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识别竞争随机复合种群中辅助迁移的稳健策略。

Identifying robust strategies for assisted migration in a competitive stochastic metacommunity.

机构信息

Department of Environmental Science and Policy, University of California, Davis, Davis, California, USA.

出版信息

Conserv Biol. 2021 Dec;35(6):1809-1820. doi: 10.1111/cobi.13736. Epub 2021 Jun 15.

Abstract

Assisted migration (AM) is the translocation of species beyond their historical range to locations that are expected to be more suitable under future climate change. However, a relocated population may fail to establish in its donor community if there is high uncertainty in decision-making, climate, and interactions with the recipient ecological community. To quantify the benefit to persistence and risk of establishment failure of AM under different management scenarios (e.g., choosing target species, proportion of population to relocate, and optimal location to relocate), we built a stochastic metacommunity model to simulate several species reproducing, dispersing, and competing on a temperature gradient as temperature increases over time. Without AM, the species were vulnerable to climate change when they had low population sizes, short dispersal, and strong poleward competition. When relocating species that exemplified these traits, AM increased the long-term persistence of the species most when relocating a fraction of the donor population, even if the remaining population was very small or rapidly declining. This suggests that leaving behind a fraction of the population could be a robust approach, allowing managers to repeat AM in case they move the species to the wrong place and at the wrong time, especially when it is difficult to identify a species' optimal climate. We found that AM most benefitted species with low dispersal ability and least benefited species with narrow thermal tolerances, for which AM increased extinction risk on average. Although relocation did not affect the persistence of nontarget species in our simple competitive model, researchers will need to consider a more complete set of community interactions to comprehensively understand invasion potential.

摘要

辅助迁移(AM)是将物种从其历史分布范围转移到预计在未来气候变化下更适宜的地点。然而,如果在决策、气候和与受体生态群落的相互作用方面存在高度不确定性,那么被重新安置的种群可能无法在其捐赠者社区中建立。为了量化在不同管理情景下(例如,选择目标物种、要迁移的种群比例以及要迁移的最佳位置)辅助迁移对持久性的益处和建立失败的风险,我们构建了一个随机元群落模型来模拟几个物种在温度梯度上繁殖、扩散和竞争,随着时间的推移温度升高。在没有 AM 的情况下,当物种的种群规模较小、扩散距离较短且向极竞争较强时,它们容易受到气候变化的影响。当重新安置具有这些特征的物种时,即使剩余的种群非常小或迅速减少,通过迁移一部分捐赠者种群,AM 也会最大程度地提高物种的长期生存能力。这表明,留下一部分种群可能是一种稳健的方法,允许管理者在他们将物种迁移到错误的地点和时间时重复进行 AM,特别是当难以确定物种的最佳气候时。我们发现,AM 对扩散能力低的物种最有益,对热耐受性窄的物种最不利,因为 AM 平均增加了这些物种的灭绝风险。虽然在我们的简单竞争模型中,重新安置不会影响非目标物种的持久性,但研究人员需要考虑更完整的群落相互作用集,以全面了解入侵潜力。

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