Harnessing the Power of Artificial Intelligence for the Detection and Removal of Contaminants in Water

A Comprehensive Review

Authors

  • Adrian Stoica Departamentul de Științe Ambientale, University of Transylvania, Cluj-Napoca, Romania
  • Tudor Popescu Facultatea de Științe Ambientale, Moldova International University, Iasi, Romania

Keywords:

Artificial Intelligence, Water quality management, Contaminant detection, Contaminant removal, Treatment plants

Abstract

As concerns over water quality and scarcity intensify globally, the integration of artificial intelligence (AI) technologies into water management systems has emerged as a promising solution. This comprehensive review examines the pivotal role of AI in the detection and removal of contaminants from water sources. Through an exploration of cutting-edge technologies, machine learning algorithms, and their applications, this review provides insights into the current state, challenges, and future prospects of AI-driven approaches in water quality management.

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References

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Published

25-08-2023

How to Cite

Stoica, A., & Popescu, T. (2023). Harnessing the Power of Artificial Intelligence for the Detection and Removal of Contaminants in Water: A Comprehensive Review. Inventum Biologicum: An International Journal of Biological Research, 3(3), 62–67. Retrieved from https://journals.worldbiologica.com/ib/article/view/60

Issue

Section

Review article