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Self-Organizing Map Algorithm as a Tool for Analysis, Visualization and Interpretation of Electronic Nose High Dimensional Raw Data

机译:自组织地图算法作为用于分析,可视化和电子鼻高维原始数据的刀具的工具

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Electronic noses used for outdoor ambient air characterization to assess odor impacts on population canproduce large datasets since usually the sampling is conducted with high frequency (e.g. data per minute) forperiods that can reach several months, with a number of sensors that ranges usually from four-six as aminimum, up to above thirty. The environmental analyst has thus to deal with large datasets (millions of data)that have to be properly elaborated for obtaining meaningful interpretation of the instrumental signals. A recentreview questioned the capability of some classic statistical elaboration tools for application to e-noses,highlighting how very few in field application are present in scientific literature. In the present work wedescribe: (ⅰ) the use of Self-Organizing Map (SOM) algorithm as a tool for analysis and visualization of e-noseraw data collected at a receptor site near a bio-waste composting facility; (ⅱ) a second level clusterizationusing k-means clustering algorithm to identify "air types" that can be detected at the receptor and (ⅲ) the useof e-nose data related to the plant odour sources as well as odour measurements of ambient air collected atthe receptor site, to classify the air types. Eventually we evaluate the frequency and duration of the air type/sidentified as malodorous.
机译:用于户外环境空气表征的电子鼻子,以评估人口的气味影响产生大型数据集,因为通常采样以高频(例如每分钟数据)进行可以达到几个月的时期,其中许多传感器通常从四六作为一个范围最低,高达30多个。因此,环境分析师处理大型数据集(数百万数据)必须适当地阐述以获得对仪器信号的有意义解释。最近审查质疑某些经典统计阐述工具的能力,用于申请E-NOSES,科学文学中突出了现场申请中的少数情况。在目前的工作中我们描述:(Ⅰ)使用自组织地图(SOM)算法作为E-鼻子分析和可视化的工具在Bio废物堆肥设施附近的受体场地收集的原始数据; (Ⅱ)二级集群化使用K-means聚类算法识别可以在受体中检测到的“空气类型”,(Ⅲ)使用与植物气味源相关的电子鼻子数据以及收集的环境空气的气味测量受体部位,分类空气类型。最终我们评估空气类型的频率和持续时间被认为是恶臭的。

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