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Identification of redundant sensors in an air pollution network using cluster analysis and SOM

机译:使用聚类分析和SOM识别空气污染网络中的冗余传感器

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An air pollution network monitors - among others - the sulfur dioxide (SO_2) levels at 4 locations in Bilbao city (Spain) and surroundings. The main objective of this work was to develop a practical methodology to identify redundant sensors and evaluate the network's capability to correctly represent SO_2 fields throughout the whole area. The methodology is developed and tested at this particular location, but it is general enough to be useable at other places as well, since it is not tied neither to the particular geographical characteristics of the place nor to the phenomenology of the air quality over the area. To that purpose, the combination of two different techniques has been used: Self-Organizing Maps (SOM) and cluster analysis (CA). The results show that both techniques yield the same results, but the information obtained via SOM can be helpful not only for that purpose but also to throw light on the major mechanisms involved. This might be used in future network optimization stages. The main advantage of CA and SOM is that they provide readily interpretable results.
机译:空气污染网络监测 - 其中 - 毕尔巴鄂市(西班牙)及周边地区的4个地点的二氧化硫(SO_2)水平。这项工作的主要目标是开发一种实用的方法来识别冗余传感器,并评估网络能力在整个区域中正确代表SO_2字段。该方法在这个特定的位置开发和测试,但通常可以在其他地方使用,因为它没有既不绑在该地方的特定地理特征也没有与该地区的空气质量的现象学中捆绑在一起。为此目的,已经使用了两种不同技术的组合:自组织地图(SOM)和集群分析(CA)。结果表明,两种技术都会产生相同的结果,但通过SOM获得的信息不仅可以为此目的而有所帮助,而且还可以在涉及的主要机制上抛光。这可能用于未来的网络优化阶段。 CA和SOM的主要优点是它们提供了易于解释的结果。

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