Modelling foraging strategies of honey bees as agents in a dynamic landscape representation

Nuno Capela, Xiaodong Duan, Elżbieta Ziółkowska, C. Topping
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Abstract

Introduction: Both intrinsic colony mechanisms and external environmental variables affect the honey bee colony development rates and response and a key aspect of this is the use of resources within the landscape by honey bees. Although several models have been developed to explore the foraging behaviour of bees, none fully considered the spatial and temporal dynamics of landscape resources and the role of the colony in the process. Methodology: Here, we introduce a new honey bee foraging model being developed as a part of the ApisRAM honey bee colony model. Based on agent-based modelling, we used a dynamic ALMaSS landscape model enhanced with floral resource modelling to assess the impacts of weather conditions and resource availability on the possible foraging behaviour of honey bees. Several possible mechanisms (defined, based on honey bee traits) for scouting and foraging were investigated, separately for nectar and pollen collection, including prioritising foraging polygons for nectar foraging according to their distance to the colony, the quality or the energetic efficiency and, for pollen foraging, according to their distance to the colony and pollen quantity. Results: If model foraging bees prioritised the polygons, based on their distance from the colony, the number of unsuccessful flights increased compared to other tested strategies and the total amount of sugar collected showed a high variability. Contrary to expectations, the energetic efficiency strategy did not provide the colony with the highest amount of sugar. Overall, the tested strategies provide different outcomes on the collection of resources, the number of performed flights and their success rate, evidencing that the model's outcome at the colony level arises from the individual types of behaviour. Conclusions and Relevance: Variability in the mass of collected nectar and pollen was found mostly when scout bees applied the distance strategy. This higher variability in sugar collection means that model bees were not able to find the most profitable foraging sites at the landscape level, but only at the local level. Other strategies showed less dependence on the surrounding landscape (i.e. quality or random), but it comes at a cost (i.e. lower production for both nectar and pollen collection). These outputs help us evaluate which strategies could be used for future model development and confirm the models' ability to create dynamic responses. These responses at the colony level were only possible thanks to the implementation of a dynamic landscape model and dynamic spatiotemporal resource model, as well as implementing a social communication mechanism for bees to share information about the resources. Plant nectar production and quality information is essential to predict honey bee foraging distribution. In future model development, the implementation of pollen quality should also be explored to evaluate if it influences the overall pollen collection.
模拟蜜蜂在动态景观中的觅食策略
导言:蜂群的内在机制和外部环境变量都会影响蜂群的发展速度和反应,其中一个重要方面就是蜜蜂对景观资源的利用。虽然已经开发了一些模型来探索蜜蜂的觅食行为,但没有一个模型充分考虑到景观资源的时空动态以及蜂群在这一过程中的作用。研究方法:在此,我们介绍一种新的蜜蜂觅食模型,该模型是 ApisRAM 蜂群模型的一部分。在基于代理建模的基础上,我们使用了一个动态 ALMaSS 景观模型,并通过花卉资源建模来评估天气条件和资源可用性对蜜蜂可能的觅食行为的影响。我们研究了蜜蜂侦察和觅食的几种可能机制(根据蜜蜂的特征定义),分别用于采集花蜜和花粉,包括根据蜜蜂与蜂群的距离、花蜜质量或能量效率确定觅食多边形的优先顺序,以及根据蜜蜂与蜂群的距离和花粉数量确定花粉觅食多边形的优先顺序。结果如果模型觅食蜂根据它们与蜂群的距离优先选择多边形,那么与其他测试策略相比,不成功的飞行次数会增加,而且采集到的糖分总量显示出很高的变异性。与预期相反,能量效率策略并没有为蜂群提供最高的糖量。总之,测试的策略在资源收集、飞行次数和成功率方面提供了不同的结果,这证明模型在蜂群层面的结果来自于个体的行为类型。结论和相关性:当侦察蜂采用距离策略时,采集的花蜜和花粉的数量会出现较大差异。这种较高的采糖变异性意味着模式蜂无法在景观水平上找到最有利可图的觅食地点,而只能在局部水平上找到。其他策略对周围景观的依赖性较小(即质量或随机性),但这是有代价的(即花蜜和花粉采集的产量都较低)。这些结果有助于我们评估哪些策略可用于未来的模型开发,并证实了模型创建动态响应的能力。只有实施了动态景观模型和动态时空资源模型,以及实施了蜜蜂共享资源信息的社会交流机制,才有可能在蜂群层面做出这些反应。植物花蜜的产量和质量信息对于预测蜜蜂的觅食分布至关重要。在未来的模型开发中,还应探索花粉质量的实施,以评估其是否会影响整体花粉采集。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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