Dust deposition and pollution are relevant issues in indoor environments, especially concerning human health and conservation of things and works. In this framework, several tools have been proposed in the last years in order to analyze dust deposition and extract useful information for addressing the phenomenon. In this paper, a novel approach for dust analysis and classification is proposed, employing machine learning and fuzzy logic to set up a simple and actual tool. The proposed approach is tested and compared with other already introduced similar techniques, in order to evaluate its performance.

Dust deposition and pollution are relevant issues in indoor environments, especially concerning human health and conservation of things and works. In this framework, several tools have been proposed in the last years in order to analyze dust deposition and extract useful information for addressing the phenomenon. In this paper, a novel approach for dust analysis and classification is proposed, employing machine learning and fuzzy logic to set up a simple and actual tool. The proposed approach is tested and compared with other already introduced similar techniques, in order to evaluate its performance.

Shapes classification of dust deposition using fuzzy kernel-based approaches / Proietti, Andrea; Liparulo, Luca; Leccese, Fabio; Panella, Massimo. - In: MEASUREMENT. - ISSN 0263-2241. - STAMPA. - 77:(2016), pp. 344-350. [10.1016/j.measurement.2015.09.025]

Shapes classification of dust deposition using fuzzy kernel-based approaches

PROIETTI, ANDREA;LIPARULO, LUCA;PANELLA, Massimo
2016

Abstract

Dust deposition and pollution are relevant issues in indoor environments, especially concerning human health and conservation of things and works. In this framework, several tools have been proposed in the last years in order to analyze dust deposition and extract useful information for addressing the phenomenon. In this paper, a novel approach for dust analysis and classification is proposed, employing machine learning and fuzzy logic to set up a simple and actual tool. The proposed approach is tested and compared with other already introduced similar techniques, in order to evaluate its performance.
2016
Dust deposition and pollution are relevant issues in indoor environments, especially concerning human health and conservation of things and works. In this framework, several tools have been proposed in the last years in order to analyze dust deposition and extract useful information for addressing the phenomenon. In this paper, a novel approach for dust analysis and classification is proposed, employing machine learning and fuzzy logic to set up a simple and actual tool. The proposed approach is tested and compared with other already introduced similar techniques, in order to evaluate its performance.
Classification; Dust; Fuzzy; membership functions; shape analysis; condensed matter physics; applied mathematics
01 Pubblicazione su rivista::01a Articolo in rivista
Shapes classification of dust deposition using fuzzy kernel-based approaches / Proietti, Andrea; Liparulo, Luca; Leccese, Fabio; Panella, Massimo. - In: MEASUREMENT. - ISSN 0263-2241. - STAMPA. - 77:(2016), pp. 344-350. [10.1016/j.measurement.2015.09.025]
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11573/873301
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