Department of Integrative Biology, Oregon State University, Corvallis, Oregon, 97331, USA.
School of Natural Resources and the Environment, University of Arizona, Tucson, Arizona, 85721, USA.
Ecology. 2017 May;98(5):1201-1216. doi: 10.1002/ecy.1761. Epub 2017 Apr 18.
Temporal environmental fluctuations, such as seasonality, exert strong controls on biodiversity. While the effects of seasonality are well known, the predictability of fluctuations across years may influence seasonality in ways that are less well understood. The ability of a habitat to support unique, non-nested assemblages of species at different times of the year should depend on both seasonality (occurrence of events at specific periods of the year) and predictability (the reliability of event recurrence) of characteristic ecological conditions. Drawing on tools from wavelet analysis and information theory, we developed a framework for quantifying both seasonality and predictability of habitats, and applied this using global long-term rainfall data. Our analysis predicted that temporal beta diversity should be maximized in highly predictable and highly seasonal climates, and that low degrees of seasonality, predictability, or both would lower diversity in characteristic ways. Using stream invertebrate communities as a case study, we demonstrated that temporal species diversity, as exhibited by community turnover, was determined by a balance between temporal environmental variability (seasonality) and the reliability of this variability (predictability). Communities in highly seasonal mediterranean environments exhibited strong oscillations in community structure, with turnover from one unique community type to another across seasons, whereas communities in aseasonal New Zealand environments fluctuated randomly. Understanding the influence of seasonal and other temporal scales of environmental oscillations on diversity is not complete without a clear understanding of their predictability, and our framework provides tools for examining these trends at a variety of temporal scales, seasonal and beyond. Given the uncertainty of future climates, seasonality and predictability are critical considerations for both basic science and management of ecosystems (e.g., dam operations, bioassessment) spanning gradients of climatic variability.
时间环境波动,如季节性,对生物多样性施加了强大的控制。虽然季节性的影响是众所周知的,但跨年度波动的可预测性可能会以不太为人理解的方式影响季节性。一个栖息地在一年中的不同时间支持独特的、非嵌套的物种组合的能力应该取决于季节性(事件在一年中特定时期的发生)和可预测性(特征生态条件事件重现的可靠性)。利用小波分析和信息论的工具,我们开发了一个量化栖息地季节性和可预测性的框架,并使用全球长期降雨数据应用了该框架。我们的分析预测,时间 beta 多样性在高度可预测和高度季节性的气候中应该最大化,而季节性、可预测性或两者的低程度将以特定的方式降低多样性。以溪流无脊椎动物群落为例,我们证明了时间物种多样性,如群落周转率所表现的,是由时间环境变异性(季节性)和这种变异性的可靠性(可预测性)之间的平衡决定的。在高度季节性的地中海环境中,群落结构表现出强烈的振荡,在季节之间从一种独特的群落类型转变为另一种类型,而在无季节性的新西兰环境中,群落则随机波动。如果不明确了解季节性和其他时间尺度的环境波动的可预测性,就无法完全理解其对多样性的影响,而我们的框架提供了在各种时间尺度上(季节性和非季节性)检查这些趋势的工具。考虑到未来气候的不确定性,季节性和可预测性是跨越气候变异性梯度的基础科学和生态系统管理(例如,水坝运行、生物评估)的关键考虑因素。