Assessing indoor air quality using chemometric models

The objectives of this study are to identify the significant variables and to verify the best statistical method for determining the effect of indoor air quality (IAQ) at 7 different locations in Universiti Sultan Zainal Abidin, Terengganu, Malaysia. The IAQ data were collected using in-situ measu...

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Main Authors: Azid, Azman, Amran, Mohammad Azizi, Samsudin, Mohd Saiful, Abd Rani, Nurul Latiffah, Khalit, Saiful Iskandar, Yunus, Kamaruzzaman, Gasim, Muhammad Barzani, Mohd Saudi, Ahmad Shakir, Muhammad Amin, Siti Noor Syuhada, Ku Yusof, Ku Mohd Kalkausar,
Format: Article
Language:English
English
English
Published: Bentus 2018
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Online Access:http://irep.iium.edu.my/63918/1/63918_Assessing%20indoor%20air%20quality%20using%20chemometric%20models_SCOPUS.pdf
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http://irep.iium.edu.my/63918/
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Institution: Universiti Islam Antarabangsa Malaysia
Language: English
English
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Summary:The objectives of this study are to identify the significant variables and to verify the best statistical method for determining the effect of indoor air quality (IAQ) at 7 different locations in Universiti Sultan Zainal Abidin, Terengganu, Malaysia. The IAQ data were collected using in-situ measurement. Principal component analysis (PCA), partial least squares discriminant analysis (PLS-DA), linear discrimination analysis (LDA), and agglomerative hierarchical clustering (AHC) were used to classify the significant variables as well as to compare the best method for determining IAQ levels. PCA verifies only 4 out of 9 parameters (PM10, PM2.5, PM1.0, and O3) and is the significant variable in IAQ. The PLS-DA model classifies 89.05% correct of the IAQ variables in each station compared to LDA with only 66.67% correct. AHC identifies three cluster groups, which are highly polluted concentration (HPC), moderately polluted concentration (MPC), and low-polluted concentration (LPC) area. PLS-DA verifies the groups produced by AHC by identifying the variables that affect the quality at each station without being affected by redundancy. In conclusion, PLS-DA is a promising procedure for differentiating the group classes and determining the correct percentage of variables for IAQ.