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BEESCOUT: A model of bee scouting behaviour and a software tool for characterizing nectar/pollen landscapes for BEEHAVE

机译:BEESCOUT:蜂探行为模型和表征BEEHAVE的花蜜/花粉景观的软件工具

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摘要

class="kwd-title">Keywords: Honeybee, Bumblebee, Searching, Flight pattern, Harmonic radar, Individual-based model class="head no_bottom_margin" id="abs0015title">AbstractSocial bees are central place foragers collecting floral resources from the surrounding landscape, but little is known about the probability of a scouting bee finding a particular flower patch. We therefore developed a software tool, BEESCOUT, to theoretically examine how bees might explore a landscape and distribute their scouting activities over time and space. An image file can be imported, which is interpreted by the model as a “forage map” with certain colours representing certain crops or habitat types as specified by the user. BEESCOUT calculates the size and location of these potential food sources in that landscape relative to a bee colony. An individual-based model then determines the detection probabilities of the food patches by bees, based on parameter values gathered from the flight patterns of radar-tracked honeybees and bumblebees. Various “search modes” describe hypothetical search strategies for the long-range exploration of scouting bees. The resulting detection probabilities of forage patches can be used as input for the recently developed honeybee model BEEHAVE, to explore realistic scenarios of colony growth and death in response to different stressors. In example simulations, we find that detection probabilities for food sources close to the colony fit empirical data reasonably well. However, for food sources further away no empirical data are available to validate model output. The simulated detection probabilities depend largely on the bees’ search mode, and whether they exchange information about food source locations. Nevertheless, we show that landscape structure and connectivity of food sources can have a strong impact on the results. We believe that BEESCOUT is a valuable tool to better understand how landscape configurations and searching behaviour of bees affect detection probabilities of food sources. It can also guide the collection of relevant data and the design of experiments to close knowledge gaps, and provides a useful extension to the BEEHAVE honeybee model, enabling future users to explore how landscape structure and food availability affect the foraging decisions and patch visitation rates of the bees and, in consequence, to predict colony development and survival.
机译:<!-fig ft0-> <!-fig @ position =“ anchor” mode =文章f4-> <!-fig mode =“ anchred” f5-> <!-fig / graphic | fig / alternatives / graphic mode =“ anchored” m1-> class =“ kwd-title”>关键字:蜜蜂,大黄蜂,搜索,飞行模式,谐波雷达,基于个人的模型 class =“头no_bottom_margin“ id =” abs0015title“>摘要社交蜜蜂是从周围景观中收集花卉资源的中心觅食者,但对于侦察蜜蜂发现特定花斑的可能性知之甚少。因此,我们开发了软件工具BEESCOUT,从理论上研究了蜜蜂如何探索风景并在时间和空间上分布其搜寻活动。可以导入图像文件,该图像文件被模型解释为“饲草图”,其中某些颜色代表用户指定的某些农作物或栖息地类型。 BEESCOUT计算相对于蜂群的景观中这些潜在食物来源的大小和位置。然后,基于个体的模型基于从雷达跟踪的蜜蜂和大黄蜂的飞行模式中收集的参数值,确定蜜蜂对食物片的检测概率。各种“搜索模式”描述了对侦察蜂进行远程探索的假设搜索策略。所得牧草斑块的检测概率可以用作最新开发的蜜蜂模型BEEHAVE的输入,以探索对不同压力源的菌​​落生长和死亡的现实情况。在示例模拟中,我们发现接近殖民地的食物源的检测概率非常适合经验数据。但是,对于更远的食物来源,没有经验数据可用于验证模型输出。模拟的检测概率很大程度上取决于蜜蜂的搜索模式,以及它们是否交换有关食物来源位置的信息。然而,我们表明景观结构和食物来源的连通性可能对结果产生重大影响。我们认为,BEESCOUT是一种有价值的工具,可以更好地了解景观配置和蜜蜂的搜索行为如何影响食物源的检测概率。它还可以指导相关数据的收集和实验设计以弥合知识鸿沟,并为BEEHAVE蜜蜂模型提供了有用的扩展,使未来的用户能够探索景观结构和食物的供应量如何影响觅食决策和斑块访视率。蜜蜂,从而预测菌落的发育和存活。

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