Machine Learning–Driven Remote Sensing Framework for Predicting Groundwater Pollution under Climate Change Scenarios
Keywords:
Machine learning; Remote sensing; Groundwater pollution; Climate change; Random forests; Spatiotemporal prediction; Water qualityAbstract
: Pollution poses a significant threat to global water security, a challenge that is increasingly intensified by climate variability, which alters recharge dynamics, contaminant transport pathways, and aquifer vulnerability. Conventional monitoring approaches, constrained by sparse well networks and limited spatial coverage, are often inadequate for capturing the heterogeneity of contamination plumes across complex hydrogeological systems. This study develops a machine learning–driven framework integrating multi-sensor remote sensing data and climate projections to predict groundwater contamination under changing environmental conditions. Supervised learning algorithms—including Random Forest (RF), Support Vector Regression (SVR), Gradient Boosting Machines (GBM), and Artificial Neural Networks (ANN)—were trained using satellite datasets (Landsat, Sentinel-1/2, and MODIS), meteorological reanalysis (ERA5), and in-situ groundwater quality observations (>23,000 samples) across three hydrogeological regions. The models incorporated spectral indices, land surface temperature, soil moisture proxies, terrain attributes, and climate variables within a spatiotemporal prediction framework. Results indicate that RF and GBM models achieved the highest predictive performance, with test-set coefficients of determination (R²) ranging from 0.79 to 0.87 for nitrate and 0.74 to 0.81 for salinity, and root mean square errors (RMSE) of 3.2–4.8 mg/L and 180–240 µS/cm, respectively. Heavy metal predictions showed moderate performance (R² up to 0.76), reflecting stronger dependence on localized geochemical controls. Ensemble modeling approaches improved prediction accuracy by 10–15% compared to single-model implementations, with overall classification accuracies exceeding 85% for contamination threshold exceedance.
Climate-informed models demonstrated enhanced generalization under extreme conditions, improving predictive skill by 0.04–0.07 in R² during drought years. Future projections under SSP2-4.5 and SSP5-8.5 scenarios indicate potential increases in groundwater nitrate concentrations of 8–28% by mid- to late-century, driven by reduced recharge and increased evapotranspiration. However, spatial transferability remains limited, with inter-regional model performance declining by up to 0.30 in R² due to hydrogeological heterogeneity and data scarcity. The study highlights the potential of integrating remote sensing, machine learning, and climate modeling for large-scale groundwater quality assessment and early warning systems. It further emphasizes the need for hybrid physics-informed approaches and targeted data acquisition to improve model robustness and operational applicability in data-sparse regions.
Downloads
Published
Issue
Section
License
Authors retain copyright and grant the journal the right of first publication. Articles published in this journal are licensed under a Creative Commons Attribution 4.0 International License (CC BY 4.0), permitting unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.
How to Cite
Most read articles by the same author(s)
- Mu’awiya Baba Aminu, Sangodiji Enoch Ezekiel, Rebecca Juliet Ayanwunmi, Anako Shefawu Onize, Daniel Chukwunonso Chukwudi, Changde Andrew Nanfa, A Review of the Hydrogeological Framework and Groundwater Resources Management in Nigeria: Current Status and Future Trend , Applied Science, Computing, and Energy: Vol. 2 No. 2 (2025): VOLUME 2 ISSUE 2
- Changde A. Nanfa, Christopher Simon Dalom, Olaitan Gbolahan Olaseni, Mu’awiya Baba Aminu, Okiyi I. Millicent, Geoelectrical Investigation of Aquifer Systems in Toro and Environs, Northeast Nigeria , Applied Science, Computing, and Energy: Vol. 3 No. 1 (2025): VOLUME 3 ISSUE 1
- Nana Fatima Abdulmalik, Bello, Ayoola Yusuf, Mu’awiya Baba Aminu, Christopher Simon Dalom, Integrating Satellite Imagery and Aero-radiometric Datasets in Lithological Discrimination and Detection of Hydrothermal Zones at Ikara and its Environs, North-Central of the Basement Complex, Nigeria , Applied Science, Computing, and Energy: Vol. 2 No. 1 (2025): VOLUME 2 ISSUE 1
- Abdulbariu Ibrahim, Mu’awiya Baba Aminu, Ibrahim O. Ibrahim, Abidemi Obatoyinbo Ajayi, John B. Ogunleye, Rebecca Juliet Ayanwunmi, Samson Ayobami Akinbunmi, Geophysical and Geotechnical Approaches in investigating causes of road failure along Zone 8 - Crusher Road, Lokoja, Kogi State. , Applied Science, Computing, and Energy: Vol. 3 No. 1 (2025): VOLUME 3 ISSUE 1
- Mu’awiya Baba Aminu, Sangodiji Enoch Ezekiel, Daniel Chukwunonso Chukwudi, Anako Shefawu Onize, Changde A. Nanfa, Saleh Mamman Abdullahi, Review of Carbon Capture and Storage (CCS) and the Way Forward in Developing Country – Nigeria , Applied Science, Computing, and Energy: Vol. 2 No. 2 (2025): VOLUME 2 ISSUE 2
- Mu’awiya Baba Aminu, Abdulbariu Ibrahim, Sangodiji Enoch Ezekiel, Rebecca Juliet Ayanwunmi, Anako Shefawu Onize, Olusola Kolawole Ogunmilua, Foundation Feasibility in Lokoja: Geotechnical Perspectives , Applied Science, Computing, and Energy: Vol. 2 No. 2 (2025): VOLUME 2 ISSUE 2
Similar Articles
- Okorie Nwabueze Ezekiel, Integrated Public Health Approaches to Biomonitoring and Control of Emerging Parasitic Infections in Tropical Regions , Applied Science, Computing, and Energy: Vol. 3 No. 3 (2025): Volume 3, Issue 3
- Forward Nsama, Assessing the Cost-Containment Effectiveness of AI-Based Predictive Models in Reducing Avoidable Readmissions and Overtreatment in U.S. Medicare Hospitals , Applied Science, Computing, and Energy: Vol. 2 No. 2 (2025): VOLUME 2 ISSUE 2
- Mu’awiya Baba Aminu, Sangodiji Enoch Ezekiel, Rebecca Juliet Ayanwunmi, Anako Shefawu Onize, Daniel Chukwunonso Chukwudi, Changde Andrew Nanfa, A Review of the Hydrogeological Framework and Groundwater Resources Management in Nigeria: Current Status and Future Trend , Applied Science, Computing, and Energy: Vol. 2 No. 2 (2025): VOLUME 2 ISSUE 2
- Samuel Awolumate, Buba B. Shani, Adekunle James Okhogbe, Energy–Water–Profit Trade-Offs and Scale Economies in Urban Aquaponics Under Electricity Unreliability: Comparative Evidence from Lagos and Abuja, Nigeria , Applied Science, Computing, and Energy: Vol. 4 No. 1 (2026): Volume 4 Issue 1
- Tope Oyebade, Sameul Babatunde, Assessment of Heavy Metal and Hydrocarbon Contamination in Wastewater from Warri Refinery and Petrochemical Company, Delta State, Nigeria, and the Remediation Potential of Kaolinite-Based Nanomaterials , Applied Science, Computing, and Energy: Vol. 1 No. 1 (2024): VOLUME 1 ISSUE 1
- Moses Oluwasegun Odewale, Moses Olagoke Odejobi, Olanrewaju Oluwaseun Ajayi, AI-Driven Self-Optimizing Framework for Real-Time Wireless Network Performance Enhancement , Applied Science, Computing, and Energy: Vol. 1 No. 1 (2024): VOLUME 1 ISSUE 1
- Samuel Awolumate, Bernadette Tosan Fregene, Efficiency Status in Artisanal Fishing Amidst Overfishing, Pollution, and Infrastructure Development on Inland Water Fisheries in Nigeria , Applied Science, Computing, and Energy: Vol. 2 No. 1 (2025): VOLUME 2 ISSUE 1
- Jenny James Okon, Leveraging Artificial Intelligence in Sports and Business Management for Enhanced Health and Performance Outcomes , Applied Science, Computing, and Energy: Vol. 3 No. 2 (2025): VOLUME 3 ISSUE 2
- Amos Abba, Amarachi Nelly Charles, Algorithmic Newsrooms: Integrating Artificial Intelligence and Machine Learning into Modern Journalism , Applied Science, Computing, and Energy: Vol. 3 No. 3 (2025): Volume 3, Issue 3
- Jeremiah Makarau Iliya, Johnson Adeniyi Babafemi, Ibrahim Aliyu Mohammed, Survey of Difficult Concepts in Chemistry Among Secondary School Students in Zaria Local Government Area, Kaduna State, Nigeria , Applied Science, Computing, and Energy: Vol. 3 No. 1 (2025): VOLUME 3 ISSUE 1
You may also start an advanced similarity search for this article.