Groundwater Pollution and Contamination: Sources, Impacts, Management, and the Integration of AI/ML for Future Solutions
DOI:
https://doi.org/10.61424/rjcime.v2i2.307Keywords:
Artificial Intelligence (AI), Environmental Impacts, Groundwater Contamination, Groundwater Pollution, Human Health, Machine Learning (ML), Prevention, Remediation, Sources of Pollution, Water Management, Water QualityAbstract
This paper presents a synthesized compendium of current knowledge about groundwater pollution and contamination, a critical environmental predicament with profound ramifications for public health, ecological resilience, and socio-economic stability. Groundwater, constituting a substantial reserve of global freshwater, is increasingly imperiled by anthropogenic activities and geogenic processes. The study delineates the principal sources of groundwater impairment, encompassing agricultural non-point source pollution, industrial effluent discharges, subsurface wastewater infiltration, and leachate from waste disposal sites, while elucidating the hydrogeological mechanisms governing contaminant introduction and subsurface transport within aquifer matrices. A rigorous examination is conducted of the deleterious impacts of groundwater pollution, encompassing the degradation of potable water quality and consequent human health risks, spanning acute infectious diseases and chronic systemic pathologies, the disruption of interconnected aquatic ecosystems through contaminant flux, and the substantial economic burden associated with water scarcity, remedial interventions, and healthcare expenditures. Contemporary groundwater management paradigms are critically appraised, including preventive strategies, monitoring protocols, and remediation technologies. Furthermore, the transformative potential of advanced computational methodologies, specifically machine learning (ML) and artificial intelligence (AI), in enhancing groundwater management efficacy is explored, highlighting their application in predictive modeling, resource optimization, and remediation design. The discourse culminates in the articulation of prospective research trajectories deemed imperative for advancing the science and practice of groundwater protection and remediation. These future research directions encompass the development of novel analytical techniques for emerging contaminants, the refinement of predictive models for contaminant fate and transport under dynamic environmental conditions, the advancement of sustainable and cost-effective remediation technologies, the assessment of climate change impacts on groundwater vulnerability, and the ethical and responsible integration of AI/ML into groundwater management frameworks. Addressing the multifaceted challenges of groundwater pollution necessitates a holistic, interdisciplinary approach, integrating scientific innovation, robust policy frameworks, and stakeholder engagement to ensure this indispensable resource's long-term sustainability and potability.
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