合肥新桥国际机场鸟类- 昆虫捕食网络及其对鸟击防范工作的新启示
作者:
作者单位:

1 安徽大学资源与环境工程学院 合肥 230601;2 合肥新桥国际机场 合肥 231271;3 浙江大学生命科学学院 杭州 310058

作者简介:

王瑜,女,硕士研究生;研究方向:动物生态学;E-mail: 2683854080@qq.com。

通讯作者:

中图分类号:

Q958

基金项目:

国家自然科学基金项目(No. 32370502,31872276);


Bird-Insect Predation Network and Its Implications for Bird Strike Prevention at Hefei Xinqiao International Airport
Author:
Affiliation:

1 School of Resources and Environmental Engineering, Anhui University, Hefei 230601; 2 Hefei Xinqiao International Airport,Hefei 231271; 3 College of Life Sciences, Zhejiang University, Hangzhou 310058, China

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    摘要:

    鸟类在机场区域活动造成的鸟击是机场运行安全的隐患之一,掌握机场环境中鸟类-昆虫的捕食 关系对于理解鸟击的成因具有重要意义。本研究以合肥新桥国际机场为例,构建了其中 21 种鸟类与所 食昆虫间的捕食网络,描述了该网络的结构特征:与零模型相比,网络表现为较低的连接度(0.147)、 加权嵌套性(15.287)和生态位重叠度(0.205),及较高的网络稳健性(0.621)、物种特化程度(0.745) 和明显的模块化(0.601),表明网络中鸟类与昆虫的互作较为特化,不同鸟类可能捕食特定的昆虫类群。 节点水平分析显示,网络中的关键鸟种为白鹭(Egretta garzetta)、大白鹭(Ardea alba)、凤头麦鸡(Vanellus vanellus)、斑嘴鸭(Anas znonorhyncha)和喜鹊(Pica serica),这些物种的中心性指数高于其他鸟类物 种,与该机场鸟击发生的高风险鸟种存在一致性;对网络稳健性影响较大的昆虫包括步甲科、蝼蛄科、 蟋蟀科以及粉蝶科物种,可通过管理控制这些物种的种群数量减少鸟类在机场的活动频率。本研究揭 示了合肥新桥国际机场生态系统中部分鸟类和昆虫的捕食网络关系,为机场鸟击防范工作提供了新的 视角。

    Abstract:

    [Objectives] The safe operation of airports is an important guarantee for air transportation and social traffic. Bird activity is one of the main factors threatening airport safety, and bird strikes can lead to serious aircraft damage and even casualties. Therefore, clarifying the ecological habits and predation relationships of birds in the airport area is of great significance for formulating effective bird strike prevention measures. Hence, this study constructs and analyzes the bird-insect predation network at Hefei Xinqiao International Airport. [Methods] We collected the struck bird samples from the perimeter and internal protective facilities of Hefei Xinqiao International Airport between October 2020 and September 2022. After dissecting and identifying these samples, we selected and recorded insects from the stomach contents. Species identification was conducted with reference to relevant books and reference. Insects were classified and counted at the family level. We used complete insects as individual records and, to avoid repetition, pieced together insect fragments and counted insects based on single body parts. Data were statistically analyzed in Excel. Network-level and species-level indicators were calculated, and the network robustness under different disturbances was analyzed by the “bipartite” package in R 4.4.1, and the key species of the network were identified. [Results] A total of 21 bird species samples were collected, and insects belonging to 39 families of 9 orders were detected. We recorded 120 types of 1 630 bird-insect predation interactions, generating a bipartite network (Fig. 2). Network-level analysis indicated that compared to the null model (Table 1), the network showed decreased connectance (0.147), weighted nestedness (15.287), and niche overlap (0.205), which suggested fewer connections between birds and insects and more independent interspecies interactions in the network. However, the robustness (0.621), species specialization (0.745), and modularity (0.601) were high, indicating a higher level of specialization in species interactions and a more stable network. The network comprised four modules, within which the interactions were intensive (Fig. 3). Node-level analysis revealed that key bird species in the network were Egretta garzetta, Ardea alba, Vanellus vanellus, Anas zonorhyncha, and Pica serica, which showed the centrality indices higher than other birds (Appendix 1). Insects significantly affecting the network stability included species of Carabidae, Gryllotalpidae, Cricotidae, and Pieridae (Appendix 2). On the basis of species degree, we obtained bird species extinction curves by removing insects from both directions. Compared with the random network, the interaction network showed decreased robustness after removal of insects with high species degree first. [Conclusion] In the man-made ecosystem of an airport, the bird-insect predation network has high modularity and specialization, being stable. Different bird species may target specific insect groups for predation. Key bird species in the network were identified, and changes in important insect species in the network can cause drastic changes in bird populations. It is recommended that future airport bird prevention work focus on these species, control insect populations from the perspective of species interaction networks, and reduce the distribution of birds near airports.

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王瑜,薛委委,邱兵涛,朱晨,万霞. 2025.合肥新桥国际机场鸟类- 昆虫捕食网络及其对鸟击防范工作的新启示. 动物学杂志, 60(6): 825-838.

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  • 收稿日期:2024-12-26
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  • 在线发布日期: 2025-12-20
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