Machine learning-based Decision Tree J48 with grey wolf optimizer for environmental pollution control

Environ Technol. 2023 May;44(13):1973-1984. doi: 10.1080/09593330.2021.2017491. Epub 2022 Feb 27.

Abstract

ABSTRACTDue to industrialization, activities of human and urbanization, environment is getting polluted. Air pollution has become a main issue in the metropolitan areas of the world. To protect people from diseases, monitoring air quality plays an important thing. This air pollutant may lead to many health issues like respiratory and cardiac problems. The major air pollutants are NO, C6H6, CO, etc. Many research works have been done in predicting air pollution-based health issues, predicting air pollution levels, monitoring and controlling the polluted levels. But they are not efficient, cost of maintenance is high and insufficient tool for monitoring it. To overcome these issues, this paper implements hybrid algorithm of Decision Tree J48 and Grey Wolf Optimizer (DT-GWO). This DT-GWO is a better model to addresses the predicting of Air Quality Index (AQI), which minimizes the error rate, accurately and effectively predicting the air quality. The AQI values are categorised as good, moderate, unhealthy, very unhealthy and hazardous. The dataset used in this work is collected from Kaggle website which contains air pollutants details with air quality index values. Accuracy obtained for decision Tree J48 is 93.72%, grey wolf optimizer is 96.83% and our proposed work DT-GWO is 99.78%.

Keywords: Air quality monitoring; Decision Tree j48; environmental pollution control; grey wolf optimizer; machine learning.

MeSH terms

  • Air Pollutants* / analysis
  • Air Pollution* / prevention & control
  • Algorithms
  • Decision Trees
  • Environmental Monitoring
  • Humans
  • Machine Learning

Substances

  • Air Pollutants