利用隐马尔可夫模型从非平稳时间序列中开发生态系统指标

IF 2.6 3区 环境科学与生态学 Q2 ECOLOGY
Zoe R. Rand , Eric J. Ward , Jeanette E. Zamon , Thomas P. Good , Chris J. Harvey
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引用次数: 0

摘要

生态指标是了解生态系统变化和实施基于生态系统的渔业管理的重要机制,但要制定有用的指标,就必须考虑到生态系统随时间变化而产生的非稳态过程。这就需要采用适应性更强的统计建模方法。隐马尔可夫模型(HMMs)提供了一个稳健的框架,可从嘈杂的时间序列数据中区分潜在的生态系统变化。在本文中,我们将以加利福尼亚洋流大型海洋生态系统的两个案例研究为重点,说明隐马尔可夫模型在开发基于模型的非稳态系统生态指标方面的强大功能。在第一个案例研究中,我们分析了从 1998 年到 2022 年的四个温度时间序列,这些温度序列被用作该系统北部幼年鲑鱼所经历的环境条件的指标。我们应用了一个包含时间趋势的三态 HMM 模型,以解释由于海洋整体变暖而导致的均值随时间变化的非平稳性。该模型的输出结果显示,加州洋流中所有四个指标的温度都在上升,大多数年份都被归入最温暖的估计状态。在第二个案例研究中,我们分析了北加州洋流海鸟密度从 2003 年到 2022 年的九个时间序列,以证明 HMM 如何有助于识别反映不同生态系统过程(包括海鸟对幼年鲑鱼的潜在捕食压力)且具有不同方差的指标集。我们发现,海鸟数据最有力地证明了存在两种截然不同的时间机制,2010 年之后出现了突然的转变。虽然某些物种的平均密度略有变化,但这一制度转变的最佳特征是变异性的变化:以烟灰剪鸥(Ardenna grisea)和卡辛小鸥(Ptychoramphus aleuticus)为代表的物种密度变异性更大,而普通马赫(Uria aalge)和海鸥估计在 2010 年之后变异性更小。红嘴鸥、卡辛小鸥、烟灰剪鸥、粉足剪鸥和海鸥都是北加州洋流变化的有用指标,因为它们对这一变化的反应不同。总之,我们的分析迈出了第一步,说明了在非稳态系统中应用 HMMs 开发生态系统指标的可能性,并提供了一个可广泛应用于世界各地生态系统的框架。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Using Hidden Markov Models to develop ecosystem indicators from non-stationary time series

Ecological indicators are important mechanisms for understanding ecosystem change and implementing Ecosystem Based Fishery Management, but the development of useful indicators must account for ecosystem shifts that result in non-stationary processes over time. This necessitates the adoption of more adaptable statistical modeling approaches. Hidden Markov Models (HMMs) provide a robust framework for distinguishing underlying ecosystem shifts from noisy time-series data. In this paper, we illustrate the power of HMMs to develop model-based ecological indicators of non-stationary systems, focusing on two case studies from the California Current Large Marine Ecosystem. In the first case study, we analyze four temperature time series from 1998 to 2022 that are used as indicators for environmental conditions experienced by juvenile salmon in the northern portion of the system. We apply a three-state HMM incorporating temporal trends to account for non-stationarity in the means over time due to overall ocean warming. Output from this model reveals increasing temperatures for all four metrics in the California Current, with most years being assigned to the warmest estimated state. In our second case study, we analyze nine time series of seabird densities in the northern California Current from 2003 to 2022, to demonstrate how HMMs can be useful to identify sets of indicators that reflect different ecosystem processes, including potential seabird predation pressure on juvenile salmon, and have different variances. We found the strongest support for the existence of two distinct temporal regimes in the seabird data, with an abrupt shift occurring after 2010. While mean densities changed slightly for some species, this regime shift can be best characterized with a shift in variances: sooty shearwaters (Ardenna grisea) and Cassin's auklets (Ptychoramphus aleuticus) represented species with densities becoming more variable, while common murres (Uria aalge) and gulls were estimated to have become less variable after 2010. Common murres, Cassin's auklets, sooty shearwaters, pink-footed shearwaters (Ardenna creatopus) and gulls all represent species that may be useful indicators of change in the northern California Current, because of their differential responses to this regime change. Overall, our analysis provides a first step illustrating the potential applications of HMMs to developing ecosystem indicators in non-stationary systems and a framework that is widely useful for applications to ecosystems around the world.

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来源期刊
Ecological Modelling
Ecological Modelling 环境科学-生态学
CiteScore
5.60
自引率
6.50%
发文量
259
审稿时长
69 days
期刊介绍: The journal is concerned with the use of mathematical models and systems analysis for the description of ecological processes and for the sustainable management of resources. Human activity and well-being are dependent on and integrated with the functioning of ecosystems and the services they provide. We aim to understand these basic ecosystem functions using mathematical and conceptual modelling, systems analysis, thermodynamics, computer simulations, and ecological theory. This leads to a preference for process-based models embedded in theory with explicit causative agents as opposed to strictly statistical or correlative descriptions. These modelling methods can be applied to a wide spectrum of issues ranging from basic ecology to human ecology to socio-ecological systems. The journal welcomes research articles, short communications, review articles, letters to the editor, book reviews, and other communications. The journal also supports the activities of the [International Society of Ecological Modelling (ISEM)](http://www.isemna.org/).
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