陆地移动物种分布的近期预测,用于极端天气事件下的适应性管理

IF 10.8 1区 环境科学与生态学 Q1 BIODIVERSITY CONSERVATION
Rachel Dobson, Stephen G. Willis, Stewart Jennings, Robert A. Cheke, Andrew J. Challinor, Martin Dallimer
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引用次数: 0

摘要

在全球范围内,流动物种是生态系统的关键组成部分。迁徙鸟类和游牧羚羊具有相当大的保护、经济或社会价值,而入侵昆虫则可能成为主要害虫,威胁粮食安全。极端天气事件的频率和强度在持续的气候变化中不断增加,导致流动物种的分布发生快速和不可预见的变化。这对其管理提出了挑战,可能导致种群数量下降,或加剧害虫的不利影响。在极端天气事件发生期间,短期、年内预测可能会预测到流动物种分布的变化,从而为适应性管理策略提供信息。在此,我们首次评估了极端天气下陆生物种分布的近期预测的稳健性。为此,我们生成了威胁南部非洲粮食安全的农作物害虫--红嘴奎利亚(Quelea quelea)的近期(提前 2 周至 7 个月)分布预测。为了评估性能,我们生成了 13 年(2004-2016 年)的物种分布后报,其中包括两次大旱。我们的研究表明,利用动态物种分布模型(D-SDM),可以在季节性提前期(最多提前 7 个月)、高分辨率和大空间尺度上准确预测阙里鸟的环境适宜性,包括在极端干旱条件下。D-SDM 预测准确性和近期后报可靠性主要取决于训练数据的可用性,而不是总体天气条件。我们讨论了如何利用预报系统为流动物种的适应性管理提供信息,并减轻极端天气的影响,包括通过预测瞬态管理的地点和时间,以及积极调动资源做好应对准备。我们的研究结果表明,这种技术可以广泛应用于全球范围内对流动物种进行更具弹性和适应性的管理。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Near-Term Forecasting of Terrestrial Mobile Species Distributions for Adaptive Management Under Extreme Weather Events

Near-Term Forecasting of Terrestrial Mobile Species Distributions for Adaptive Management Under Extreme Weather Events

Near-Term Forecasting of Terrestrial Mobile Species Distributions for Adaptive Management Under Extreme Weather Events

Across the globe, mobile species are key components of ecosystems. Migratory birds and nomadic antelope can have considerable conservation, economic or societal value, while irruptive insects can be major pests and threaten food security. Extreme weather events, which are increasing in frequency and intensity under ongoing climate change, are driving rapid and unforeseen shifts in mobile species distributions. This challenges their management, potentially leading to population declines, or exacerbating the adverse impacts of pests. Near-term, within-year forecasting may have the potential to anticipate mobile species distribution changes during extreme weather events, thus informing adaptive management strategies. Here, for the first time, we assess the robustness of near-term forecasting of the distribution of a terrestrial species under extreme weather. For this, we generated near-term (2 weeks to 7 months ahead) distribution forecasts for a crop pest that is a threat to food security in southern Africa, the red-billed quelea Quelea quelea. To assess performance, we generated hindcasts of the species distribution across 13 years (2004–2016) that encompassed two major droughts. We show that, using dynamic species distribution models (D-SDMs), environmental suitability for quelea can be accurately forecast with seasonal lead times (up to 7 months ahead), at high resolution, and across a large spatial scale, including in extreme drought conditions. D-SDM predictive accuracy and near-term hindcast reliability were primarily driven by the availability of training data rather than overarching weather conditions. We discuss how a forecasting system could be used to inform adaptive management of mobile species and mitigate impacts of extreme weather, including by anticipating sites and times for transient management and proactively mobilising resources for prepared responses. Our results suggest that such techniques could be widely applied to inform more resilient, adaptive management of mobile species worldwide.

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来源期刊
Global Change Biology
Global Change Biology 环境科学-环境科学
CiteScore
21.50
自引率
5.20%
发文量
497
审稿时长
3.3 months
期刊介绍: Global Change Biology is an environmental change journal committed to shaping the future and addressing the world's most pressing challenges, including sustainability, climate change, environmental protection, food and water safety, and global health. Dedicated to fostering a profound understanding of the impacts of global change on biological systems and offering innovative solutions, the journal publishes a diverse range of content, including primary research articles, technical advances, research reviews, reports, opinions, perspectives, commentaries, and letters. Starting with the 2024 volume, Global Change Biology will transition to an online-only format, enhancing accessibility and contributing to the evolution of scholarly communication.
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