Graduate School of Fisheries Sciences, Hokkaido University, Minato-cho 3-1-1, Hakodate, Hokkaido, 041-8611, Japan.
Faculty of Human Sciences, Waseda University, 2-579-15 Mikajima, Tokorozawa, Saitama 359-1192, Japan.
J Environ Manage. 2022 Aug 15;316:115220. doi: 10.1016/j.jenvman.2022.115220. Epub 2022 May 23.
Promoting the use of renewable energy and conserving biodiversity are conflicting issues that need addressing. While the development of offshore wind facilities/turbines is accelerating, many seabirds have been exposed to collisions with wind turbines. We must identify high collision areas and avoid the construction of wind turbines in these spaces to reduce these conflicts. One solution is to develop useful finer scale sensitivity maps. In this study, we created a fine-scale map of collision risk by spatial modelling using information from bird flights at sea and explored the relative importance of each geographic variable relevant to the risk. Between 2016 and 2019, we collected 3D-location data from 117 black-tailed gulls (Larus crassirostris) of three colonies in two areas and 21 slaty-backed gulls (L. schistisagus) of four colonies in one area of northern Hokkaido, Japan. The spatial models that explain the occurrence of M-zone flight, which is the flight within the heights of high collision risk (20-140 m height), were constructed at a 1 km mesh using a random forest algorithm, a machine-learning tool. The model satisfactory predicted the spatial distribution of M-zone flights using geographic variables and species (correlation coefficient: 0.57-0.94), although data had some degrees of variation between species, years, colonies, and areas. Our model can be applied to other regions, as long as we have general topological information and the locations of colonies and harbors. The distance to the breeding colony and the nearest harbors were important, and the collision risk was 6-7 times higher within 15 km from the colonies and 5 km from harbors. Black-tailed gulls used different sites for foraging and commuting between years, whereas slaty-backed gulls used relatively consistent sites. These variations between species and among years suggest that collecting bird data over multiple years is necessary and effective for creating a generally applicable sensitivity map.
推广使用可再生能源和保护生物多样性是相互矛盾的问题,需要加以解决。随着海上风力发电设施/涡轮机的发展,许多海鸟暴露在与风力涡轮机碰撞的风险中。我们必须确定高碰撞区域,并避免在这些空间建设风力涡轮机,以减少这些冲突。一种解决方案是开发有用的更精细尺度的敏感图。在这项研究中,我们使用来自海上鸟类飞行的信息,通过空间建模创建了一个碰撞风险的精细尺度图,并探索了与风险相关的每个地理变量的相对重要性。在 2016 年至 2019 年期间,我们在日本北海道北部的两个地区的三个繁殖地收集了 117 只黑尾海鸥(Larus crassirostris)和一个地区的四个繁殖地的 21 只斑背海鸥(L. schistisagus)的 3D 位置数据。使用随机森林算法(一种机器学习工具),在 1 公里的网格上构建了解释 M 区飞行(在高碰撞风险(20-140 米高度)范围内的飞行)发生的空间模型。该模型使用地理变量和物种(相关系数:0.57-0.94)对 M 区飞行的空间分布进行了令人满意的预测,尽管数据在物种、年份、繁殖地和地区之间存在一定程度的变化。只要我们有一般的拓扑信息以及繁殖地和港口的位置,我们的模型就可以应用于其他地区。繁殖地的距离和最近的港口是重要的,在距离繁殖地 15 公里以内和距离港口 5 公里以内的地区,碰撞风险要高出 6-7 倍。黑尾海鸥在不同年份的觅食和通勤之间使用不同的地点,而斑背海鸥则使用相对一致的地点。这些物种间和年份间的差异表明,多年来收集鸟类数据对于创建一个普遍适用的敏感图是必要和有效的。