Environmental odour management by artificial neural network – A review

Unwanted odour emissions are considered air pollutants that may cause detrimental impacts to the environment as well as an indicator of unhealthy air to the affected individuals resulting in annoyance and health related issues. These pollutants are challenging to handle due to their invisibility to...

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Main Authors: Tiziano Zarra, Mark Gino Galang, Florencio Ballesteros, Jr, Vincenzo Belgiorno, Vincenzo Naddeo
Format: Article
Language:English
Published: Elsevier 2019-12-01
Series:Environment International
Online Access:http://www.sciencedirect.com/science/article/pii/S016041201931791X
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spelling doaj-c43a8059320540728c32b2c36cb533b02020-11-25T01:26:22ZengElsevierEnvironment International0160-41202019-12-01133Environmental odour management by artificial neural network – A reviewTiziano Zarra0Mark Gino Galang1Florencio Ballesteros, Jr2Vincenzo Belgiorno3Vincenzo Naddeo4SEED – Sanitary Environmental Engineering Division, Department of Civil Engineering, University of Salerno, via Giovanni Paolo II 132, 84084 Fisciano, SA, Italy; Corresponding author.Environmental Engineering Program, University of the Philippines, Diliman, Quezon City 1101, PhilippinesEnvironmental Engineering Program, University of the Philippines, Diliman, Quezon City 1101, PhilippinesSEED – Sanitary Environmental Engineering Division, Department of Civil Engineering, University of Salerno, via Giovanni Paolo II 132, 84084 Fisciano, SA, ItalySEED – Sanitary Environmental Engineering Division, Department of Civil Engineering, University of Salerno, via Giovanni Paolo II 132, 84084 Fisciano, SA, ItalyUnwanted odour emissions are considered air pollutants that may cause detrimental impacts to the environment as well as an indicator of unhealthy air to the affected individuals resulting in annoyance and health related issues. These pollutants are challenging to handle due to their invisibility to the naked eye and can only be felt by the human olfactory stimuli. A strategy to address this issue is by introducing an intelligent processing system to odour monitoring instrument such as artificial neural network to achieve a robust result. In this paper, a review on the application of artificial neural network for the management of environmental odours is presented. The principal factors in developing an optimum artificial neural network were identified as elements, structure and learning algorithms. The management of environmental odour has been distinguished into four aspects such as measurement, characterization, control and treatment and continuous monitoring. For each aspect, the performance of the neural network is critically evaluated emphasizing the strengths and weaknesses. This work aims to address the scarcity of information by addressing the gaps from existing studies in terms of the selection of the most suitable configuration, the benefits and consequences. Adopting this technique could provide a new avenue in the management of environmental odours through the use of a powerful mathematical computing tool for a more efficient and reliable outcome. Keywords: Electronic nose, Environmental pollution, Human health, Odour emission, Public concernhttp://www.sciencedirect.com/science/article/pii/S016041201931791X
collection DOAJ
language English
format Article
sources DOAJ
author Tiziano Zarra
Mark Gino Galang
Florencio Ballesteros, Jr
Vincenzo Belgiorno
Vincenzo Naddeo
spellingShingle Tiziano Zarra
Mark Gino Galang
Florencio Ballesteros, Jr
Vincenzo Belgiorno
Vincenzo Naddeo
Environmental odour management by artificial neural network – A review
Environment International
author_facet Tiziano Zarra
Mark Gino Galang
Florencio Ballesteros, Jr
Vincenzo Belgiorno
Vincenzo Naddeo
author_sort Tiziano Zarra
title Environmental odour management by artificial neural network – A review
title_short Environmental odour management by artificial neural network – A review
title_full Environmental odour management by artificial neural network – A review
title_fullStr Environmental odour management by artificial neural network – A review
title_full_unstemmed Environmental odour management by artificial neural network – A review
title_sort environmental odour management by artificial neural network – a review
publisher Elsevier
series Environment International
issn 0160-4120
publishDate 2019-12-01
description Unwanted odour emissions are considered air pollutants that may cause detrimental impacts to the environment as well as an indicator of unhealthy air to the affected individuals resulting in annoyance and health related issues. These pollutants are challenging to handle due to their invisibility to the naked eye and can only be felt by the human olfactory stimuli. A strategy to address this issue is by introducing an intelligent processing system to odour monitoring instrument such as artificial neural network to achieve a robust result. In this paper, a review on the application of artificial neural network for the management of environmental odours is presented. The principal factors in developing an optimum artificial neural network were identified as elements, structure and learning algorithms. The management of environmental odour has been distinguished into four aspects such as measurement, characterization, control and treatment and continuous monitoring. For each aspect, the performance of the neural network is critically evaluated emphasizing the strengths and weaknesses. This work aims to address the scarcity of information by addressing the gaps from existing studies in terms of the selection of the most suitable configuration, the benefits and consequences. Adopting this technique could provide a new avenue in the management of environmental odours through the use of a powerful mathematical computing tool for a more efficient and reliable outcome. Keywords: Electronic nose, Environmental pollution, Human health, Odour emission, Public concern
url http://www.sciencedirect.com/science/article/pii/S016041201931791X
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