Appraising the hydrogeochemistry and pollution status of groundwater in Afikpo North, SE Nigeria, using stoichiometric and indexical modeling approach DOI
I. M. Onwe, Chinanu O. Unigwe,

Rock Mkpuma Onwe

et al.

Modeling Earth Systems and Environment, Journal Year: 2023, Volume and Issue: 10(1), P. 99 - 119

Published: April 20, 2023

Language: Английский

Advances in machine learning and IoT for water quality monitoring: A comprehensive review DOI Creative Commons
Ismail Essamlali, Hasna Nhaila, Mohamed El Khaïli

et al.

Heliyon, Journal Year: 2024, Volume and Issue: 10(6), P. e27920 - e27920

Published: March 1, 2024

Water holds great significance as a vital resource in our everyday lives, highlighting the important to continuously monitor its quality ensure usability. The advent of the. Internet Things (IoT) has brought about revolutionary shift by enabling real-time data collection from diverse sources, thereby facilitating efficient monitoring water (WQ). By employing Machine learning (ML) techniques, this gathered can be analyzed make accurate predictions regarding quality. These predictive insights play crucial role decision-making processes aimed at safeguarding quality, such identifying areas need immediate attention and implementing preventive measures avert contamination. This paper aims provide comprehensive review current state art monitoring, with specific focus on employment IoT wireless technologies ML techniques. study examines utilization range technologies, including Low-Power Wide Area Networks (LpWAN), Wi-Fi, Zigbee, Radio Frequency Identification (RFID), cellular networks, Bluetooth, context Furthermore, it explores application both supervised unsupervised algorithms for analyzing interpreting collected data. In addition discussing art, survey also addresses challenges open research questions involved integrating (WQM).

Language: Английский

Citations

33

Groundwater Quality Assessment and Irrigation Water Quality Index Prediction Using Machine Learning Algorithms DOI Open Access
Enas E. Hussein, A. Derdour, Bilel Zerouali

et al.

Water, Journal Year: 2024, Volume and Issue: 16(2), P. 264 - 264

Published: Jan. 11, 2024

The evaluation of groundwater quality is crucial for irrigation purposes; however, due to financial constraints in developing countries, such evaluations suffer from insufficient sampling frequency, hindering comprehensive assessments. Therefore, associated with machine learning approaches and the water index (IWQI), this research aims evaluate Naama, a region southwest Algeria. Hydrochemical parameters (cations, anions, pH, EC), qualitative indices (SAR,RSC,Na%,MH,and PI), as well geospatial representations were used determine groundwater’s suitability study area. In addition, efficient forecasting IWQI utilizing Extreme Gradient Boosting (XGBoost), Support vector regression (SVR), K-Nearest Neighbours (KNN) models implemented. research, 166 samples calculate index. results showed that 42.18% them excellent quality, 34.34% very good 6.63% 9.64% satisfactory, 4.21% considered unsuitable irrigation. On other hand, indicate XGBoost excels accuracy stability, low RMSE (of 2.8272 high R 0.9834. SVR only four inputs (Ca2+, Mg2+, Na+, K) demonstrates notable predictive capability 2.6925 0.98738, while KNN showcases robust performance. distinctions between these have important implications making informed decisions agricultural management resource allocation within region.

Language: Английский

Citations

32

A review of the status, challenges, trends, and prospects of groundwater quality assessment in Nigeria: an evidence-based meta-analysis approach DOI
Michael E. Omeka, Arinze Longinus Ezugwu, Johnson C. Agbasi

et al.

Environmental Science and Pollution Research, Journal Year: 2024, Volume and Issue: 31(15), P. 22284 - 22307

Published: Feb. 29, 2024

Language: Английский

Citations

28

Evaluation of groundwater quality indices using multi-criteria decision-making techniques and a fuzzy logic model in an irrigated area DOI
Jamila Hammami Abidi,

Hussam Eldin Elzain,

S. Chidambaram

et al.

Groundwater for Sustainable Development, Journal Year: 2024, Volume and Issue: 25, P. 101122 - 101122

Published: Feb. 16, 2024

Language: Английский

Citations

14

Applying the water quality indices, geographical information system, and advanced decision-making techniques to assess the suitability of surface water for drinking purposes in Brahmani River Basin (BRB), Odisha DOI
Abhijeet Das

Environmental Science and Pollution Research, Journal Year: 2025, Volume and Issue: unknown

Published: March 31, 2025

Language: Английский

Citations

1

Irrigation suitability and health risk assessment of groundwater resources in the Firozabad industrial area of north-central India: An integrated indexical, statistical, and geospatial approach DOI Creative Commons
Anuj Saraswat,

Triyugi Nath,

Michael E. Omeka

et al.

Frontiers in Environmental Science, Journal Year: 2023, Volume and Issue: 11

Published: March 15, 2023

The recent global upsurge in anthropogenic activities has resulted a decline the quality of water. This by extension increased ubiquity water pollution terms sources. application traditional assessment methods usually involves use conventional parameters and guideline values. may be associated with bias errors during computation various sub-indices. Hence, to overcome this limitation, it is critical have visual appraisal source human health risks exposure for sustainable resource management informed decision-making. Therefore, present study integrated multiple indices, spatio-temporal, statistical models assess suitability fifty groundwater samples (n = 50) within Firozabad industrial area irrigation drinking; as well likely from oral intake dermal contact inhabitants. Electrical conductivity (mean 1,576.6 μs/cm), total hardness 230.9 mg/L), dissolved sodium 305.1 mg/L) chloride 306.1 fluoride 1.52 occurred at concentrations above recommended standards; attributed influxes agricultural wastewater. index revealed that 100% are extremely polluted; was also supported joint multivariate analyses. majority irrigational indices (sodium adsorption ratio, Kelly’s Ratio, permeability index, percent sodium) long-term will result reduced crop yield unless remedial measures put place. Higher Hazard (HI > 1) nitrate ingestion recorded children population compared adult; an indication more predisposed Generally, risk levels appear increase western north-eastern parts area. From findings study, highly adequate practices, land use, treatment regulatory strategies place sustainability enhanced production protection.

Language: Английский

Citations

19

Assessment of hydrochemical characteristics, health risks and quality of groundwater for drinking and irrigation purposes in a mountainous region of Pakistan DOI Creative Commons
Waqar Azeem Jadoon, Muhammad Zaheer,

Abdul Tariq

et al.

Environmental Science and Pollution Research, Journal Year: 2024, Volume and Issue: 31(31), P. 43967 - 43986

Published: June 25, 2024

Renowned for its agriculture, livestock, and mining, Zhob district, Pakistan, faces the urgent problem of declining groundwater quality due to natural human-induced factors. This deterioration poses significant challenges residents who rely on drinking, domestic, irrigation purposes. Therefore, this novel study aimed carry out a comprehensive assessment in considering various aspects such as hydrochemical characteristics, human health risks, suitability drinking While previous studies may have focused one or few these aspects, integrates multiple analyses provide holistic understanding situation region. Additionally, applies range common analysis methods (acid-base titration, flame atomic absorption spectrometry, ion chromatography), water index (WQI), indices, risk models, using 19 parameters. multi-method approach enhances robustness accuracy assessment, providing valuable insights decision-makers stakeholders. The results revealed that means majority parameters, pH (7.64), electrical conductivity (830.13 μScm

Language: Английский

Citations

7

Evaluation of surface water quality in Brahmani River Basin, Odisha (India), for drinking purposes using GIS-based WQIs, multivariate statistical techniques and semi-variogram models DOI
Abhijeet Das

Innovative Infrastructure Solutions, Journal Year: 2024, Volume and Issue: 9(12)

Published: Nov. 23, 2024

Language: Английский

Citations

7

Hydrological modeling for settling pond management in nickel mines: the Case of Hinatuan Mining Corporation in Tagana-an, Surigao del Norte, Philippines DOI
Arnold G. Apdohan,

Julie Rose D. Apdohan,

Romell A. Seronay

et al.

Modeling Earth Systems and Environment, Journal Year: 2025, Volume and Issue: 11(2)

Published: Jan. 20, 2025

Language: Английский

Citations

0

Alleviating Health Risks for Water Safety: A Systematic Review on Artificial Intelligence-Assisted Modelling of Proximity-Dependent Emerging Pollutants in Aquatic Systems DOI Creative Commons

Marc Deo Jeremiah Victorio Rupin,

Kylle Gabriel Cruz Mendoza,

Rugi Vicente C. Rubi

et al.

Published: Feb. 21, 2025

Emerging pollutants such as pharmaceuticals, industrial chemicals, heavy metals, and microplastics are a growing ecological risk affecting water soil resources. Another challenge in current wastewater treatments includes tracking treating these pollutants, which can be costly. As concern, emerging do not have lower limit levels detrimental to aquatic resources minuscule amounts. Thus, the assessment of multiple community-based sources surface groundwater is prioritized area study for resource management. It provides basis health management arising diseases cancer dengue caused by unsafe sources. Accordingly, utilizing artificial intelligence, wide-range data-driven insights synthesized assist propose solution pathways without need exhaustive experimentation. This systematic review examines intelligence-assisted modelling notably machine learning deep models, with proximity dependence correlated synergistic effects both humans life. underscores increasing accumulation their toxicological on community how utilized addressing research gaps related treatment methods pollutants.

Language: Английский

Citations

0