Capinha César, Ceia-Hasse Ana, de-Miguel Sergio, Vila-Viçosa Carlos, Porto Miguel, Jarić Ivan, Tiago Patricia, Fernández Néstor, Valdez Jose, McCallum Ian, Pereira Henrique Miguel
Centre of Geographical Studies, Institute of Geography and Spatial Planning of the University of Lisbon, Lisbon, Portugal.
Associate Laboratory Terra Lisbon, Portugal.
Bioscience. 2024 Jul 9;74(6):383-392. doi: 10.1093/biosci/biae041. eCollection 2024 Jun.
The scarcity of long-term observational data has limited the use of statistical or machine-learning techniques for predicting intraannual ecological variation. However, time-stamped citizen-science observation records, supported by media data such as photographs, are increasingly available. In the present article, we present a novel framework based on the concept of relative phenological niche, using machine-learning algorithms to model observation records as a temporal sample of environmental conditions in which the represented ecological phenomenon occurs. Our approach accurately predicts the temporal dynamics of ecological events across large geographical scales and is robust to temporal bias in recording effort. These results highlight the vast potential of citizen-science observation data to predict ecological phenomena across space, including in near real time. The framework is also easily applicable for ecologists and practitioners already using machine-learning and statistics-based predictive approaches.
长期观测数据的稀缺限制了统计或机器学习技术在预测年内生态变化方面的应用。然而,由照片等媒体数据支持的带时间戳的公民科学观测记录越来越多。在本文中,我们提出了一个基于相对物候生态位概念的新框架,使用机器学习算法将观测记录建模为所代表的生态现象发生时的环境条件的时间样本。我们的方法能够准确预测大地理尺度上生态事件的时间动态,并且对记录工作中的时间偏差具有鲁棒性。这些结果凸显了公民科学观测数据在预测跨空间生态现象(包括近实时预测)方面的巨大潜力。该框架也很容易应用于已经在使用基于机器学习和统计的预测方法的生态学家和从业者。