“Perchance to dream?”: Assessing the effects of dispersal strategies on the fitness of expanding populations

IF 3.1 3区 环境科学与生态学 Q2 ECOLOGY Ecological Complexity Pub Date : 2022-06-01 DOI:10.1016/j.ecocom.2022.100987
N.I. Markov , E.E. Ivanko
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引用次数: 1

Abstract

Unraveling the patterns of animals’ movements is crucial to understanding the basics of biogeography, tracking range shifts resulting from climate change, and predicting and preventing biological invasions. Many researchers have modeled animals’ dispersal under the assumptions of various movement strategies, either predetermined or directed by external factors, but none have compared the effects of different movement strategies on population survival and fitness. In this paper, using an agent-based model with a landscape divided into cells of varying quality, we compare the ecological success of three movement and habitat selection strategies (MHSSs): (i) Smart, in which animals choose the locally optimal cell; (ii) Random, in which animals move randomly between cells without taking into account their quality; (iii) Dreamer, in which animals attempt to find a habitat of dream whose quality is much higher than that of the habitat available on the map. We compare the short-term success of these MHSSs in good, medium and bad environments. We also assess the effect of temporal variation of habitat quality (specifically, winter harshness) on the success of each MHSS. Success is measured in terms of survival rate, dispersal distance, accumulated energy and quality of settled habitat. The most general conclusion is that while survival rate, accumulated energy and quality of settled habitat are affected primarily by overall habitat composition (proportions of different habitat types in the landscape), dispersal distance depends mainly on the MHSS. In medium and good environments, the Dreamer strategy is highly successful: it simultaneously outperforms the Smart strategy in dispersal distance and the Random strategy in terms of the other metrics.

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“也许是做梦?”:评估扩散策略对扩大种群的适应性的影响
揭示动物运动的模式对于理解生物地理学的基础知识、追踪气候变化导致的范围变化以及预测和预防生物入侵至关重要。许多研究人员在各种运动策略的假设下对动物的分散进行了建模,这些策略要么是预先确定的,要么是由外部因素指导的,但没有人比较不同的运动策略对种群生存和适应性的影响。本文采用基于智能体的模型,将景观划分为不同质量的单元,比较了三种运动和栖息地选择策略(MHSSs)的生态成功率:(i)智能,即动物选择局部最优的单元;(ii)随机,即动物在不考虑其质量的情况下在细胞之间随机移动;(iii)做梦者,动物试图寻找一个比地图上的栖息地质量高得多的梦境栖息地。我们比较了这些mhss在良好、中等和恶劣环境下的短期成功。我们还评估了生境质量(特别是冬季严酷程度)的时间变化对每个MHSS成功的影响。成功的衡量标准是存活率、扩散距离、积累的能量和定居栖息地的质量。最普遍的结论是,虽然定居生境的存活率、累积能量和质量主要受生境整体组成(不同生境类型在景观中的比例)的影响,但扩散距离主要取决于MHSS。在中等和良好的环境中,梦想者策略非常成功:它在分散距离上同时优于智能策略,在其他指标上优于随机策略。
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来源期刊
Ecological Complexity
Ecological Complexity 环境科学-生态学
CiteScore
7.10
自引率
0.00%
发文量
24
审稿时长
3 months
期刊介绍: Ecological Complexity is an international journal devoted to the publication of high quality, peer-reviewed articles on all aspects of biocomplexity in the environment, theoretical ecology, and special issues on topics of current interest. The scope of the journal is wide and interdisciplinary with an integrated and quantitative approach. The journal particularly encourages submission of papers that integrate natural and social processes at appropriately broad spatio-temporal scales. Ecological Complexity will publish research into the following areas: • All aspects of biocomplexity in the environment and theoretical ecology • Ecosystems and biospheres as complex adaptive systems • Self-organization of spatially extended ecosystems • Emergent properties and structures of complex ecosystems • Ecological pattern formation in space and time • The role of biophysical constraints and evolutionary attractors on species assemblages • Ecological scaling (scale invariance, scale covariance and across scale dynamics), allometry, and hierarchy theory • Ecological topology and networks • Studies towards an ecology of complex systems • Complex systems approaches for the study of dynamic human-environment interactions • Using knowledge of nonlinear phenomena to better guide policy development for adaptation strategies and mitigation to environmental change • New tools and methods for studying ecological complexity
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