| SENSORS AND ACTUATORS B-CHEMICAL | 卷:263 |
| Odor control map: Self organizing map built from electronic nose signals and integrated by different instrumental and sensorial data to obtain an assessment tool for real environmental scenarios | |
| Article | |
| Licen, S.1  Barbieri, G.2  Fabbris, A.2  Briguglio, S. C.1  Pillon, A.3  Stel, F.3  Barbieri, P.1  | |
| [1] Univ Trieste, Dept Chem & Pharmaceut Sci, Via L Giorgieri 1, I-34127 Trieste, Italy | |
| [2] Univ Trieste, Dept Chem & Pharmaceut Sci, ARCO SolutionS Srl, Via L Giorgieri 1, I-34127 Trieste, Italy | |
| [3] ARPA FVG, Via Cairoli 14, I-33057 Palmanova, UD, Italy | |
| 关键词: Electronic nose; Odor; Self organizing map; Pattern recognition; Ambient air; Dynamic olfactometry; | |
| DOI : 10.1016/j.snb.2018.02.144 | |
| 来源: Elsevier | |
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【 摘 要 】
Olfactory nuisances are an issue of growing concern considering that people's awareness about the effect of pollution on health and environment is increasing and that the perception of odor is related to a possible warning situation. A recent review concluded that odor assessment has to be faced by an integrated multi tool strategy. In this paper we discuss the building of a model by means of a chemometric approach based on artificial neural networks known as Self Organizing Maps. These are applied to data collected by electronic nose continuous monitoring. The Self Organizing Map output was subjected to a second level clusterization by k-means algorithm. The cluster interpretation (i.e. air types classification in terms of malodor/odor free attributes) is achieved by crosslinking data produced by different instrumental and sensorial approaches, allowing us to establish the Frequency-Intensity-Duration odor characteristics for every identified air type. In order to elucidate our approach we focused our work on a four months survey at a residential site close to an integral cycle steel plant in Trieste (Italy). Odor Control Map proved to be a promising tool to provide valuable visualization support for following the dynamic evolution of the system with time. It allowed us to, for example, identify the relationships among sensor responses in different air types; follow the changes of air types with time. identify possible malodor sources; experimentally evaluate the frequency and duration of air types classified as malodorous. Furthermore, this first application highlighted the possible method improvements that have to be tested in different real environmental scenarios to obtain more robust and refined models. Considering that different annoyances (e.g., odor, noise, presence of specific chemical compounds) can cause possible synergistic health effects, Odor Control Map is a suitable tool to integrate data deriving from different and independent analysis/monitoring to obtain a more comprehensive knowledge on complex environmental phenomena involving dwellings close to industrial plants. (C) 2018 Elsevier B.V. All rights reserved.
【 授权许可】
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| Files | Size | Format | View |
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| 10_1016_j_snb_2018_02_144.pdf | 571KB |
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