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Estimating above-ground biomass on mountain meadows and pastures through remote sensing

机译:通过遥感估算山地草甸和牧场的地上生物量

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Extensive stock-breeding systems developed in mountain areas like the Pyrenees are crucial for local farming economies and depend largely on above-ground biomass (AGB) in the form of grass produced on meadows and pastureland. In this study, a multiple linear regression analysis technique based on in-situ biomass collection and vegetation and wetness indices derived from Landsat-5 TM data is successfully applied in a mountainous Pyrenees area to model AGB. Temporal thoroughness of the data is ensured by using a large series of images. Results of on-site AGB collection show the importance for AGB models to capture the high interannual and intraseasonal variability that results from both meteorological conditions and farming practices. AGB models yield best results at midsummer and end of summer before mowing operations by farmers, with a mean R-2, RMSE and PE for 2008 and 2009 midsummer of 0.76, 95 gm(-2) and 27%, respectively; and with a mean R-2, RMSE and PE for 2008 and 2009 end of summer of 0.74,128 gm(-2) and 36%, respectively. Although vegetation indices are a priori more related with biomass production, wetness indices play an important role in modeling AGB, being statistically selected more frequently (more than 50%) than other traditional vegetation indexes (around 27%) such as NDVI. This suggests that middle infrared bands are crucial descriptors of AGB. The methodology applied in this work compares favorably with other works in the literature, yielding better results than those works in mountain areas, owing to the ability of the proposed methodology to capture natural and anthropogenic variations in AGB which are the key to increasing AGB modeling accuracy. (C) 2014 Elsevier B.V. All rights reserved.
机译:在比利牛斯山脉等山区开发的广泛的畜牧业系统对于当地的农业经济至关重要,并且很大程度上依赖于草地和牧场上产生的草类形式的地上生物量(AGB)。在这项研究中,基于原地生物量收集以及从Landsat-5 TM数据得出的植被和湿度指数的多元线性回归分析技术已成功地在比利牛斯山脉山区应用AGB模型。通过使用大量图像可以确保数据的时间完整性。现场AGB收集的结果表明,对于AGB模型来说,捕捉由气象条件和耕作方式造成的年际和季节内高变异性非常重要。在农户割草之前,AGB模型在仲夏和夏末收效最好,2008年和2009年仲夏的平均R-2,RMSE和PE分别为0.76、95 gm(-2)和27%。 2008年和2009年夏末的R-2,RMSE和PE平均值分别为0.74,128 gm(-2)和36%。尽管植被指数与生物量的产生具有先验关系,但湿度指数在AGB建模中起着重要作用,在统计上比其他传统植被指数(约27%)(例如NDVI)更频繁地选择(超过50%)。这表明中红外波段是AGB的关键描述符。由于拟议的方法具有捕获AGB中自然和人为变化的能力,这是提高AGB建模精度的关键,因此该工作中使用的方法与文献中的其他工作相比具有较好的结果,其结果要优于山区的工作。 。 (C)2014 Elsevier B.V.保留所有权利。

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