaf Area Index (LAI), and Fraction of Photosynthetically Active Radiation (FPAR) for Etosha National Park, a semiarid savanna in north-central Namibia. We create models to predict the density, cover, and biomass of the main savanna vegetation forms: grass, shrubs, and trees. To calibrate remote sensing data we developed an extensive and relatively rapid field methodology and measured herbaceous and woody vegetation during both the dry and wet seasons. We compared the efficacy of the four MODIS-derived VPs in predicting vegetation field measured variables. We then compared the optimal time span of VP time series to predict ground-measured vegetation. We found that Multiyear Partial Least Square Regression (PLSR) models were superior to single year or single date models. Our results show that NDVI-based PLSR models yield robust prediction of tree density (R-2 = 0.79, relative Root Mean Square Error, rRMSE = 1.9%) and tree cover (R-2 = 0.78, rRMSE = 0.3%). EVI provided the best model for shrub density (R-2 = 0.82) and shrub cover (R-2 = 0.83), but was only marginally superior over models based on other VPs. FPAR was the best predictor of vegetation biomass of trees (R-2 = 0.76), shrubs (R-2 = 0.83), and grass (R-2 = 0.91). Finally, we addressed an enduring challenge in the remote sensing of semiarid vegetation by examining the transferability of predictive models through space and time. Our results show that models created in the wetter part of Etosha could accurately predict trees' and shrubs' variables in the drier part of the reserve and vice versa. Moreover, our results demonstrate that models created for vegetation variables in the dry season of 2011 could be successfully applied to predict vegetation in the wet season of 2012. We conclude that extensive field data combined with multiyear time series of MODIS vegetation products can produce robust predictive models for multiple vegetation forms in the African savanna. These methods advance the monitoring of savanna vegetation dynamics and contribute to improved management and conservation of these valuable ecosystems. (C) 2017 International Society for Photogrammetry and Remote Sensing, Inc. (ISPRS). Published by Elsevier B.V. All rights reserved.
机译:由于气候和土地利用的迅速变化,非洲热带稀树草原植被遭受了广泛的退化。为了更好地理解这些变化,需要在广泛的空间范围内和精细的时间分辨率下对植被结构进行详细评估。由于稀疏覆盖,高背景土壤信号以及难以区分裸土和干燥植被的光谱信号,将遥感技术应用于稀树草原植被具有挑战性。在本文中,我们试图通过分析四种MODIS植被产品(VP)的时间序列来解决这些挑战:归一化植被指数(NDVI),增强植被指数(EVI),叶面积指数(LAI)和光合有效组分纳米比亚中北部半干旱稀树草原埃托沙国家公园的辐射(FPAR)。我们创建模型来预测主要稀树草原植被形式(草,灌木和树木)的密度,覆盖度和生物量。为了校准遥感数据,我们开发了一种广泛且相对快速的野外方法,并在干旱和潮湿季节测量了草木植被。我们比较了四个MODIS衍生的VP在预测植被场测量变量中的功效。然后,我们比较了VP时间序列的最佳时间跨度,以预测地面测量的植被。我们发现,多年偏最小二乘回归(PLSR)模型优于一年或一次日期模型。我们的结果表明,基于NDVI的PLSR模型对树的密度(R-2 = 0.79,相对均方根误差,rRMSE = 1.9%)和树的覆盖率(R-2 = 0.78,rRMSE = 0.3%)产生可靠的预测。 EVI提供了灌木密度(R-2 = 0.82)和灌木覆盖度(R-2 = 0.83)的最佳模型,但仅略高于基于其他VP的模型。 FPAR是树木(R-2 = 0.76),灌木(R-2 = 0.83)和草木(R-2 = 0.91)的植被生物量的最佳预测指标。最后,我们通过检查预测模型在空间和时间上的可传递性,解决了半干旱植被遥感中的持久挑战。我们的结果表明,在Etosha较湿润的部分创建的模型可以准确地预测保护区较干燥部分的树木和灌木变量,反之亦然。此外,我们的结果表明,为2011年枯水期的植被变量创建的模型可以成功地用于预测2012年雨季的植被。我们得出结论,广泛的现场数据与MODIS植被产品的多年时间序列相结合可以产生可靠的预测非洲大草原上多种植被形式的模型。这些方法促进了热带稀树草原植被动态的监测,并有助于改善对这些宝贵生态系统的管理和保护。 (C)2017国际摄影测量与遥感学会(ISPRS)。由Elsevier B.V.发布。保留所有权利。

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