Application of Multivariable Statistical and Geo-Spatial Techniques for Evaluation of Water Quality of Rudrasagar Wetland, the Ramsar Site of India

Author:

Debnath Pradip1ORCID,Roy Stabak12,Bharadwaj Satarupa1,Hore Samrat3,Nath Harjeet4,Mitra Saptarshi1,Ciobotaru Ana-Maria5ORCID

Affiliation:

1. Department of Geography and Disaster Management, Tripura University, Suryamaninagar 799022, India

2. Institute of Socio-Economic Geography and Spatial Management, University of Gdansk, 80-309 Gdańsk, Poland

3. Department of Statistics, Tripura University, Suryamaninagar 799022, India

4. Department of Chemical and Polymer Engineering, Tripura University, Suryamaninagar 799022, India

5. Gheorghe Balș’ Technical College, 107 Republicii Street, 625100 Adjud, Romania

Abstract

The water quality of Rudrasagar Lake, the second-largest natural reservoir of Tripura is of great ecological and economic importance as it serves a diverse range of purposes, including fishing, irrigation, aquaculture, domestic use, and recreation activities. This study investigates the water quality of the study area, an esteemed Ramsar site in North Eastern India, using a combined application of multivariable statistical and geospatial techniques. In this study, 24 water samples were designed based on their use and collected along the periphery and the inner areas of the lake employing the Latin Square Matrix. This research also examines the spatial variations of water quality involving quartile-based water quality categorization of parameters, with Pearson’s Correlation analysis, Principal Component Analysis (PCA), and Hierarchy Cluster Analysis (HCA) applied for dimension reduction. The analysis involved quartile-based water quality categorization of parameters, with PCA and HCA applied for dimension reduction. Meanwhile, the Inverse distance weighted (IDW) approach was used to interpolate the spatial distribution of the quartile score using the ArcGIS platform. The Bureau of Indian Standards (BIS) was followed for water quality assessment. The results revealed significant spatial variation, providing valuable insights for future water management strategies. PCA indicates 57.26% of the variance in the dataset, whereas samples were classified into three subgroups and two groups in a dendrogram representing the result of the HCA. This study demonstrates the utility of PCA, HCA, and IDW interpolation in water quality assessment, highlighting the effect of human-induced activities in the lake’s vicinity.

Funder

The Department of Biotechnology (DBT), NER-BPMC, Govt. of India

Publisher

MDPI AG

Subject

Water Science and Technology,Aquatic Science,Geography, Planning and Development,Biochemistry

Reference58 articles.

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