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Spatial heterogeneity of leaf area index in a temperate old-growth forest: Spatial autocorrelation dominates over biotic and abiotic factors

机译:温带老龄森林中叶面积指数的空间异质性:空间自相关主导生物和非生物因素

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Leaf area index (LAI) controls many eco-physiological processes and can be widely used to scale-up leaf processes to ecosystem, landscape and regional levels. However, the macro-scale spatial heterogeneity of LAI and its controlling factors are not fully understood. We estimated annual maximum LAI using an LAI-2200 plant canopy analyzer in a 9-ha, old-growth, mixed broadleaved-Korean pine (Pinus koraiensis) forest in China. We analyzed the spatial heterogeneity of LAI and mapped its distribution using geostatistical methods; then, through variance partitioning, we examined the influences of several biotic factors, abiotic factors and spatial autocorrelation on the LAI distribution. Variance partitioning showed that these factors altogether explained 59% of the variation in the distribution of LAI. Compared to biotic and abiotic factors, spatial autocorrelation controlled more spatial heterogeneity of LAI by explaining 51.4% of the total variation in LAI. For biotic and abiotic factors, the mean diameter at breast height (DBH) of large trees (DBH > 10 cm), elevation, soil temperature and soil mass moisture content significantly affected the LAI distribution (P < 0.01). Notably, spatial autocorrelation unexpectedly explained the most variation in the LAI values, and it also varies with cardinal direction and is a key descriptor of LAI spatial variability. These results suggest that the influence of spatial autocorrelation on LAI distribution should attract more attention and that both the relative importance of and interactions among different determining factors is helpful for better understanding the mechanistic determinants of LAI distributions in temperate mixed forests.
机译:叶面积指数(LAI)控制着许多生态生理过程,可广泛用于将叶过程扩大到生态系统,景观和区域水平。但是,LAI的宏观尺度空间异质性及其控制因素尚未完全了解。我们使用LAI-2200植物冠层分析仪估算了中国9公顷,古老,混合阔叶红松(Pinus koraiensis)森林中的年度最大LAI。我们分析了LAI的空间异质性,并使用地统计方法绘制了其分布图。然后,通过方差划分,我们研究了几种生物因素,非生物因素和空间自相关对LAI分布的影响。方差划分表明,这些因素总共解释了LAI分布变化的59%。与生物和非生物因素相比,空间自相关通过解释LAI总变异的51.4%控制了LAI的更多空间异质性。对于生物和非生物因素,大树的胸高平均直径(DBH> 10 cm),海拔,土壤温度和土壤质量含水量显着影响LAI分布(P <0.01)。值得注意的是,空间自相关出乎意料地解释了LAI值的最大变化,并且它也随基本方向变化,并且是LAI空间变化性的关键描述。这些结果表明,空间自相关对LAI分布的影响应引起更多关注,并且不同决定因素的相对重要性和相互作用都有助于更好地理解温带混交林中LAI分布的机制决定因素。

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