Agarwood oil grade clustering of aquilaria malaccensis species using Extraction by GC-MS analysis: Efficient KNN algorithm based on patterns visualization of two-dimensional graph

Data visualization pattern is an essential task in data analysis. A two-dimensional graph (2D graph) is one of the graphical presentations for data visualization. Over the past decades, Agarwood Oil grade clustering is still at a disadvantage since there is no official standard grading system. Most...

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Main Authors: Siti Mariatul Hazwa, Mohd Huzir, Anis Hazirah ‘Izzati H., Al-Hadi, Amir Hussairi, Zaidi, Nurlaila F., Ismail, Zakiah, Mohd Yusoff, Saiful Nizam, Tajuddin, Mohd Nasir, Taib
Format: Article
Language:en
en
Published: Malaysian Institute of Chemistry 2024
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Online Access:http://umpir.ump.edu.my/id/eprint/43643/1/Agarwood%20oil%20grade%20clustering%20of%20aquilaria%20malaccensis%20species.pdf
http://umpir.ump.edu.my/id/eprint/43643/2/Agarwood%20oil%20grade%20clustering%20of%20aquilaria%20malaccensis%20species%20using%20extraction%20by%20GC-MS%20analysis_Efficient%20KNN%20algorithm%20based%20on%20patterns_abs.pdf
http://umpir.ump.edu.my/id/eprint/43643/
https://doi.org/10.55373/mjchem.v26i1.324
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author Siti Mariatul Hazwa, Mohd Huzir
Anis Hazirah ‘Izzati H., Al-Hadi
Amir Hussairi, Zaidi
Nurlaila F., Ismail
Zakiah, Mohd Yusoff
Saiful Nizam, Tajuddin
Mohd Nasir, Taib
author_facet Siti Mariatul Hazwa, Mohd Huzir
Anis Hazirah ‘Izzati H., Al-Hadi
Amir Hussairi, Zaidi
Nurlaila F., Ismail
Zakiah, Mohd Yusoff
Saiful Nizam, Tajuddin
Mohd Nasir, Taib
author_sort Siti Mariatul Hazwa, Mohd Huzir
building UMPSA Library
collection Institutional Repository
content_provider Universiti Malaysia Pahang Al-Sultan Abdullah
content_source UMPSA Institutional Repository
continent Asia
country Malaysia
description Data visualization pattern is an essential task in data analysis. A two-dimensional graph (2D graph) is one of the graphical presentations for data visualization. Over the past decades, Agarwood Oil grade clustering is still at a disadvantage since there is no official standard grading system. Most of the time, an expert grades the agarwood oil manually based on oil appearances such as resin color, smell, texture and intensity. The importance of the agarwood oil grading system will help the seller to stabilize the oil price based on its approximate quality. Besides, Agarwood oil got high requests from big buyers and traders due to its benefits as medicine, cosmetics, perfume and incense. This paper attempts to formulate a better Agarwood oil grading system based on its chemical properties, develops an artificially intelligent k-Nearest Neighbor (KNN) and trained using Matlab version R2015a. The data acquisition process of investigating the chemical compounds was conducted using GC-MS analysis. From 103 chemical compounds extracted, four significant compounds; 10-epi-r-eudesmol, α-agarofuran, r-eudesmol and β-agarofuran were chosen to model the agarwood oil quality. The agarwood oil sample data were categorized into low, medium-low, medium-high and high grades. The findings show that KNN yielded 100% accuracy. Then, 2D graph was applied to plot the sample visualization pattern parallel with KNN accuracy. The KNN 2D plot revealed a distinct separation between the four groups. The accuracy of 100% proved the potential of the KNN model as a good supervised learning classifier towards four different grades of Agarwood oil. In conclusion, the Agarwood oil quality grading technique based on KNN and 2D graph was successful with the ability of KNN to confirm these qualities into 4 grades.
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spelling my.ump.umpir.436432025-01-21T08:39:47Z http://umpir.ump.edu.my/id/eprint/43643/ Agarwood oil grade clustering of aquilaria malaccensis species using Extraction by GC-MS analysis: Efficient KNN algorithm based on patterns visualization of two-dimensional graph Siti Mariatul Hazwa, Mohd Huzir Anis Hazirah ‘Izzati H., Al-Hadi Amir Hussairi, Zaidi Nurlaila F., Ismail Zakiah, Mohd Yusoff Saiful Nizam, Tajuddin Mohd Nasir, Taib HD Industries. Land use. Labor Q Science (General) T Technology (General) Data visualization pattern is an essential task in data analysis. A two-dimensional graph (2D graph) is one of the graphical presentations for data visualization. Over the past decades, Agarwood Oil grade clustering is still at a disadvantage since there is no official standard grading system. Most of the time, an expert grades the agarwood oil manually based on oil appearances such as resin color, smell, texture and intensity. The importance of the agarwood oil grading system will help the seller to stabilize the oil price based on its approximate quality. Besides, Agarwood oil got high requests from big buyers and traders due to its benefits as medicine, cosmetics, perfume and incense. This paper attempts to formulate a better Agarwood oil grading system based on its chemical properties, develops an artificially intelligent k-Nearest Neighbor (KNN) and trained using Matlab version R2015a. The data acquisition process of investigating the chemical compounds was conducted using GC-MS analysis. From 103 chemical compounds extracted, four significant compounds; 10-epi-r-eudesmol, α-agarofuran, r-eudesmol and β-agarofuran were chosen to model the agarwood oil quality. The agarwood oil sample data were categorized into low, medium-low, medium-high and high grades. The findings show that KNN yielded 100% accuracy. Then, 2D graph was applied to plot the sample visualization pattern parallel with KNN accuracy. The KNN 2D plot revealed a distinct separation between the four groups. The accuracy of 100% proved the potential of the KNN model as a good supervised learning classifier towards four different grades of Agarwood oil. In conclusion, the Agarwood oil quality grading technique based on KNN and 2D graph was successful with the ability of KNN to confirm these qualities into 4 grades. Malaysian Institute of Chemistry 2024 Article PeerReviewed pdf en http://umpir.ump.edu.my/id/eprint/43643/1/Agarwood%20oil%20grade%20clustering%20of%20aquilaria%20malaccensis%20species.pdf pdf en http://umpir.ump.edu.my/id/eprint/43643/2/Agarwood%20oil%20grade%20clustering%20of%20aquilaria%20malaccensis%20species%20using%20extraction%20by%20GC-MS%20analysis_Efficient%20KNN%20algorithm%20based%20on%20patterns_abs.pdf Siti Mariatul Hazwa, Mohd Huzir and Anis Hazirah ‘Izzati H., Al-Hadi and Amir Hussairi, Zaidi and Nurlaila F., Ismail and Zakiah, Mohd Yusoff and Saiful Nizam, Tajuddin and Mohd Nasir, Taib (2024) Agarwood oil grade clustering of aquilaria malaccensis species using Extraction by GC-MS analysis: Efficient KNN algorithm based on patterns visualization of two-dimensional graph. Malaysian Journal of Chemistry, 26 (1). pp. 324-331. ISSN 1511-2292. (Published) https://doi.org/10.55373/mjchem.v26i1.324 https://doi.org/10.55373/mjchem.v26i1.324
spellingShingle HD Industries. Land use. Labor
Q Science (General)
T Technology (General)
Siti Mariatul Hazwa, Mohd Huzir
Anis Hazirah ‘Izzati H., Al-Hadi
Amir Hussairi, Zaidi
Nurlaila F., Ismail
Zakiah, Mohd Yusoff
Saiful Nizam, Tajuddin
Mohd Nasir, Taib
Agarwood oil grade clustering of aquilaria malaccensis species using Extraction by GC-MS analysis: Efficient KNN algorithm based on patterns visualization of two-dimensional graph
title Agarwood oil grade clustering of aquilaria malaccensis species using Extraction by GC-MS analysis: Efficient KNN algorithm based on patterns visualization of two-dimensional graph
title_full Agarwood oil grade clustering of aquilaria malaccensis species using Extraction by GC-MS analysis: Efficient KNN algorithm based on patterns visualization of two-dimensional graph
title_fullStr Agarwood oil grade clustering of aquilaria malaccensis species using Extraction by GC-MS analysis: Efficient KNN algorithm based on patterns visualization of two-dimensional graph
title_full_unstemmed Agarwood oil grade clustering of aquilaria malaccensis species using Extraction by GC-MS analysis: Efficient KNN algorithm based on patterns visualization of two-dimensional graph
title_short Agarwood oil grade clustering of aquilaria malaccensis species using Extraction by GC-MS analysis: Efficient KNN algorithm based on patterns visualization of two-dimensional graph
title_sort agarwood oil grade clustering of aquilaria malaccensis species using extraction by gc-ms analysis: efficient knn algorithm based on patterns visualization of two-dimensional graph
topic HD Industries. Land use. Labor
Q Science (General)
T Technology (General)
url http://umpir.ump.edu.my/id/eprint/43643/1/Agarwood%20oil%20grade%20clustering%20of%20aquilaria%20malaccensis%20species.pdf
http://umpir.ump.edu.my/id/eprint/43643/2/Agarwood%20oil%20grade%20clustering%20of%20aquilaria%20malaccensis%20species%20using%20extraction%20by%20GC-MS%20analysis_Efficient%20KNN%20algorithm%20based%20on%20patterns_abs.pdf
http://umpir.ump.edu.my/id/eprint/43643/
https://doi.org/10.55373/mjchem.v26i1.324
https://doi.org/10.55373/mjchem.v26i1.324
url_provider http://umpir.ump.edu.my/