School of Biology, University of Leeds, Leeds, United Kingdom.
PLoS One. 2013 Oct 14;8(10):e76308. doi: 10.1371/journal.pone.0076308. eCollection 2013.
Insect pollination benefits over three quarters of the world's major crops. There is growing concern that observed declines in pollinators may impact on production and revenues from animal pollinated crops. Knowing the distribution of pollinators is therefore crucial for estimating their availability to pollinate crops; however, in general, we have an incomplete knowledge of where these pollinators occur. We propose a method to predict geographical patterns of pollination service to crops, novel in two elements: the use of pollinator records rather than expert knowledge to predict pollinator occurrence, and the inclusion of the managed pollinator supply. We integrated a maximum entropy species distribution model (SDM) with an existing pollination service model (PSM) to derive the availability of pollinators for crop pollination. We used nation-wide records of wild and managed pollinators (honey bees) as well as agricultural data from Great Britain. We first calibrated the SDM on a representative sample of bee and hoverfly crop pollinator species, evaluating the effects of different settings on model performance and on its capacity to identify the most important predictors. The importance of the different predictors was better resolved by SDM derived from simpler functions, with consistent results for bees and hoverflies. We then used the species distributions from the calibrated model to predict pollination service of wild and managed pollinators, using field beans as a test case. The PSM allowed us to spatially characterize the contribution of wild and managed pollinators and also identify areas potentially vulnerable to low pollination service provision, which can help direct local scale interventions. This approach can be extended to investigate geographical mismatches between crop pollination demand and the availability of pollinators, resulting from environmental change or policy scenarios.
传粉昆虫有益于全球四分之三以上的主要作物。越来越多的人担心传粉媒介的减少可能会影响到动物授粉作物的产量和收入。因此,了解传粉媒介的分布情况对于估计它们为作物授粉的可用性至关重要;然而,一般来说,我们对这些传粉媒介的分布情况知之甚少。我们提出了一种预测作物传粉服务地理格局的方法,该方法有两个新颖之处:使用传粉者记录而不是专家知识来预测传粉者的出现,以及包括管理传粉媒介的供应。我们将最大熵物种分布模型(SDM)与现有的传粉服务模型(PSM)相结合,以得出作物传粉的传粉媒介可用性。我们使用了全国范围内的野生和管理传粉媒介(蜜蜂)记录以及英国的农业数据。我们首先在蜜蜂和食蚜蝇等代表性的作物传粉媒介物种样本上校准 SDM,评估不同设置对模型性能及其识别最重要预测因子的能力的影响。通过 SDM 从更简单的函数中得出的结果,对不同预测因子的重要性的解析更好,蜜蜂和食蚜蝇的结果一致。然后,我们使用校准模型的物种分布来预测野生和管理传粉媒介的传粉服务,以田豆作为一个测试案例。PSM 允许我们对野生和管理传粉媒介的贡献进行空间特征描述,并确定可能面临授粉服务提供不足的脆弱区域,这有助于指导当地规模的干预措施。这种方法可以扩展到调查由于环境变化或政策情景导致的作物授粉需求与传粉媒介可用性之间的地理不匹配。