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Integrating remote sensing and conventional grazing/browsing models for modelling carrying capacity in Southern African rangelands

机译:集成遥感和常规放牧/浏览模型,以对南部非洲牧场的承载能力进行建模

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Woody vegetation encroachment into grasslands or bush thickening, a global phenomenon, is transforming the Southern African grassland systems into savanna-like landscapes. Estimation of woody vegetation is important to rangeland scientists and land managers for assessing its impact on grass production and calculating its grazing and browsing capacity. Assessment of grazing and browsing components is often challenging because agro-ecological landscapes of this region are largely characterized by small scale and heterogeneous land-use-land-cover patterns. In this study, we investigated the utility of high spatial resolution remotely sensing data for modelling grazing and browsing capacity at landscape level. Woody tree density or Tree Equivalents (TE) and Total Leaf Mass (LMASS) data were derived using the Biomass Estimation for Canopy Volume (BECVOL) program. The Random Forest (RF) regression algorithm was assessed to establish relationships between these variables and vegetation indices (Simple Ratio and Normalized Difference Vegetation Index), calculated using the red and near infrared bands of SPOT5. The RF analysis predicted LMASS with R~2 = 0.63 and a Root Mean Square Error (RMSE) of 1256 kg/ha compared to a mean of 2291kg/ha. TE was predicted with R~2 = 0.55 and a RMSE = 1614 TE/ha compared to a mean of 3746 TE/ha. Next, spatial distribution maps of LMASS/ha and TE/ha were derived using separate RF regression models. The resultant maps were then used as input data into conventional grazing and browsing capacity models to calculate grazing and browsing capacity maps for the study area. This study provides a sound platform for integrating currently available and future remote sensing satellite data into rangeland carrying capacity modelling and monitoring.
机译:木本植物侵占草原或灌木丛是一种全球性现象,正在将南部非洲的草原系统转变为类似热带稀树草原的景观。木本植物植被的估计对于牧场科学家和土地管理者评估其对草生产的影响并计算其放牧和浏览能力非常重要。放牧和浏览成分的评估通常具有挑战性,因为该地区的农业生态景观主要以小规模和异质的土地利用-土地覆盖模式为特征。在这项研究中,我们调查了高空间分辨率遥感数据在横向放牧和浏览能力建模中的实用性。使用树冠体积生物量估算(BECVOL)程序得出木本树木密度或树当量(TE)和总叶质量(LMASS)数据。评估了随机森林(RF)回归算法,以建立这些变量与植被指数(简单比率和归一化植被指数)之间的关系,该指数使用SPOT5的红色和近红外波段进行计算。 RF分析预测LMASS的R〜2 = 0.63,均方根误差(RMSE)为1256 kg / ha,相比之下,均方根误差为2291 kg / ha。预测的TE为R〜2 = 0.55,RMSE = 1614 TE / ha,而平均值为3746 TE / ha。接下来,使用单独的RF回归模型得出LMASS / ha和TE / ha的空间分布图。然后将得到的地图用作常规放牧和浏览能力模型的输入数据,以计算研究区域的放牧和浏览能力图。这项研究提供了一个良好的平台,可将当前可用和未来的遥感卫星数据整合到牧场承载能力建模和监测中。

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