SOIL POLLUTION DETECTION USING MACHINE LEARNING: A REVIEW

Authors

  • Nirvair Neeru Department of Computer Science & Engineering, Punjabi University Patiala.
  • Navjot Kaur Department of Computer Science & Engineering, Punjabi University Patiala

Keywords:

Soil contamination, agriculture, pollutant detection, sensor networks, monitoring, and prediction.

Abstract

Soil pollution is a developing natural issue, which leads to extreme biological, horticultural, and general wellbeing issues. Conventional strategies for detection and to monitor soil pollution such as chemical analysis and manual sampling are very tedious, costly, and limited in scope. Machine learning (ML) presents a promising way to overcome these problems by automatic detection of pollutants, prediction of contamination trends, and optimization monitoring strategies. This paper reviews the present status, the difficulties and future capability of ML in the field of soil pollution detection and mitigation.

 

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Published

2024-12-29

How to Cite

Nirvair Neeru, & Navjot Kaur. (2024). SOIL POLLUTION DETECTION USING MACHINE LEARNING: A REVIEW. Journal Punjab Academy of Sciences, 24, 93–96. Retrieved from https://jpas.in/index.php/home/article/view/105