Biology Department, Woods Hole Oceanographic Institution, Woods Hole, Massachusetts, USA.
National Center for Atmospheric Research, Boulder, Colorado, USA.
Glob Chang Biol. 2022 Apr;28(7):2236-2258. doi: 10.1111/gcb.16041. Epub 2022 Jan 14.
Climate impacts are not always easily discerned in wild populations as detecting climate change signals in populations is challenged by stochastic noise associated with natural climate variability, variability in biotic and abiotic processes, and observation error in demographic rates. Detection of the impact of climate change on populations requires making a formal distinction between signals in the population associated with long-term climate trends from those generated by stochastic noise. The time of emergence (ToE) identifies when the signal of anthropogenic climate change can be quantitatively distinguished from natural climate variability. This concept has been applied extensively in the climate sciences, but has not been explored in the context of population dynamics. Here, we outline an approach to detecting climate-driven signals in populations based on an assessment of when climate change drives population dynamics beyond the envelope characteristic of stochastic variations in an unperturbed state. Specifically, we present a theoretical assessment of the time of emergence of climate-driven signals in population dynamics ( ). We identify the dependence of on the magnitude of both trends and variability in climate and also explore the effect of intrinsic demographic controls on . We demonstrate that different life histories (fast species vs. slow species), demographic processes (survival, reproduction), and the relationships between climate and demographic rates yield population dynamics that filter climate trends and variability differently. We illustrate empirically how to detect the point in time when anthropogenic signals in populations emerge from stochastic noise for a species threatened by climate change: the emperor penguin. Finally, we propose six testable hypotheses and a road map for future research.
气候影响在野生种群中并不总是容易察觉,因为在种群中检测气候变化信号受到与自然气候变异性、生物和非生物过程变异性以及人口率观测误差相关的随机噪声的挑战。检测气候变化对种群的影响需要在与长期气候趋势相关的种群信号与随机噪声产生的信号之间做出正式区分。出现时间 (ToE) 确定了何时可以从自然气候变异性中定量区分人为气候变化的信号。这个概念在气候科学中得到了广泛的应用,但在种群动态的背景下尚未得到探索。在这里,我们概述了一种基于评估气候变化何时将种群动态驱动到未受干扰状态下随机变化特征之外的方法,以检测种群中的气候驱动信号。具体来说,我们提出了一种理论评估方法,用于评估种群动态中气候驱动信号的出现时间 ( )。我们确定了 对气候趋势和变异性幅度的依赖性,还探讨了内在人口控制对 的影响。我们证明,不同的生活史(快速物种与慢速物种)、人口过程(生存、繁殖)以及气候与人口率之间的关系导致了对气候趋势和变异性的不同过滤。我们通过实例说明了如何检测由于气候变化而受到威胁的物种(帝企鹅)的种群中人为信号何时从随机噪声中出现。最后,我们提出了六个可检验的假设和未来研究的路线图。