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Mechanistic variables can enhance predictive models of endotherm distributions: the American pika under current, past, and future climates

机译:机械变量可以增强吸热分布的预测模型:当前,过去和未来气候下的美国PIKA

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How climate constrains species' distributions through time and space is an important question in the context of conservation planning for climate change. Despite increasing awareness of the need to incorporate mechanism into species distribution models (SDMs), mechanistic modeling of endotherm distributions remains limited in this literature. Using the American pika (Ochotona princeps) as an example, we present a framework whereby mechanism can be incorporated into endotherm SDMs. Pika distribution has repeatedly been found to be constrained by warm temperatures, so we used Niche Mapper, a mechanistic heat-balance model, to convert macroclimate data to pika- specific surface activity time in summer across the western United States. We then explored the difference between using a macroclimate predictor (summer temperature) and using a mechanistic predictor (predicted surface activity time) in SDMs. Both approaches accurately predicted pika presences in current and past climate regimes. However, the activity models predicted 8-19% less habitat loss in response to annual temperature increases of similar to 3-5 degrees C predicted in the region by 2070, suggesting that pikas may be able to buffer some climate change effects through behavioral thermoregulation that can be captured by mechanistic modeling. Incorporating mechanism added value to the modeling by providing increased confidence in areas where different modeling approaches agreed and providing a range of outcomes in areas of disagreement. It also provided a more proximate variable relating animal distribution to climate, allowing investigations into how unique habitat characteristics and intraspecific phenotypic variation may allow pikas to exist in areas outside those predicted by generic SDMs. Only a small number of easily obtainable data are required to parameterize this mechanistic model for any endotherm, and its use can improve SDM predictions by explicitly modeling a widely applicable direct physiological effect: climate-imposed restrictions on activity. This more complete understanding is necessary to inform climate adaptation actions, management strategies, and conservation plans.
机译:气候如何通过时间和空间来限制物种的分布是气候变化保护计划的背景下的重要问题。尽管提高了将机制纳入物种分布模型(SDMS)的需要提高了认识,但是在本文中,吸热分布的机械建模仍然有限。使用美国PIKA(Ochotona Princeps)作为示例,我们介绍了一个框架,可以将机制纳入到吸热SDMS中。 Pika分布一再被发现受到温暖的温度的限制,因此我们使用了一个机械热平衡模型,将Macroclimate数据转换为夏季夏季普通的美国西部地区的Pika-特异性表面活动时间。然后,我们探讨了使用Macroclimate预测器(夏季温度)与SDMS中的机械预测器(预测表面活动时间)之间的差异。两种方法都准确地预测了当前和过去的气候制度的佩卡纳课程。然而,活动模型预测到2070年在该地区预测的3-5摄氏度相似的年度温度增加8-19%的栖息地损失,这表明Pikas可以通过行为热调节缓冲一些气候变化效应可以通过机械建模捕获。通过在不同建模方法商定和在分歧领域提供一系列结果的地区提供更高的既系,将机构加入到建模中增加了价值。它还提供了一种更接近的变量,将动物分布与气候相关,允许调查如何栖息地特征和有内型表型变化如何允许PIKA在通用SDMS预期的区域内存在。只有少量易于获得的数据需要参数化任何吸热器的机械模型,并且它可以通过明确建模广泛适用的直接生理效果来改善SDM预测:气候施加对活动的限制。更完整的理解是为了告知气候适应行动,管理战略和保护计划。

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