Roy Amédée, Désert Thibault, Delcourt Vincent, Bon Cécile, Schmid Baptiste
France Energies Marines, 525 Avenue Alexis de Rochon, Plouzané, 29280, France.
Météo-France, 42 Avenue Gaspard Coriolis, Toulouse, 31100, France.
Int J Biometeorol. 2025 Jul;69(7):1617-1630. doi: 10.1007/s00484-025-02917-4. Epub 2025 Apr 19.
Operational bird migration forecast models have recently offered promising perspectives for mitigating the impacts of human activities on avifauna. These models improve on simple phenological expectations by harnessing the intricate relationship between bird movements and weather conditions to forecast migration fluxes days in advance. However, state-of-the-art models face limitations as bird fluxes are often simply modelled as a response to local and instantaneous weather without accounting for previous and synoptic weather patterns. This study focuses on enhancing bird migration forecasts by evaluating the contributions of weather dynamics at various spatial and temporal scales. We use bird vertical density data from 9 French weather radars over 6 years and employ gradient-boosted regression trees for predictions. Dimension reduction tools are used to describe local and continental-scale weather conditions from the previous three days. We also explore the contributions of the different meteorological metrics considered using explainable regression trees tools. Our model improved phenology models by explaining about 1.3 and 2.25 times more additional variance than approaches based on local and instantaneous weather conditions in spring and autumn, respectively. Local and instantaneous weather metrics contributed the most, but they mainly helped identifying nights with low migration. In contrast, weather metrics for previous 3 days were crucial to forecast highest intensity migration events, as they enabled to account for bird accumulation in relation to unfavorable weather locally and remotely. This study enhanced forecast accuracy and contributed to a deeper understanding of the factors influencing bird migration. It enabled the identification local and synoptic weather patterns related to important migration events without a priori knowledge. It is therefore easy to interpret, easy to transfer to other ecological systems, and promising for the accurate forecast of migration peaks. Forecasted peaks can guide conservation efforts, for example by dimming lights for birds at night or by shutting down wind turbines.
实用的鸟类迁徙预测模型最近为减轻人类活动对鸟类的影响提供了有前景的视角。这些模型通过利用鸟类迁徙与天气状况之间的复杂关系,提前数天预测迁徙流量,改进了简单的物候预期。然而,由于鸟类流量通常仅被简单建模为对当地即时天气的响应,而未考虑先前和天气形势模式,最先进的模型面临局限性。本研究聚焦于通过评估不同时空尺度天气动态的贡献来增强鸟类迁徙预测。我们使用来自9个法国气象雷达6年的鸟类垂直密度数据,并采用梯度提升回归树进行预测。降维工具用于描述前三天的当地和大陆尺度天气状况。我们还使用可解释回归树工具探索所考虑的不同气象指标的贡献。我们的模型改进了物候模型,在春季和秋季分别比基于当地和即时天气状况的方法多解释了约1.3倍和2.25倍的额外方差。当地和即时天气指标贡献最大,但它们主要有助于识别迁徙量低的夜晚。相比之下,前三天的天气指标对于预测最高强度的迁徙事件至关重要,因为它们能够考虑到鸟类因当地和远程不利天气而聚集的情况。这项研究提高了预测准确性,并有助于更深入地理解影响鸟类迁徙的因素。它能够在没有先验知识的情况下识别与重要迁徙事件相关的当地和天气形势模式。因此,它易于解释,易于应用于其他生态系统,并且有望准确预测迁徙高峰。预测的高峰可以指导保护工作,例如在夜间调暗灯光或关闭风力涡轮机。