Vol. 2 No. 08 (2025): Air Quality Prediction Using Machine Learning Algorithms

					View Vol. 2 No. 08 (2025): Air Quality Prediction Using Machine Learning Algorithms

ABSTRACT

The project titled "Air Quality Prediction Using Machine Learning Algorithms" endeavors to address the critical issue of air pollution through the application of advanced computational techniques. The project aims to develop a robust predictive model that can forecast air quality levels based on historical data, meteorological parameters, and relevant environmental features. Leveraging machine learning algorithms such as regression, decision trees, or neural networks, the project seeks to analyze complex relationships within the data and enhance the accuracy of air quality predictions.

The methodology involves the collection and preprocessing of extensive datasets encompassing pollutant concentrations, weather conditions, and geographical information. The selected machine learning algorithms will be trained on this data to recognize patterns and correlations, enabling the model to make accurate predictions. The project also explores the integration of real-time data streams, satellite imagery, and sensor networks to improve the responsiveness of the predictive model.

 

Published: 2025-08-29

Articles

  • Air Quality Prediction Using Machine Learning Algorithms

    DOI: https://doi.org/10.1234/6ncy0e61