Deciphering Environmental Air Pollution with Large Scale City Data
- URL: http://arxiv.org/abs/2109.04572v1
- Date: Thu, 9 Sep 2021 22:00:51 GMT
- Title: Deciphering Environmental Air Pollution with Large Scale City Data
- Authors: Mayukh Bhattacharyya, Sayan Nag, Udita Ghosh
- Abstract summary: Various factors ranging from emissions from traffic and power plants, household emissions, natural causes are known to be primary causal agents or influencers behind rising air pollution levels.
We introduce a large scale city-wise dataset for exploring the relationships among these agents over a long period of time.
Also, we provide a set of benchmarks for the problem of estimating or forecasting pollutant levels with a set of diverse models and methodologies.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Out of the numerous hazards posing a threat to sustainable environmental
conditions in the 21st century, only a few have a graver impact than air
pollution. Its importance in determining the health and living standards in
urban settings is only expected to increase with time. Various factors ranging
from emissions from traffic and power plants, household emissions, natural
causes are known to be primary causal agents or influencers behind rising air
pollution levels. However, the lack of large scale data involving the major
factors has hindered the research on the causes and relations governing the
variability of the different air pollutants. Through this work, we introduce a
large scale city-wise dataset for exploring the relationships among these
agents over a long period of time. We analyze and explore the dataset to bring
out inferences which we can derive by modeling the data. Also, we provide a set
of benchmarks for the problem of estimating or forecasting pollutant levels
with a set of diverse models and methodologies. Through our paper, we seek to
provide a ground base for further research into this domain that will demand
critical attention of ours in the near future.
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