Modeling air quality index using optimized neuronal networks inspired by swarms

  • Pruthi D
  • Bhardwaj R
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Abstract

Air quality prediction is a significant field in environmental engineering, as air and water are essential for life on Earth. Nowadays, a common parameter used worldwide to measure air quality is termed as Air quality index. The parameter is measured based on the air pollutant concentration. The hybrid neuronal networks have been widely used for modeling air quality index. In the quest of optimizing the error in modeling air quality index, the existing adaptive neuro-fuzzy inference system is improved in this study using algorithms based on evolution and swarm movement. The model is based on the prominent air pollutants- nitrogen oxide, particulate matter of size equal to or less than 2.5microns (PM2.5), and sulphur dioxide. The proposed hybrid model using wavelet transform, particle swarm optimization, and adaptive neuro-fuzzy inference system accurately predicts the Air Quality Index and can be used in the public interest to take necessary precautions beforehand.

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Pruthi, D., & Bhardwaj, R. (2020). Modeling air quality index using optimized neuronal networks inspired by swarms. Environmental Engineering Research, 26(6), 200469–0. https://doi.org/10.4491/eer.2020.469

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