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首页> 外文期刊>The Science of the Total Environment >Building an automatic pollen monitoring network (ePIN): Selection of optimal sites by clustering pollen stations
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Building an automatic pollen monitoring network (ePIN): Selection of optimal sites by clustering pollen stations

机译:建立自动花粉监控网络(ePIN):通过将花粉站聚类来选择最佳地点

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Airborne pollen is a recognized biological indicator and its monitoring has multiple uses such as providing a tool for allergy diagnosis and prevention. There is a knowledge gap related to the distribution of pollen traps needed to achieve representative biomonitoring in a region. The aim of this manuscript is to suggest a method for setting up a pollen network (monitoring method, monitoring conditions, number and location of samplers etc.). As a case study, we describe the distribution of pollen across Bavaria and the design of the Bavarian pollen monitoring network (ePIN), the first operational automatic pollen network worldwide.We established and ran a dense pollen monitoring network of 27 manual Hirst-type pollen traps across Bavaria, Germany, during 2015. Hierarchical cluster analysis of the data was then performed to select the locations for the sites of the final pollen monitoring network. According to our method, Bavaria can be clustered into three large pollen regions with eight zones. Within each zone, pollen diversity and distribution among different locations does not vary significantly. Based on the pollen zones, we opted to place one automatic monitoring station per zone resulting in the ePIN network, serving 13 million inhabitants.The described method defines stations representative for a homogeneous aeropalynologically region, which reduces redundancy within the network and subsequent costs (in the study case from 27 to 8 locations). Following this method, resources in pollen monitoring networks can be optimized and allergic citizens can then be informed in a timely and effective way, even in larger geographical areas. (C) 2019 Elsevier B.V. All rights reserved.
机译:空气中的花粉是公认的生物指标,其监测具有多种用途,例如提供过敏性诊断和预防工具。存在与在一个地区实现代表性生物监测所需的花粉陷阱分布有关的知识鸿沟。该手稿的目的是提出一种建立花粉网络的方法(监视方法,监视条件,采样器的数量和位置等)。作为案例研究,我们描述了整个巴伐利亚的花粉分布情况以及世界上第一个可操作的自动花粉网络-巴伐利亚花粉监控网络(ePIN)的设计。我们建立并运行了由27个手动Hirst型花粉组成的密集花粉监控网络。在2015年期间在德国巴伐利亚州设置了诱集装置。然后对数据进行分层聚类分析,以选择最终花粉监测网络站点的位置。根据我们的方法,巴伐利亚可以分为三个大花粉区域,每个区域有八个区域。在每个区域内,花粉的多样性和不同位置之间的分布没有显着差异。基于花粉区域,我们选择在每个区域放置一个自动监控站,以建立ePIN网络,为1300万居民提供服务。所描述的方法定义了代表航空昆虫学均质区域的站点,从而减少了网络内部的冗余度和后续成本(在从27个地点到8个地点的研究案例)。遵循这种方法,即使在较大的地理区域中,也可以优化花粉监控网络中的资源,并及时,有效地告知过敏性市民。 (C)2019 Elsevier B.V.保留所有权利。

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