Discrimination of Different Types Damage of Tomato Seedling by Electronic Nose

The profiles of volatile compounds emitted by plants varies in response to different damage. The potential of electronic nose technology to monitor such changes, with the aim of diagnosing plant health was investingted. An electronic nose(E-nose)was used to analyse tomato seedlings that were subject...

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Main Authors: Cheng Shao-Ming, Wang Jun, Wang Yong-Wei, Wei Zhen-Bo
Format: Article
Language:English
Published: EDP Sciences 2017-01-01
Series:ITM Web of Conferences
Online Access:https://doi.org/10.1051/itmconf/20171101019
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spelling doaj-e7f4829497f44841ac3365068064b9932021-03-02T09:50:48ZengEDP SciencesITM Web of Conferences2271-20972017-01-01110101910.1051/itmconf/20171101019itmconf_ist2017_01019Discrimination of Different Types Damage of Tomato Seedling by Electronic NoseCheng Shao-MingWang JunWang Yong-WeiWei Zhen-BoThe profiles of volatile compounds emitted by plants varies in response to different damage. The potential of electronic nose technology to monitor such changes, with the aim of diagnosing plant health was investingted. An electronic nose(E-nose)was used to analyse tomato seedlings that were subjected to differnent types of damage(infection by Early blight disease, infection by Gray mold disease, mechanically damage, and undamaged). Principal component analysis(PCA), linear discrimination analysis(LDA), back-propagation neural network(BPNN), and support vector machine (SVM) network were used to evaluate the E-nose data. The results indicated that the E-nose can successfully discriminate between tomato seedling with different types of damage. The results of PCA and LDA showed that clusters of data were divided into 3 groups (ZP, HP, and CP/MP). Samples from groups CP and MP overlapped partially. Back-propagation neural network (BPNN) and support vector machine (SVM) network were used to evaluate the E-nose data. Good discrimination results were obtained using SVM and BPNN. The results demonstrate that it is plausible to use E-nose technology as a method for monitoring damage in tomato seedling.https://doi.org/10.1051/itmconf/20171101019
collection DOAJ
language English
format Article
sources DOAJ
author Cheng Shao-Ming
Wang Jun
Wang Yong-Wei
Wei Zhen-Bo
spellingShingle Cheng Shao-Ming
Wang Jun
Wang Yong-Wei
Wei Zhen-Bo
Discrimination of Different Types Damage of Tomato Seedling by Electronic Nose
ITM Web of Conferences
author_facet Cheng Shao-Ming
Wang Jun
Wang Yong-Wei
Wei Zhen-Bo
author_sort Cheng Shao-Ming
title Discrimination of Different Types Damage of Tomato Seedling by Electronic Nose
title_short Discrimination of Different Types Damage of Tomato Seedling by Electronic Nose
title_full Discrimination of Different Types Damage of Tomato Seedling by Electronic Nose
title_fullStr Discrimination of Different Types Damage of Tomato Seedling by Electronic Nose
title_full_unstemmed Discrimination of Different Types Damage of Tomato Seedling by Electronic Nose
title_sort discrimination of different types damage of tomato seedling by electronic nose
publisher EDP Sciences
series ITM Web of Conferences
issn 2271-2097
publishDate 2017-01-01
description The profiles of volatile compounds emitted by plants varies in response to different damage. The potential of electronic nose technology to monitor such changes, with the aim of diagnosing plant health was investingted. An electronic nose(E-nose)was used to analyse tomato seedlings that were subjected to differnent types of damage(infection by Early blight disease, infection by Gray mold disease, mechanically damage, and undamaged). Principal component analysis(PCA), linear discrimination analysis(LDA), back-propagation neural network(BPNN), and support vector machine (SVM) network were used to evaluate the E-nose data. The results indicated that the E-nose can successfully discriminate between tomato seedling with different types of damage. The results of PCA and LDA showed that clusters of data were divided into 3 groups (ZP, HP, and CP/MP). Samples from groups CP and MP overlapped partially. Back-propagation neural network (BPNN) and support vector machine (SVM) network were used to evaluate the E-nose data. Good discrimination results were obtained using SVM and BPNN. The results demonstrate that it is plausible to use E-nose technology as a method for monitoring damage in tomato seedling.
url https://doi.org/10.1051/itmconf/20171101019
work_keys_str_mv AT chengshaoming discriminationofdifferenttypesdamageoftomatoseedlingbyelectronicnose
AT wangjun discriminationofdifferenttypesdamageoftomatoseedlingbyelectronicnose
AT wangyongwei discriminationofdifferenttypesdamageoftomatoseedlingbyelectronicnose
AT weizhenbo discriminationofdifferenttypesdamageoftomatoseedlingbyelectronicnose
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