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A probabilistic eco-hydrological model to predict the effects of climate change on natural vegetation at a regional scale

机译:概率生态水文模型,预测区域范围内气候变化对自然植被的影响

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摘要

Climate change may hamper the preservation of nature targets, but may create new potential hotspots of biodiversity as well. To timely design adequate measures, information is needed about the feasibility of nature targets under a future climate. Habitat distribution models may provide this, but current models have certain drawbacks: they apply indirect empirical relationships between habitat and vegetation, they often disregard spatially explicit information about groundwater, and they are designed for too coarse spatial scales. We introduce a model that explicitly takes into account spatial effects through groundwater and that can easily be adapted to new scientific approaches and the needs of end-users. It combines (spatially explicit) data sources, transfer functions derived from mechanistic models, and robust relationships between habitat factors and plant characteristics. Outputs are maps showing the occurrence probabilities of vegetation types and their associated conservation values, both on a spatial scale that fits the needs of nature managers and spatial planners. The model was applied to a catchment of 270 km(2) to forecast, on a 25 m resolution, the effects of a national climate scenario (related to IPCC A2 and A1B). Computation time was a couple of minutes on a standard PC. Severe loss was predicted for wet and mesotrophic species-rich grasslands, while vegetation of dry and acidic soils appeared to profit. The results were not univocal though, and could probably not have been foreseen on the basis of expert judgement and logic alone, especially because of edaphic factors and spatial hydrological relationships.
机译:气候变化可能会阻碍自然目标的保存,但也可能创造新的生物多样性潜在热点。为了及时设计适当的措施,需要有关自然目标在未来气候下的可行性的信息。栖息地分布模型可能提供了这一点,但是目前的模型具有某些缺点:它们在栖息地和植被之间应用了间接的经验关系,它们常常忽略了有关地下水的空间明确信息,并且它们被设计用于过于粗糙的空间尺度。我们引入了一个模型,该模型明确考虑了地下水的空间影响,可以轻松地适应新的科学方法和最终用户的需求。它结合了(空间上明确的)数据源,从机械模型导出的传递函数以及栖息地因素与植物特征之间的牢固关系。输出是在适合自然管理者和空间规划者需求的空间尺度上显示植被类型及其相关保护价值的发生概率的地图。该模型应用于270 km(2)的流域,以25 m的分辨率预测了国家气候情景(与IPCC A2和A1B有关)的影响。在标准PC上,计算时间只有几分钟。预计湿地和中营养物种丰富的草原将遭受严重损失,而干旱和酸性土壤的植被似乎有利可图。不过,结果并非一帆风顺,而且可能无法仅凭专家判断和逻辑就可以预见到结果,特别是由于前卫因素和空间水文关系。

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