首页> 外文期刊>Ecology and Evolution >Models of Eucalypt phenology predict bat population flux
【24h】

Models of Eucalypt phenology predict bat population flux

机译:桉树物候模型预测蝙蝠种群数量

获取原文
获取外文期刊封面目录资料

摘要

Abstract Fruit bats (Pteropodidae) have received increased attention after the recent emergence of notable viral pathogens of bat origin. Their vagility hinders data collection on abundance and distribution, which constrains modeling efforts and our understanding of bat ecology, viral dynamics, and spillover. We addressed this knowledge gap with models and data on the occurrence and abundance of nectarivorous fruit bat populations at 3 day roosts in southeast Queensland. We used environmental drivers of nectar production as predictors and explored relationships between bat abundance and virus spillover. Specifically, we developed several novel modeling tools motivated by complexities of fruit bat foraging ecology, including: (1) a dataset of spatial variables comprising Eucalypt-focused vegetation indices, cumulative precipitation, and temperature anomaly; (2) an algorithm that associated bat population response with spatial covariates in a spatially and temporally relevant way given our current understanding of bat foraging behavior; and (3) a thorough statistical learning approach to finding optimal covariate combinations. We identified covariates that classify fruit bat occupancy at each of our three study roosts with 86?¢????93% accuracy. Negative binomial models explained 43?¢????53% of the variation in observed abundance across roosts. Our models suggest that spatiotemporal heterogeneity in Eucalypt-based food resources could drive at least 50% of bat population behavior at the landscape scale. We found that 13 spillover events were observed within the foraging range of our study roosts, and they occurred during times when models predicted low population abundance. Our results suggest that, in southeast Queensland, spillover may not be driven by large aggregations of fruit bats attracted by nectar-based resources, but rather by behavior of smaller resident subpopulations. Our models and data integrated remote sensing and statistical learning to make inferences on bat ecology and disease dynamics. This work provides a foundation for further studies on landscape-scale population movement and spatiotemporal disease dynamics.
机译:摘要在最近发现蝙蝠起源的病毒病原体之后,蝙蝠(Pteropodidae)受到了越来越多的关注。它们的易变性阻碍了有关丰度和分布的数据收集,这限制了建模工作以及我们对蝙蝠生态,病毒动力学和溢出的理解。我们用昆士兰州东南部3天栖息地的食肉果蝠种群发生和丰富度的模型和数据解决了这一知识鸿沟。我们将花蜜生产的环境驱动因素用作预测因子,并探讨了蝙蝠数量与病毒外溢之间的关系。具体而言,我们开发了多种新颖的建模工具,这些工具受果蝠觅食生态系统的复杂性驱动,其中包括:(1)空间变量数据集,包括以桉树为中心的植被指数,累积降水量和温度异常; (2)根据目前对蝙蝠觅食行为的了解,以空间和时间相关的方式将蝙蝠种群响应与空间协变量相关联的算法; (3)全面的统计学习方法,以寻找最佳协变量组合。我们确定了三个变量来对果蝠的占有率进行分类的协变量,其准确度为86%至93%。负二项式模型解释了栖息地中观测到的丰度变化的43%至53%。我们的模型表明,基于桉树的食物资源在时空上的异质性可能会在景观尺度上驱动至少50%的蝙蝠种群行为。我们发现在我们研究栖息地的觅食范围内观察到了13个溢出事件,这些事件发生在模型预测种群数量较低的时期。我们的结果表明,在昆士兰州东南部,外溢可能不是由花蜜为基础的资源所吸引的大型果蝠聚集所驱动,而是由较小的居民亚种群的行为所驱动。我们的模型和数据集成了遥感和统计学习,可以推断蝙蝠的生态和疾病动态。这项工作为进一步研究景观规模的人口流动和时空疾病动态提供了基础。

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号