ANN modelling of agarwood oil significant chemical compounds for quality discrimination / Nurlaila Ismail

This thesis presents a new ANN modelling in discriminating agarwood oil quality using selected significant chemical compounds of the oil. In order to accomplish the work, the analyses have been carried out in two categories. The first category is the abundances pattern of odor chemical compounds obs...

Full description

Bibliographic Details
Main Author: Ismail, Nurlaila
Format: Thesis
Language:English
Published: 2014
Subjects:
Online Access:https://ir.uitm.edu.my/id/eprint/27935/1/TP_NURLAILA%20ISMAIL%20EE%2014_5.pdf
_version_ 1796902602527473664
author Ismail, Nurlaila
author_facet Ismail, Nurlaila
author_sort Ismail, Nurlaila
collection UITM
description This thesis presents a new ANN modelling in discriminating agarwood oil quality using selected significant chemical compounds of the oil. In order to accomplish the work, the analyses have been carried out in two categories. The first category is the abundances pattern of odor chemical compounds observation and investigation. The extraction of odor chemical compounds is done by solid phase micro-extraction (SPME). In this work two types of SPME fibers were used; divinylbenzene-carboxenpolydimethylsiloxane( DVB-CAR-PDMS) and polydimethylsiloxane(PDMS) to analyze the odor compounds under three different sampling temperature conditions; 40°C, 60°C and 80°C. A consistent abundances pattern of five significant odor chemical compounds as highlighted by Z-score were revealed. The compounds are 10-epi-γ-eudesmol, aromadendrane, β-agarofiiran, α-agarofuran and T-eudesmol. These odor chemical compounds are important as they contributed to the odor of high quality agarwood oils. Then the second category was performed by the extraction of the agarwood oil chemical compounds using gas chromatography-mass spectrometry (GC-MS). The identified compounds from SPME were used as marker compounds for agarwood oil quality discrimination using GC-MS data. In this category, Z-score highlightedseven significant chemical compounds; β-agarofuran, α-agarofuran, 10-epi-γ-eudesmol, γ-eudesmol, longifolol, hexadecanol and eudesmol. Their abundances has been used as input to k-nearest neighbor (k-NN) and artificial neural network (ANN) applications. In this study, all the agarwood oil samples were obtained from two institution; Forest Research Institute Malaysia (FRIM) and Universiti Malaysia Pahang (UMP). The experiments were carried out using k-NN and ANN modeling. The study showed that the k-NN classification accuracy is within 81-86% for k=1 to k=5 and 100% accuracy for the classification of ANN modeling.
first_indexed 2024-03-06T02:07:22Z
format Thesis
id uitm.eprints-7935
institution Universiti Teknologi MARA
language English
last_indexed 2024-03-06T02:07:22Z
publishDate 2014
record_format dspace
spelling uitm.eprints-79352024-01-17T08:11:12Z https://ir.uitm.edu.my/id/eprint/27935/ ANN modelling of agarwood oil significant chemical compounds for quality discrimination / Nurlaila Ismail Ismail, Nurlaila Electricity Electricity and magnetism This thesis presents a new ANN modelling in discriminating agarwood oil quality using selected significant chemical compounds of the oil. In order to accomplish the work, the analyses have been carried out in two categories. The first category is the abundances pattern of odor chemical compounds observation and investigation. The extraction of odor chemical compounds is done by solid phase micro-extraction (SPME). In this work two types of SPME fibers were used; divinylbenzene-carboxenpolydimethylsiloxane( DVB-CAR-PDMS) and polydimethylsiloxane(PDMS) to analyze the odor compounds under three different sampling temperature conditions; 40°C, 60°C and 80°C. A consistent abundances pattern of five significant odor chemical compounds as highlighted by Z-score were revealed. The compounds are 10-epi-γ-eudesmol, aromadendrane, β-agarofiiran, α-agarofuran and T-eudesmol. These odor chemical compounds are important as they contributed to the odor of high quality agarwood oils. Then the second category was performed by the extraction of the agarwood oil chemical compounds using gas chromatography-mass spectrometry (GC-MS). The identified compounds from SPME were used as marker compounds for agarwood oil quality discrimination using GC-MS data. In this category, Z-score highlightedseven significant chemical compounds; β-agarofuran, α-agarofuran, 10-epi-γ-eudesmol, γ-eudesmol, longifolol, hexadecanol and eudesmol. Their abundances has been used as input to k-nearest neighbor (k-NN) and artificial neural network (ANN) applications. In this study, all the agarwood oil samples were obtained from two institution; Forest Research Institute Malaysia (FRIM) and Universiti Malaysia Pahang (UMP). The experiments were carried out using k-NN and ANN modeling. The study showed that the k-NN classification accuracy is within 81-86% for k=1 to k=5 and 100% accuracy for the classification of ANN modeling. 2014 Thesis NonPeerReviewed text en https://ir.uitm.edu.my/id/eprint/27935/1/TP_NURLAILA%20ISMAIL%20EE%2014_5.pdf ANN modelling of agarwood oil significant chemical compounds for quality discrimination / Nurlaila Ismail. (2014) PhD thesis, thesis, Universiti Teknologi MARA. <http://terminalib.uitm.edu.my/27935.pdf>
spellingShingle Electricity
Electricity and magnetism
Ismail, Nurlaila
ANN modelling of agarwood oil significant chemical compounds for quality discrimination / Nurlaila Ismail
title ANN modelling of agarwood oil significant chemical compounds for quality discrimination / Nurlaila Ismail
title_full ANN modelling of agarwood oil significant chemical compounds for quality discrimination / Nurlaila Ismail
title_fullStr ANN modelling of agarwood oil significant chemical compounds for quality discrimination / Nurlaila Ismail
title_full_unstemmed ANN modelling of agarwood oil significant chemical compounds for quality discrimination / Nurlaila Ismail
title_short ANN modelling of agarwood oil significant chemical compounds for quality discrimination / Nurlaila Ismail
title_sort ann modelling of agarwood oil significant chemical compounds for quality discrimination nurlaila ismail
topic Electricity
Electricity and magnetism
url https://ir.uitm.edu.my/id/eprint/27935/1/TP_NURLAILA%20ISMAIL%20EE%2014_5.pdf
work_keys_str_mv AT ismailnurlaila annmodellingofagarwoodoilsignificantchemicalcompoundsforqualitydiscriminationnurlailaismail