首页> 外文期刊>International Journal of Biometeorology: Journal of the International Society of Biometeorology >Later springs green-up faster: the relation between onset and completion of green-up in deciduous forests of North America
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Later springs green-up faster: the relation between onset and completion of green-up in deciduous forests of North America

机译:后来春天的绿色速度更快:北美落叶林的起始与绿色植物之间的关系

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In deciduous forests, spring leaf phenology controls the onset of numerous ecosystem functions. While most studies have focused on a single annual spring event, such as budburst, ecosystem functions like photosynthesis and transpiration increase gradually after budburst, as leaves grow to their mature size. Here, we examine the “velocity of green-up,” or duration between budburst and leaf maturity, in deciduous forest ecosystems of eastern North America. We use a diverse data set that includes 301 site-years of phenocam data across a range of sites, as well as 22?years of direct ground observations of individual trees and 3?years of fine-scale high-frequency aerial photography, both from Harvard Forest. We find a significant association between later start of spring and faster green-up: ??0.47?±?0.04 (slope?±?1 SE) days change in length of green-up for every day later start of spring within phenocam sites, ??0.31?±?0.06?days/day for trees under direct observation, and ??1.61?±?0.08?days/day spatially across fine-scale landscape units. To explore the climatic drivers of spring leaf development, we fit degree-day models to the observational data from Harvard Forest. We find that the default phenology parameters of the ecosystem model PnET make biased predictions of leaf initiation (39?days early) and maturity (13?days late) for red oak, while the optimized model has biases of 1?day or less. Springtime productivity predictions using optimized parameters are closer to results driven by observational data (within 1%) than those of the default parameterization (17% difference). Our study advances empirical understanding of the link between early and late spring phenophases and demonstrates that accurately modeling these transitions is important for simulating seasonal variation in ecosystem productivity.
机译:在落叶林,春叶候选控制了许多生态系统功能的发作。虽然大多数研究都集中在一个年度春季事件(如Budburst),但Budburst后逐渐增加了生态系统,就像光合作用和蒸腾逐渐增加,因为叶子生长到它们成熟的大小。在这里,我们研究了北美洲东部落叶林生态系统的布伯斯特和叶成熟之间的“绿色的速度”,“或持续时间。我们使用各种数据集,其中包括301个站点的Phenocam数据,跨各种网站,以及22年的单个树木直接接地观察和3年的细尺高频航空摄影,两者哈佛森林。我们在以后的春季开始和更快的绿色开始之间找到了一个重要的关联:?? 0.47?±0.04(斜率?±1 SE)每天的绿色长度的变化,以后的春天在Phenocam网站内开始, ?? 0.31?±0.06?天/天在直接观察下树木,以及?? 1.61?±0.08?天/天在空间上穿过微尺度景观单位。为了探讨春季叶片发展的气候司机,我们将学位模型适合来自哈佛林的观测数据。我们发现生态系统模型PNet的默认候选参数,使叶片发起的偏见预测(39?天早期)和红色橡木的成熟(13?天),而优化的模型具有1?日或更少的偏差。使用优化参数的春季生产率预测更接近由观察数据(1%内)驱动的结果而不是默认参数化(17%)。我们的研究提出了对早期和晚期嗜疟疾之间的联系的实证理解,并证明了准确建模这些过渡对于模拟生态系统生产率的季节性变化很重要。

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