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Testing models of bee foraging behavior through the analysis of pollen loads and floral density data

机译:通过分析花粉负荷和花密度数据测试蜜蜂觅食行为模型

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The composition of social bees' corbicular pollen loads contains information about both the bees' foraging behavior and the surrounding floral landscape. There have been, however, few attempts to integrate pollen composition and floral landscape to test hypotheses about foraging behavior. Here, we present an individual-based model that generates the species composition of pollen loads given a foraging model and a spatial distribution of floral resources. We apply this model to an existing dataset of inflorescence counts and bumble bee pollen loads sampled at different field sites in California. For two out of three sites, a foraging model consisting in correlated random walks with constant preferences for each plant species provides a plausible fit for the observed distribution of pollen load content. Pollen load compositions at the third site could be explained by an extension of the model, where different preferences apply to the choice of an initial foraging patch and subsequent foraging steps. Since this model describes the expected level of pollen load differentiation due solely to the spatial clustering of conspecific plants, it provides a null hypothesis against which more complex descriptions of behavior (e.g. flower constancy) can be tested. (C) 2015 Elsevier B.V. All rights reserved.
机译:社交蜜蜂的皮质花粉负荷组成包含有关蜜蜂觅食行为和周围花卉景观的信息。但是,很少有人尝试整合花粉成分和花卉景观来检验有关觅食行为的假设。在这里,我们提出了一个基于个体的模型,该模型根据觅食模型和花卉资源的空间分布生成花粉负载的物种组成。我们将此模型应用于现有的花序计数数据集和在加利福尼亚州不同现场采样的大黄蜂花粉载荷。对于三个地点中的两个,一个觅食模型由相关的随机游走组成,每个植物物种具有恒定的偏好,为观察到的花粉负荷含量分布提供了合理的拟合。第三部位的花粉负载成分可以通过模型的扩展来解释,其中不同的首选项适用于初始觅食补丁和后续觅食步骤的选择。由于此模型仅描述了同种植物的空间聚类,因此描述了花粉负载分化的预期水平,因此它提供了无效的假设,可用于测试更复杂的行为描述(例如花的恒定性)。 (C)2015 Elsevier B.V.保留所有权利。

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