Hydrogeochemical characterization based water resources vulnerability assessment in India's first Ramsar site of Chilka lake

Mar Pollut Bull. 2022 Nov:184:114107. doi: 10.1016/j.marpolbul.2022.114107. Epub 2022 Sep 11.

Abstract

A limnological site is significantly characterized by rich biological, chemical, and physical properties of the environment and is also described as the epitome of a large aquatic ecosystem. During the last few decades, the Chilka lake Ramsar site has experienced substantial degradation of water quality with associated deterioration of aquatic biodiversity. Our study aims to quantify the VWRM of the Chilka lake Ramsar region using the most reliable MLAs, namely ANN and RF, with the help of seventeen hydro-chemical properties of lake water. The produced map is validated through six validating measures (ROC-AUC- 0.89, Sensitivity-0.90, Specificity-0.78, PPV-0.78, NPV-0.88, Taylor diagram (r)-0.94), which depict that ANN is the most reliable ML algorithm in assessing the VWRM of the concerned region followed by RF. The prepared map of our study revealed that the eastern part was remarkably high to very high vulnerable zone covered area with 22.41 % and 7.19 %, respectively.

Keywords: Anthropogenic stress; Chilka lake; Machine learning; Ramsar site; Vulnerability.

MeSH terms

  • Ecosystem
  • Environmental Monitoring
  • India
  • Lakes*
  • Water Resources*