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首页> 外文期刊>Geoscientific Model Development >Developing and optimizing shrub parameters representing sagebrush (iArtemisia/i spp.) ecosystems in the northern Great Basin using the Ecosystem Demography (EDv2.2) model
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Developing and optimizing shrub parameters representing sagebrush (iArtemisia/i spp.) ecosystems in the northern Great Basin using the Ecosystem Demography (EDv2.2) model

机译:使用生态系统资质研讨会(EDV2.2)模型,开发和优化代表北大盆地的山毛刷(artemisia spp。)生态系统的灌木参数

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Ecosystem dynamic models are useful for understanding ecosystem characteristics over time and space because of their efficiency over direct field measurements and applicability to broad spatial extents. Their application, however, is challenging due to internal model uncertainties and complexities arising from distinct qualities of the ecosystems being analyzed. The sagebrush-steppe ecosystem in western North America, for example, has substantial spatial and temporal heterogeneity as well as variability due to anthropogenic disturbance, invasive species, climate change, and altered fire regimes, which collectively make modeling dynamic ecosystem processes difficult. Ecosystem Demography (EDv2.2) is a robust ecosystem dynamic model, initially developed for tropical forests, that simulates energy, water, and carbon fluxes at fine scales. Although EDv2.2 has since been tested on different ecosystems via development of different plant functional types (PFT), it still lacks a shrub PFT. In this study, we developed and parameterized a shrub PFT representative of sagebrush (Artemisia spp.) ecosystems in order to initialize and test it within EDv2.2, and to promote future broad-scale analysis of restoration activities, climate change, and fire regimes in the sagebrush-steppe ecosystem. Specifically, we parameterized the sagebrush PFT within EDv2.2 to estimate gross primary production (GPP) using data from two sagebrush study sites in the northern Great Basin. To accomplish this, we employed a three-tier approach. (1)?To initially parameterize the sagebrush PFT, we fitted allometric relationships for sagebrush using field-collected data, information from existing sagebrush literature, and parameters from other land models. (2)?To determine influential parameters in GPP prediction, we used a sensitivity analysis to identify the five most sensitive parameters. (3)?To improve model performance and validate results, we optimized these five parameters using an exhaustive search method to estimate GPP, and compared results with observations from two eddy covariance (EC) sites in the study area. Our modeled results were encouraging, with reasonable fidelity to observed values, although some negative biases (i.e., seasonal underestimates of GPP) were apparent. Our finding on preliminary parameterization of the sagebrush shrub PFT is an important step towards subsequent studies on shrubland ecosystems using EDv2.2 or any other process-based ecosystem model.
机译:由于它们通过直接现场测量和适用性对宽空间范围的效率,生态系统动态型号可用于了解生态系统特性和空间。然而,由于内部模型的不确定性和复杂性来自所分析的生态系统的不同品质,他们的应用是挑战。例如,西北方的Sagebrush-Steppe生态系统具有大量的空间和时间异质性以及由于人为扰动,侵入性物种,气候变化和改变的消防制度而导致的可变性,其中难以使造型的动态生态系统流程困难。生态系统人口统计(EDV2.2)是一种强大的生态系统动态模型,最初为热带森林开发,模拟精细鳞片的能量,水和碳通量。虽然EDV2.2已经通过不同植物功能类型(PFT)的不同生态系统进行了测试,但它仍然缺乏灌木PFT。在这项研究中,我们开发并参数化了山血(Artemisia SPP)的灌木PFT代表山沼泽(Artemisia SPP。)生态系统,以便在EDV2.2内初始化和测试,并促进未来对恢复活动的广泛分析,气候变化和消防制度在Sagebrush-STEPPE生态系统中。具体而言,我们在EDV2.2中参数化了SageBrush PFT,以估计北大盆地中的两个Sagebrush研究网站的初级生产(GPP)。为实现这一目标,我们采用了三层方法。 (1)?最初参数化SageBrush PFT,我们使用现场收集的数据,来自现有Sagebrush文献的信息以及来自其他土地模型的参数,为SageBrush的各种关系。 (2)?确定GPP预测中的有影响力参数,我们使用了灵敏度分析来识别五个最敏感的参数。 (3)?为了提高模型性能和验证结果,我们使用详尽的搜索方法优化这五个参数来估计GPP,并将结果与​​研究区域中的两个涡旋协方差(EC)站点的观察结果进行比较。我们的建模结果令人鼓舞,具有合理的保真度来观察值,虽然一些负面偏见(即,GPP的季节性低估)是显而易见的。我们对Sagebrush灌木PFT的初步参数化的发现是使用EDV2.2或任何其他基于过程的生态系统模型进行灌木丛生态系统的后续研究的重要一步。

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