Remote Sensing Data-Based Satellite Image Analysis in Water Quality Detection for Public Health Data Modelling

Balakrishnan, S. and Preetam Raj, P Michael and Somasekar, J. and Kumar, Kambala Vijaya and Amutha, S. and Sangeetha, A. (2024) Remote Sensing Data-Based Satellite Image Analysis in Water Quality Detection for Public Health Data Modelling. Remote Sensing in Earth Systems Sciences, 7 (4). pp. 532-541. ISSN 2520-8195

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Abstract

One of the most important aspects of environmental sustainability is water quality monitoring. The ecology is impacted by poor water quality in addition to aquatic life. With the volume of data being collected from satellite systems, the issue of effectively and automatically extracting water bodies is growing more pressing. One of the most important things to do for managing and safeguarding water resources is to conduct extensive monitoring of water quality parameters, or WQPs. It is still difficult to monitor optically inactive WQPs in inland waters, such as total nitrogen (TN), ammoniacal nitrogen (AN), and total phosphorus (TP). Water quality (WQ) classification and prediction can be greatly enhanced with the use of artificial intelligence (AI). This research proposes novel method in healthcare detection by water quality analysis based on classification utilising ML model. Input is collected as healthcare dataset based on water quality as well as processed for noise removal and normalisation. The processed data features are extracted and classified utilising reinforcement Gaussian stacked layer network with variational fuzzy Markov basis neural network. In order to suggest best course of action for the water bodies, it is imperative that any study look into the spatiotemporal changes of the dominant water quality parameters (WQPs). WQP concentrations have typically been determined by extensive fieldwork. These findings could help identify and regulate non-point source pollution, offer a large-scale spatial picture of the water quality, and pinpoint vulnerable locations and times of water pollution. Experimental analysis is carried out for various water sample dataset in terms of detection accuracy, mean precision, recall, F-1 score and AUC. The proposed technique obtained 97% of detection accuracy, 95% of recall, 91% of F-1 score, 96% of AUC, and 94% of MAP. © 2024 Elsevier B.V., All rights reserved.

Item Type: Article
Subjects: Earth and Planetary Sciences > Earth Sciences
Divisions: Arts and Science > Vinayaka Mission's Kirupananda Variyar Arts & Science College, Salem > Computer Science
Depositing User: Unnamed user with email techsupport@mosys.org
Last Modified: 27 Nov 2025 05:12
URI: https://vmuir.mosys.org/id/eprint/1397

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