Hydro-Geochemical Attributes Based Classifiers for Groundwater Analysis

Freshwater supply is critical for domestic, agriculture and industrial purposes. A good supply of clean water is normally obtained from surface and groundwater water bodies. Nonetheless, many localities rely heavily on the later as the main source of their water resource. Therefore, proper mapping,...

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Main Authors: Partha Sarathi Mishra, Debabrata Nandi, Pramod Chandra Sahu, Kamal Lochan Mohanta, Hisham Atan Edinur, Tanmay Sarkar, Siddhartha Pati
Format: Article
Language:English
Published: Polish Society of Ecological Engineering (PTIE) 2021-09-01
Series:Ecological Engineering & Environmental Technology
Subjects:
gis
Online Access:http://www.ecoeet.com/Hydro-Geochemical-Attributes-Based-Classifiers-for-Groundwater-Analysis,139412,0,2.html
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spelling doaj-e4f80a01d75f46e782dea983fff8bf182021-07-30T10:41:58ZengPolish Society of Ecological Engineering (PTIE)Ecological Engineering & Environmental Technology2719-70502021-09-01225283910.12912/27197050/139412139412Hydro-Geochemical Attributes Based Classifiers for Groundwater AnalysisPartha Sarathi Mishra0Debabrata Nandi1Pramod Chandra Sahu2Kamal Lochan Mohanta3Hisham Atan Edinur4Tanmay Sarkar5Siddhartha Pati6Department of Computer Science, MSCB University, Odisha, 757003, IndiaDepartment of Remote Sensing and GIS, MSCB University, Odisha, 757003, IndiaDepartment of Geology, MPC Autonomous College, Odisha, 757003, IndiaDepartment of Physics, ITER, Siksha 'O' Anusandhan Deemed to be University, Bhubaneswar, 751030, IndiaSchool of Health Sciences, University Sains Malaysia, Kelantan, MalaysiaMalda Polyechnic, West Bengal State Council of Technical Education, Government of West Bengal, Malda, 732102, IndiaSIAN Institute, Association for Biodiversity Conservation and Research (ABC), Balasore, Odisha, 756020, IndiaFreshwater supply is critical for domestic, agriculture and industrial purposes. A good supply of clean water is normally obtained from surface and groundwater water bodies. Nonetheless, many localities rely heavily on the later as the main source of their water resource. Therefore, proper mapping, exploitation and conservation of groundwater resources should become a primary focus in years to come. In this study, groundwater samples collected from Bamanghati, Odisha were assigned into three classes (excellent, good and bad) based on guidelines provided by World Health Organization in 1984 These water quality assignments were completed via a combined approach of hydro-geochemical information and artificial neural network for reconstructing a classifier for groundwater analysis. Here, the probabilistic approach and boosted instance selection method were used to remove inconsistencies in the dataset and to determine the classification accuracy, respectively. Finally, the transmuted dataset is used for kernel estimator-based Bayesian and Decision tree (J48) classification approaches. Findings from the present study confirm that the preprocessing task using statistical analysis along with the combined method of hydro-geochemical attributes-based classification approach is encouraging while the decision tree approach is better than the Bayesian neural network classifier in terms of precision, recall, F-measures, and Kappa statistics.http://www.ecoeet.com/Hydro-Geochemical-Attributes-Based-Classifiers-for-Groundwater-Analysis,139412,0,2.htmlgisclassificationdata miningbayesian artificial neural networkhydro-geochemical information
collection DOAJ
language English
format Article
sources DOAJ
author Partha Sarathi Mishra
Debabrata Nandi
Pramod Chandra Sahu
Kamal Lochan Mohanta
Hisham Atan Edinur
Tanmay Sarkar
Siddhartha Pati
spellingShingle Partha Sarathi Mishra
Debabrata Nandi
Pramod Chandra Sahu
Kamal Lochan Mohanta
Hisham Atan Edinur
Tanmay Sarkar
Siddhartha Pati
Hydro-Geochemical Attributes Based Classifiers for Groundwater Analysis
Ecological Engineering & Environmental Technology
gis
classification
data mining
bayesian artificial neural network
hydro-geochemical information
author_facet Partha Sarathi Mishra
Debabrata Nandi
Pramod Chandra Sahu
Kamal Lochan Mohanta
Hisham Atan Edinur
Tanmay Sarkar
Siddhartha Pati
author_sort Partha Sarathi Mishra
title Hydro-Geochemical Attributes Based Classifiers for Groundwater Analysis
title_short Hydro-Geochemical Attributes Based Classifiers for Groundwater Analysis
title_full Hydro-Geochemical Attributes Based Classifiers for Groundwater Analysis
title_fullStr Hydro-Geochemical Attributes Based Classifiers for Groundwater Analysis
title_full_unstemmed Hydro-Geochemical Attributes Based Classifiers for Groundwater Analysis
title_sort hydro-geochemical attributes based classifiers for groundwater analysis
publisher Polish Society of Ecological Engineering (PTIE)
series Ecological Engineering & Environmental Technology
issn 2719-7050
publishDate 2021-09-01
description Freshwater supply is critical for domestic, agriculture and industrial purposes. A good supply of clean water is normally obtained from surface and groundwater water bodies. Nonetheless, many localities rely heavily on the later as the main source of their water resource. Therefore, proper mapping, exploitation and conservation of groundwater resources should become a primary focus in years to come. In this study, groundwater samples collected from Bamanghati, Odisha were assigned into three classes (excellent, good and bad) based on guidelines provided by World Health Organization in 1984 These water quality assignments were completed via a combined approach of hydro-geochemical information and artificial neural network for reconstructing a classifier for groundwater analysis. Here, the probabilistic approach and boosted instance selection method were used to remove inconsistencies in the dataset and to determine the classification accuracy, respectively. Finally, the transmuted dataset is used for kernel estimator-based Bayesian and Decision tree (J48) classification approaches. Findings from the present study confirm that the preprocessing task using statistical analysis along with the combined method of hydro-geochemical attributes-based classification approach is encouraging while the decision tree approach is better than the Bayesian neural network classifier in terms of precision, recall, F-measures, and Kappa statistics.
topic gis
classification
data mining
bayesian artificial neural network
hydro-geochemical information
url http://www.ecoeet.com/Hydro-Geochemical-Attributes-Based-Classifiers-for-Groundwater-Analysis,139412,0,2.html
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AT kamallochanmohanta hydrogeochemicalattributesbasedclassifiersforgroundwateranalysis
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AT tanmaysarkar hydrogeochemicalattributesbasedclassifiersforgroundwateranalysis
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