Improving air quality management using gradient boosting based hierarchical temporal memory neural networks and fuzzy based classification based regression tree

@article{Sagayaraj2018ImprovingAQ,
  title={Improving air quality management using gradient boosting based hierarchical temporal memory neural networks and fuzzy based classification based regression tree},
  author={S. Sagayaraj and N. Vetrivelan},
  journal={International journal of engineering and technology},
  year={2018},
  volume={7},
  pages={12}
}
In recent years, air pollution introduces different biological molecules, particulate and several harmful materials which affect the human health and activities. So, the quality of the air should be maintained for avoiding the above issues. To manage the air quality initially the meteorological data have been collected from Ariyalur that includes the condition of air, data collected date, high and low temperature, wind speed, wind direction and relative humidity. The collected data has to be… Expand
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