A Framework to Spatially Cluster Air Quality Monitoring Stations in Peninsular Malaysia using the Hybrid Clustering Method

IF 0.8 Q3 MULTIDISCIPLINARY SCIENCES Malaysian Journal of Fundamental and Applied Sciences Pub Date : 2023-10-19 DOI:10.11113/mjfas.v19n5.2620
Nurul Alia Azizan, Ahmad Syibli Othman, Asheila AK Meramat, Siti Noor Syuhada Muhammad Amin, Azman Azid
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Abstract

Multiple variables must be analyzed in order to assess air quality trends. It turns into a multidimensional issue that calls for dynamic methods. In order to provide an improved spatial cluster distribution with distinct validation, this study set out to illustrate the hybrid cluster method in air quality monitoring stations in Peninsular Malaysia. The Department of Environment, Malaysia (DOE), provided the data set, which covered the two-year period from 2018 to 2019. This study included six air quality pollutants: PM10, PM2.5, SO2, NO2, O3, and CO. Principal component analysis (PCA), a multivariate technique, was used to condense the information found in enormous data tables in order to better comprehend the variables (to reduce dimensionality) prior to grouping the data. The PCA factor scores were then used to produce the AHC. The clusters were validated using discriminant analysis (DA). 36 of 47 stations required additional analysis using AHC, according to the PCA factor scores. Low Polluted Region (LPR = seven stations), Moderate Polluted Region (MPR = 20 stations), and High Polluted Region (HPR = nine stations) were created from AHC and share the same characteristics. The DA results showed 84 % correct classification rate for the clusters. With regard to identifying and categorizing stations according to air quality characteristics, the framework presented here offers an improved method. This illustrates that the hybrid cluster method utilized in this work can produce a new method of pollutant distributions that is helpful in air pollution investigations.
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使用混合聚类方法对马来西亚半岛空气质量监测站进行空间聚类的框架
为了评估空气质量趋势,必须分析多个变量。它变成了一个需要动态方法的多维问题。为了提供具有不同有效性的改进的空间集群分布,本研究着手在马来西亚半岛的空气质量监测站中说明混合集群方法。马来西亚环境部(DOE)提供的数据集涵盖了2018年至2019年的两年时间。本研究包括六种空气质量污染物:PM10、PM2.5、SO2、NO2、O3和CO。主成分分析(PCA)是一种多变量技术,用于压缩大量数据表中的信息,以便在分组数据之前更好地理解变量(降维)。然后使用PCA因子得分来产生AHC。采用判别分析(DA)对聚类进行验证。根据PCA因子得分,47个站点中有36个需要使用AHC进行额外分析。低污染区(LPR = 7个站点)、中度污染区(MPR = 20个站点)和高污染区(HPR = 9个站点)是由AHC创建的,它们具有相同的特征。数据分析结果表明,聚类的分类正确率为84%。在根据空气质量特征对站点进行识别和分类方面,本文提出的框架提供了一种改进的方法。这说明混合聚类方法可以产生一种新的污染物分布方法,有助于空气污染调查。
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CiteScore
1.40
自引率
0.00%
发文量
45
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