Site-based climate-smart tree species selection for forestation under climate change

Wenhuan Xu , Anil Shrestha , Guangyu Wang , Tongli Wang
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Abstract

Global climate change threatens ecosystem functions and resilience, prompting large-scale planting initiatives to mitigate its impacts. To ensure new plantations are adaptive to future climates, it is crucial to consider climate mismatches resulting from climate change when selecting tree species. However, current research is all species-based, which is not effective for species selection across species at specific plantation sites. Our research developed a novel site-based approach that can identify optimal tree species for specific planting sites under projected future climates. We evaluated the feasibility and effectiveness of this method across 10 representative sites in diverse climatic zones in China based on climate niche projections for 100 key tree species. Our findings demonstrated the necessity and effectiveness of this approach, which can select a suit of suitable tree species tailored for any potential planting site across China under different climate change scenarios. For instance, at Tibet Dongjiu Forest farm, Aibes densa and Quercus pannosa currently showed high suitability scores above 0.8 (on a scale of 0–1). However, by the 2080s, Aibes densa's suitability was projected to drop to 0.25, while Quercus pannosa was expected to maintain its suitability. Conversely, Quercus aquifolioides currently had a low suitability of 0.08, but it was projected to increase to 0.74 by the 2080s. These findings demonstrate the importance of using this approach to avoid selecting the wrong species or overlooking potentially suitable species. In addition, our simulation analysis suggests that a dataset of 40–50 species is necessary to ensure that most planting sites can identify 2–3 suitable species. This advancement significantly enhances the precision and effectiveness of tree species selection strategies for local practitioners, offering vital insights for forestry, conservation, and ecological restoration projects. These results highlight the tremendous potential and practical applicability of our site-based approach in enhancing forestry adaptation and ecological functions in response to global climate change.

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为气候变化下的植树造林选择基于地点的气候智能树种
全球气候变化威胁着生态系统的功能和恢复能力,促使人们采取大规模植树造林措施来减轻气候变化的影响。为确保新种植园能够适应未来气候,在选择树种时必须考虑气候变化造成的气候错配。然而,目前的研究都是以树种为基础的,这对于在特定种植地点跨树种选择树种并不有效。我们的研究开发了一种新颖的基于地点的方法,可在预测的未来气候条件下确定特定种植地点的最佳树种。我们根据对 100 种主要树种的气候生态位预测,在中国不同气候带的 10 个代表性地点评估了这种方法的可行性和有效性。我们的研究结果证明了这种方法的必要性和有效性,它可以在不同的气候变化情景下,为中国任何潜在的种植地点选择适合的树种。例如,在西藏东久林场,艾比斯丹萨(Aibes densa)和枹罕(Quercus pannosa)目前的适宜性得分高于 0.8(0-1 分)。然而,到 20 世纪 80 年代,Aibes densa 的适宜性预计将下降到 0.25,而柞树的适宜性预计将保持不变。相反,Quercus aquifolioides 目前的适宜度较低,仅为 0.08,但预计到 2080 年代将增至 0.74。这些发现表明,使用这种方法可以避免选择错误的物种或忽略潜在的适宜物种。此外,我们的模拟分析表明,有必要建立一个包含 40-50 个物种的数据集,以确保大多数种植地点都能确定 2-3 个合适的物种。这一进步大大提高了当地从业人员选择树种策略的精确性和有效性,为林业、自然保护和生态恢复项目提供了重要启示。这些结果凸显了我们基于地点的方法在提高林业适应性和生态功能以应对全球气候变化方面的巨大潜力和实际应用性。
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