Journal of Chemistry (Jan 2017)

Application of Multivariate Statistical Analysis in Evaluation of Surface River Water Quality of a Tropical River

  • Teck-Yee Ling,
  • Chen-Lin Soo,
  • Jing-Jing Liew,
  • Lee Nyanti,
  • Siong-Fong Sim,
  • Jongkar Grinang

DOI
https://doi.org/10.1155/2017/5737452
Journal volume & issue
Vol. 2017

Abstract

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The present study evaluated the spatial variations of surface water quality in a tropical river using multivariate statistical techniques, including cluster analysis (CA) and principal component analysis (PCA). Twenty physicochemical parameters were measured at 30 stations along the Batang Baram and its tributaries. The water quality of the Batang Baram was categorized as “slightly polluted” where the chemical oxygen demand and total suspended solids were the most deteriorated parameters. The CA grouped the 30 stations into four clusters which shared similar characteristics within the same cluster, representing the upstream, middle, and downstream regions of the main river and the tributaries from the middle to downstream regions of the river. The PCA has determined a reduced number of six principal components that explained 83.6% of the data set variance. The first PC indicated that the total suspended solids, turbidity, and hydrogen sulphide were the dominant polluting factors which is attributed to the logging activities, followed by the five-day biochemical oxygen demand, total phosphorus, organic nitrogen, and nitrate-nitrogen in the second PC which are related to the discharges from domestic wastewater. The components also imply that logging activities are the major anthropogenic activities responsible for water quality variations in the Batang Baram when compared to the domestic wastewater discharge.