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Tree–grass phenology information improves light use efficiency modelling of gross primary productivity for an Australian tropical savanna

机译:树草候选信息改善了澳大利亚热带大草原的总初级生产力的轻盈利用效率建模

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The coexistence of trees and grasses in savanna ecosystems results in marked phenological dynamics that vary spatially and temporally with climate. Australian savannas comprise a complex variety of life forms and phenologies, from evergreen trees to annual/perennial grasses, producing a boom–bust seasonal pattern of productivity that follows the wet–dry seasonal rainfall cycle. As the climate changes into the 21st century, modification to rainfall and temperature regimes in savannas is highly likely. There is a need to link phenology cycles of different species with productivity to understand how the tree–grass relationship may shift in response to climate change. This study investigated the relationship between productivity and phenology for trees and grasses in an Australian tropical savanna. Productivity, estimated from overstory (tree) and understory (grass) eddy covariance flux tower estimates of gross primary productivity (GPP), was compared against 2 years of repeat time-lapse digital photography (phenocams). We explored the phenology–productivity relationship at the ecosystem scale using Moderate Resolution Imaging Spectroradiometer (MODIS) vegetation indices and flux tower GPP. These data were obtained from the Howard Springs OzFlux/Fluxnet site (AU-How) in northern Australia. Two greenness indices were calculated from the phenocam images: the green chromatic coordinate (GCC) and excess green index (ExG). These indices captured the temporal dynamics of the understory (grass) and overstory (trees) phenology and were correlated well with tower GPP for understory (r2?=??0.65 to 0.72) but less so for the overstory (r2?=??0.14 to 0.23). The MODIS enhanced vegetation index (EVI) correlated well with GPP at the ecosystem scale (r2?=??0.70). Lastly, we used GCC and EVI to parameterise a light use efficiency (LUE) model and found it to improve the estimates of GPP for the overstory, understory and ecosystem. We conclude that phenology is an important parameter to consider in estimating GPP from LUE models in savannas and that phenocams can provide important insights into the phenological variability of trees and grasses.
机译:在大草原生态系统中的树木和草的共存导致标记的象征动态,气候有空间和时间变化。澳大利亚大草原包括一系列复杂的生命形式和诸如常绿植物的生命形式和卓越的象征,从而产生了繁荣的季节性生产率的繁荣季节性降雨周期。随着气候变化进入21世纪,对大草原的降雨和温度制度的修改很可能。需要将不同物种的候选循环与生产力联系起来,以了解树木关系如何响应气候变化而转变。本研究调查了澳大利亚热带大草原的树木和草的生产力和候选的关系。在初级生产率(GPP)的额外覆盖(Grass)和林(Grass)eady(Grass)ead Covariance virux塔估计的生产率与2年重复延迟数码摄影(Phenocams)进行比较。我们探讨了使用中等分辨率成像光谱仪(MODIS)植被指数和助焊剂塔GPP的生态系统尺度的候选生产力关系。这些数据是从澳大利亚北部的霍华德斯普林斯·欧扎弗鲁克/浮游网站(Au-Wha)获得的。从Phenocam图像计算两个绿色指数:绿色坐标(GCC)和多余的绿色指数(EXG)。这些索引捕获了林下(草)和卵形(树)候选的时间动态,并且与塔GPP相关的床位(R2?= 0.65至0.72),但对于过量的塔(R2?= 0.72),但是对于卵数而言(R2?= ?? 0.14到0.23)。 MODIS增强植被指数(EVI)在生态系统尺度上与GPP相关(R2?= ?? 0.70)。最后,我们使用了GCC和EVI参数化光使用效率(Lue)模型,并发现它可以改善覆盖覆盖,林和生态系统的GPP估计。我们得出结论,吩咐鉴于估算大草原的Lue模型的GPP,并且该凤尾酒可以对树木和草的酚类变异性提供重要的见解。

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