首页> 外文期刊>ISPRS Journal of Photogrammetry and Remote Sensing >Estimating leaf area index and aboveground biomass of grazing pastures using Sentine1-1, Sentine1-2 and Landsat images
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Estimating leaf area index and aboveground biomass of grazing pastures using Sentine1-1, Sentine1-2 and Landsat images

机译:使用Sentine1-1,Sentine1-2和Landsat影像估算放牧草场的叶面积指数和地上生物量

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Grassland degradation has accelerated in recent decades in response to increased climate variability and human activity. Rangeland and grassland conditions directly affect forage quality, livestock production, and regional grassland resources. In this study, we examined the potential of integrating synthetic aperture radar (SAR, Sentinel-1) and optical remote sensing (Landsat-8 and Sentinel-2) data to monitor the conditions of a native pasture and an introduced pasture in Oklahoma, USA. Leaf area index (LAI) and aboveground biomass (AGB) were used as indicators of pasture conditions under varying climate and human activities. We estimated the seasonal dynamics of LAI and AGB using Sentinel-1 (S1), Landsat-8 (LC8), and Sentinel-2 (S2) data, both individually and integrally, applying three widely used algorithms: Multiple Linear Regression (MLR), Support Vector Machine (SVM), and Random Forest (RF). Results indicated that integration of LC8 and S2 data provided sufficient data to capture the seasonal dynamics of grasslands at a 10-30-m spatial resolution and improved assessments of critical phenology stages in both pluvial and dry years. The satellite-based LAI and AGB models developed from ground measurements in 2015 reasonably predicted the seasonal dynamics and spatial heterogeneity of LAI and AGB in 2016. By comparison, the integration of S1, LC8, and S2 has the potential to improve the estimation of LAI and AGB more than 30% relative to the performance of S1 at low vegetation cover (LAI 2 m(2)/m(2), AGB 500 g/m(2)) and optical data of LC8 and S2 at high vegetation cover (LAI 2 m(2)/m(2), AGB 500 g/m(2)). These results demonstrate the potential of combining S1, LC8, and S2 monitoring grazing tallgrass prairie to provide timely and accurate data for grassland management.
机译:近几十年来,由于气候变化和人类活动增加,草原退化加速了。牧场和草原条件直接影响草料质量,牲畜产量和区域草原资源。在这项研究中,我们研究了整合合成孔径雷达(SAR,Sentinel-1)和光学遥感(Landsat-8和Sentinel-2)数据以监测美国俄克拉荷马州天然牧场和引入牧场的状况的潜力。 。叶面积指数(LAI)和地上生物量(AGB)被用作不同气候和人类活动下牧场状况的指标。我们使用三种广泛使用的算法,分别使用Sentinel-1(S1),Landsat-8(LC8)和Sentinel-2(S2)数据估算了LAI和AGB的季节性动态。 ,支持向量机(SVM)和随机森林(RF)。结果表明,LC8和S2数据的集成提供了足够的数据,可以以10-30 m的空间分辨率捕获草原的季节动态,并改善了干旱和干旱年份关键物候期的评估。根据2015年地面测量结果开发的基于卫星的LAI和AGB模型可以合理预测2016年LAI和AGB的季节动态和空间异质性。相比之下,S1,LC8和S2的集成具有改善LAI估计的潜力和相对于S1在低植被覆盖下(LAI <2 m(2)/ m(2),AGB <500 g / m(2))的性能以及LC8和S2在高植被下的光学数据而言,相对于S1的性能,其AGB超过30%封面(LAI> 2 m(2)/ m(2),AGB> 500 g / m(2))。这些结果表明,结合使用S1,LC8和S2监测放牧高草草原,可以为草地管理提供及时,准确的数据。

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