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首页> 外文期刊>The Journal of Applied Ecology >Predicting spatio‐temporal distributions of migratory populations using Gaussian process modelling
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Predicting spatio‐temporal distributions of migratory populations using Gaussian process modelling

机译:预测spatio时间分布迁徙人口使用高斯过程造型

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Abstract Knowledge concerning spatio‐temporal distributions of populations is a prerequisite for successful conservation and management of migratory animals. Achieving cost‐effective monitoring of large‐scale movements is often difficult due to lack of effective and inexpensive methods. Taiga bean goose Anser fabalis fabalis and tundra bean goose A. f. rossicus offer an excellent example of a challenging management situation with harvested migratory populations. The subspecies have different conservation statuses and population trends. However, their distribution overlaps during migration to an unknown extent, which, together with their similar appearance, has created a conservation–management dilemma. Gaussian process (GP) models are widely adopted in the field of statistics and machine learning, but have seldom been applied in ecology so far. We introduce the R package gplite for GP modelling and use it in our case study together with birdwatcher observation data to study spatio‐temporal differences between bean goose subspecies during migration in Finland in 2011–2019. We demonstrate that GP modelling offers a flexible and effective tool for analysing heterogeneous data collected by citizens. The analysis reveals spatial and temporal distribution differences between the two bean goose subspecies in Finland. Taiga bean goose migrates through the entire country, whereas tundra bean goose occurs only in a small area in south‐eastern Finland and migrates later than taiga bean goose. Synthesis and applications. Within the studied bean goose populations, harvest can be targeted at abundant tundra bean goose by restricting hunting to south‐eastern Finland and to the end of the migration period. In general, our approach combining citizen science data with GP modelling can be applied to study spatio‐temporal distributions of various populations and thus help in solving challenging management situations. The introduced R package gplite can be applied not only to ecological modelling, but to a wide range of analyses in other fields of science.
机译:抽象的知识关于spatio时间人口分布是一个先决条件成功的保护和管理迁徙的动物。监测的大型运动往往是规模由于缺乏有效的和困难便宜的方法。fabalis fabalis和苔原bean鹅a f。rossicus提供的一个很好的例子具有挑战性的管理情况与收获迁徙的人群。不同的保护状态和人口的趋势。在迁移到一个未知的程度,连同他们的外观相似,创建了一个物种保护管理困境。高斯过程(GP)模型是广泛采用统计和机器学习领域的,但到目前为止很少被应用于生态学。我们介绍了R包gplite GP建模和使用它在我们的案例研究观鸟者观测数据研究spatio bean鹅时间差异亚种在迁移在芬兰2011 - 2019。提供了一个灵活和有效的工具分析异构数据收集的公民。时间分布差异豆鹅亚种在芬兰。鹅迁移整个国家,鹅只发生在一个小而苔原bean在芬兰东部和南部地区迁移鹅比针叶林bean。应用程序。可以针对人群,收获丰富苔原bean鹅通过限制狩猎芬兰东部和南部的结束移民时期。与GP模型结合公民科学数据可以应用于研究spatio还是时间分布不同的种群,因此帮助解决具有挑战性的管理的情况。不仅适用于生态造型,但是广泛的分析在其他领域科学。

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