Objective: The objective of this study is to analyze the
various water quality parameters of the Narmada River and to find hidden
relationships between them so that it can suggest some decision plans or
policies to predict or classify the water quality.
Background: Increasing demand for surface water supplies has
caused enormous pressure on freshwater ecosystems worldwide to plug the gap in
demand for water, many regions of the world have relied heavily on groundwater
to meet needs. There have been huge changes in river water quality during the
last 10 years. This may be due to the great involvement of human activities and
industrial waste.
Methods: In this study, we find an approach to water quality
management through Association or correlation studies between various water
quality parameters. The Data Mining Technique called Association Rule Mining
(Apriori Algorithm) is used to find and extract some rules or relationships
between various water quality parameters for the Narmada River at Harda and
Hoshangabad districts of Madhya Pradesh.
Findings: The study explores the features of WEKA and its
function by importing dataset samples and experimenting with learning datasets.
The experiment is limited to a pre-given dataset, the Water Quality Data of
Handia (District Harda) and Hoshangabad, M. P., from 1990 to 2010 of River Maa
Narmada. Nine parameters were selected for the experiments, categorized into
four classes based on pollutant index: A, B, C, and D. The results show that
the WEKA Explorer runs an environment for association and parameter setting
during experiments. The study found some basic interesting rules, such as the
need for regular water treatment before consumption, the need for regular water
treatment, and the need for regular water treatment.
The study analysed the relationship between water quality
parameters using association rules. It was found that a decrease in NH3-N
concentration leads to poor water quality at one level. For a constant pH
value, BOD is strongly related to DO. The study concluded that water quality
improves when BOD concentration decreases for the same pH value. The results
showed that BOD concentration is higher in the Hoshangabad District than in the
Harda District, resulting in poor surface water quality at one level. The study
also found a relationship between NH3_N and O_PO4, with a decrease in NH3_N
causing water quality to decline by one level. The study concluded that
industrial centers' inclusions and DO concentrations have a reverse relation,
with a decrease in DO increasing water pollution. The study recommends further
research on other important water quality parameters to understand their
effects on rivers.
Application: This research presents a model with actual data
both for spatial and temporal patterns and the benefits of employing data
mining techniques towards the improvement of water quality management plans.
These results conclude that there is an urgent need for strict regulatory
monitoring for water quality maintenance in the river system in Hoshangabad
District.
Author(s) Details
Sanjeev Gour
Department of Computer Science, Medi-Caps University,
Indore, M.P., India.
Mamta Gour
Department of Chemistry, Medi-Caps University, Indore, M.P.,
India.
Please see the link:- https://doi.org/10.9734/bpi/strufp/v7/949
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