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首页> 外文期刊>Global change biology >Linking population genetics and tree height growth models to predict impacts of climate change on forest production
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Linking population genetics and tree height growth models to predict impacts of climate change on forest production

机译:将种群遗传学和树高增长模型联系起来,以预测气候变化对森林生产的影响

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Changes to forest growth models used widely in global change research and sustainable forest management are needed to account for expected climate change impacts. We provide a new approach that dynamically merges height-age functions prevalent in forest growth models with transfer functions prevalent in population adaptation research to better represent changes to forest productivity as climates gradually change. Our simulations with data from an extensive provenance test of lodgepole pine (Pinus contorta) in British Columbia, Canada, suggest that climate change will reduce production in lodgepole pine forests established today by at least 7-13% at the end of this century considerably less than most predictions based solely on transfer or response functions, which do not integrate impacts as climate gradually changes. This work illustrates the need for forest productivity models to consider the changing climate in which a population is growing relative to the static climate of its origin. It also demonstrates the value of long-term provenance trials in assessing the dynamic impact of climate change on forest productivity, and serves as an example of how provenance trials may be exploited in other forest productivity models or other research fields to assess plant responses to climate.
机译:需要改变在全球变化研究和可持续森林管理中广泛使用的森林生长模型,以说明预期的气候变化影响。我们提供了一种新方法,该方法可以动态融合森林生长模型中普遍存在的高度年龄函数与人口适应研究中普遍存在的转移函数,以更好地代表随着气候逐渐变化的森林生产力的变化。我们根据加拿大不列颠哥伦比亚省的阔叶松(Pinus contorta)广泛来源测试的数据进行的模拟表明,气候变化将使本世纪末建立的千层松森林的产量减少至少7-13%,而本世纪末则要少得多与大多数仅基于传递或响应函数的预测相比,这些预测不能将影响随着气候的逐渐变化而整合。这项工作表明,需要森林生产力模型来考虑人口在不断变化的气候中相对于其起源的静态气候。它还证明了长期种源试验在评估气候变化对森林生产力的动态影响方面的价值,并作为一个例子,说明了如何在其他森林生产力模型或其他研究领域中进行种源试验以评估植物对气候的反应。

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