Demšar Urška, Zein Beate, Long Jed A
School of Geography & Sustainable Development, University of St Andrews, Irvine Building, North Street, St Andrews, KT16 9AL, Scotland, UK.
Norwegian Institute for Nature Research, Trondheim, Norway.
Mov Ecol. 2025 Mar 11;13(1):16. doi: 10.1186/s40462-025-00543-8.
Avian navigation has fascinated researchers for many years. Yet, despite a vast amount of literature on the topic it remains a mystery how birds are able to find their way across long distances while relying only on cues available locally and reacting to those cues on the fly. Navigation is multi-modal, in that birds may use different cues at different times as a response to environmental conditions they find themselves in. It also operates at different spatial and temporal scales, where different strategies may be used at different parts of the journey. This multi-modal and multi-scale nature of navigation has however been challenging to study, since it would require long-term tracking data along with contemporaneous and co-located information on environmental cues. In this paper we propose a new alternative data-driven paradigm to the study of avian navigation. That is, instead of taking a traditional theory-based approach based on posing a research question and then collecting data to study navigation, we propose a data-driven approach, where large amounts of data, not purposedly collected for a specific question, are analysed to identify as-yet-unknown patterns in behaviour. Current technological developments have led to large data collections of both animal tracking data and environmental data, which are openly available to scientists. These open data, combined with a data-driven exploratory approach using data mining, machine learning and artificial intelligence methods, can support identification of unexpected patterns during migration, and lead to a better understanding of multi-modal navigational decision-making across different spatial and temporal scales.
鸟类导航已经吸引研究人员多年。然而,尽管关于这个主题有大量文献,但鸟类如何仅依靠当地可得的线索并即时对这些线索做出反应,从而能够远距离找到归途,仍然是个谜。导航是多模态的,因为鸟类可能在不同时间使用不同线索,以应对它们所处的环境条件。它还在不同的空间和时间尺度上运作,在旅程的不同阶段可能会使用不同的策略。然而,导航的这种多模态和多尺度性质一直具有研究挑战性,因为这需要长期跟踪数据以及关于环境线索的同期和同地信息。在本文中,我们提出了一种研究鸟类导航的全新替代数据驱动范式。也就是说,我们不是采用基于提出研究问题然后收集数据来研究导航的传统理论方法,而是提出一种数据驱动方法,即分析大量并非特意为特定问题收集的数据,以识别行为中尚未知晓的模式。当前的技术发展带来了动物跟踪数据和环境数据的大量收集,科学家可以公开获取这些数据。这些开放数据,结合使用数据挖掘、机器学习和人工智能方法的数据驱动探索方法,可以支持识别迁徙过程中意想不到的模式,并有助于更好地理解不同空间和时间尺度上的多模态导航决策。