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首页> 外文期刊>Global change biology >Changes in the structure and function of northern Alaskan ecosystems when considering variable leaf-out times across groupings of species in a dynamic vegetation model.
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Changes in the structure and function of northern Alaskan ecosystems when considering variable leaf-out times across groupings of species in a dynamic vegetation model.

机译:在动态植被模型中考虑跨物种分组的可变叶出时间时,阿拉斯加北部生态系统的结构和功能的变化。

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The phenology of arctic ecosystems is driven primarily by abiotic forces, with temperature acting as the main determinant of growing season onset and leaf budburst in the spring. However, while the plant species in arctic ecosystems require differing amounts of accumulated heat for leaf-out, dynamic vegetation models simulated over regional to global scales typically assume some average leaf-out for all of the species within an ecosystem. Here, we make use of air temperature records and observations of spring leaf phenology collected across dominant groupings of species (dwarf birch shrubs, willow shrubs, other deciduous shrubs, grasses, sedges, and forbs) in arctic and boreal ecosystems in Alaska. We then parameterize a dynamic vegetation model based on these data for four types of tundra ecosystems (heath tundra, shrub tundra, wet sedge tundra, and tussock tundra), as well as ecotonal boreal white spruce forest, and perform model simulations for the years 1970-2100. Over the course of the model simulations, we found changes in ecosystem composition under this new phenology algorithm compared with simulations with the previous phenology algorithm. These changes were the result of the differential timing of leaf-out, as well as the ability for the groupings of species to compete for nitrogen and light availability. Regionally, there were differences in the trends of the carbon pools and fluxes between the new phenology algorithm and the previous phenology algorithm, although these differences depended on the future climate scenario. These findings indicate the importance of leaf phenology data collection by species and across the various ecosystem types within the highly heterogeneous Arctic landscape, and that dynamic vegetation models should consider variation in leaf-out by groupings of species within these ecosystems to make more accurate projections of future plant distributions and carbon cycling in Arctic regions.
机译:北极生态系统的物候主要由非生物力驱动,温度是决定生长季节开始和春季叶片发芽的主要因素。但是,尽管北极生态系统中的植物物种需要不同的蓄热量才能进行叶外活动,但在区域到全球范围内模拟的动态植被模型通常会假设某个生态系统内所有物种的平均叶外活动量。在这里,我们利用在阿拉斯加的北极和北方生态系统中的优势物种(矮桦灌木丛,柳灌木丛,其他落叶灌木丛,草,莎草和Forbs)的主要物种组收集的气温记录和春季叶片物候观测数据。然后,我们根据这些数据为四种类型的冻原生态系统(荒漠冻原,灌木冻原,湿莎草冻原和草冻原)以及生态型北方白云杉林参数化动态植被模型,并进行1970年的模型模拟-2100。在模型模拟的过程中,我们发现,与先前的物候算法相比,在这种新的物候算法下生态系统组成发生了变化。这些变化是由于叶片外出时间不同以及物种分组竞争氮和光的能力的结果。在区域上,新物候算法与以前的物候算法之间的碳库和通量趋势存在差异,尽管这些差异取决于未来的气候情景。这些发现表明,在高度异质的北极景观中,按物种和跨各种生态系统类型收集叶片物候数据的重要性,动态植被模型应考虑这些生态系统中物种的分组,从而对叶片的变化进行评估,以便对北极地区未来的植物分布和碳循环。

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