Automated Signal Processing Applied to Volatile-Based Inspection of Greenhouse Crops

Gas chromatograph–mass spectrometers (GC-MS) have been used and shown utility for volatile-based inspection of greenhouse crops. However, a widely recognized difficulty associated with GC-MS application is the large and complex data generated by this instrument. As a consequence, experienced analyst...

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Main Authors: Eldert van Henten, Harro Bouwmeester, Jan Willem Hofstee, Roel Jansen
Format: Article
Language:English
Published: MDPI AG 2010-07-01
Series:Sensors
Subjects:
Online Access:http://www.mdpi.com/1424-8220/10/8/7122/
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spelling doaj-4b112883082f4373ba2256c1d7d0ea102020-11-24T23:29:04ZengMDPI AGSensors1424-82202010-07-011087122713310.3390/s100807122Automated Signal Processing Applied to Volatile-Based Inspection of Greenhouse CropsEldert van HentenHarro BouwmeesterJan Willem HofsteeRoel JansenGas chromatograph–mass spectrometers (GC-MS) have been used and shown utility for volatile-based inspection of greenhouse crops. However, a widely recognized difficulty associated with GC-MS application is the large and complex data generated by this instrument. As a consequence, experienced analysts are often required to process this data in order to determine the concentrations of the volatile organic compounds (VOCs) of interest. Manual processing is time-consuming, labour intensive and may be subject to errors due to fatigue. The objective of this study was to assess whether or not GC-MS data can also be automatically processed in order to determine the concentrations of crop health associated VOCs in a greenhouse. An experimental dataset that consisted of twelve data files was processed both manually and automatically to address this question. Manual processing was based on simple peak integration while the automatic processing relied on the algorithms implemented in the MetAlignTM software package. The results of automatic processing of the experimental dataset resulted in concentrations similar to that after manual processing. These results demonstrate that GC-MS data can be automatically processed in order to accurately determine the concentrations of crop health associated VOCs in a greenhouse. When processing GC-MS data automatically, noise reduction, alignment, baseline correction and normalisation are required. http://www.mdpi.com/1424-8220/10/8/7122/automatedsignal processingplant volatilesgreenhouse
collection DOAJ
language English
format Article
sources DOAJ
author Eldert van Henten
Harro Bouwmeester
Jan Willem Hofstee
Roel Jansen
spellingShingle Eldert van Henten
Harro Bouwmeester
Jan Willem Hofstee
Roel Jansen
Automated Signal Processing Applied to Volatile-Based Inspection of Greenhouse Crops
Sensors
automated
signal processing
plant volatiles
greenhouse
author_facet Eldert van Henten
Harro Bouwmeester
Jan Willem Hofstee
Roel Jansen
author_sort Eldert van Henten
title Automated Signal Processing Applied to Volatile-Based Inspection of Greenhouse Crops
title_short Automated Signal Processing Applied to Volatile-Based Inspection of Greenhouse Crops
title_full Automated Signal Processing Applied to Volatile-Based Inspection of Greenhouse Crops
title_fullStr Automated Signal Processing Applied to Volatile-Based Inspection of Greenhouse Crops
title_full_unstemmed Automated Signal Processing Applied to Volatile-Based Inspection of Greenhouse Crops
title_sort automated signal processing applied to volatile-based inspection of greenhouse crops
publisher MDPI AG
series Sensors
issn 1424-8220
publishDate 2010-07-01
description Gas chromatograph–mass spectrometers (GC-MS) have been used and shown utility for volatile-based inspection of greenhouse crops. However, a widely recognized difficulty associated with GC-MS application is the large and complex data generated by this instrument. As a consequence, experienced analysts are often required to process this data in order to determine the concentrations of the volatile organic compounds (VOCs) of interest. Manual processing is time-consuming, labour intensive and may be subject to errors due to fatigue. The objective of this study was to assess whether or not GC-MS data can also be automatically processed in order to determine the concentrations of crop health associated VOCs in a greenhouse. An experimental dataset that consisted of twelve data files was processed both manually and automatically to address this question. Manual processing was based on simple peak integration while the automatic processing relied on the algorithms implemented in the MetAlignTM software package. The results of automatic processing of the experimental dataset resulted in concentrations similar to that after manual processing. These results demonstrate that GC-MS data can be automatically processed in order to accurately determine the concentrations of crop health associated VOCs in a greenhouse. When processing GC-MS data automatically, noise reduction, alignment, baseline correction and normalisation are required.
topic automated
signal processing
plant volatiles
greenhouse
url http://www.mdpi.com/1424-8220/10/8/7122/
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