Statistical Inference and Analysis for Efficient Modeling of Environmental Pollution using Deep Neural Networks | IEEE Conference Publication | IEEE Xplore
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Statistical Inference and Analysis for Efficient Modeling of Environmental Pollution using Deep Neural Networks


Abstract:

Rapid development, due to industrialization and urbanization happening worldwide, has become a prominent cause of air pollution. In such a situation, it is important to c...Show More

Abstract:

Rapid development, due to industrialization and urbanization happening worldwide, has become a prominent cause of air pollution. In such a situation, it is important to create an air quality prediction model development methodology, which not only models the data but also provides inferences understandable to the policymakers. Therefore, in this research, a new methodology has been proposed, where the prediction model is created by combining the concepts of Statistical Inferencing and Deep Learning [Gated Recurring Units (GRU)]. Hourly air pollutants concentration and meteorological data with 14 features measured over one year from 25 different monitoring stations in Northern Taiwan are considered as the dataset. Using methodologies such as Analysis of Variance, Tukey Honestly Significant Difference, Graph theory, and Chi-Square analysis, the voluminous dataset is first clustered based on geographical correlations, and for each cluster, the most significant features responsible for modulating Particulate Matter (PM10) concentrations are identified. Subsequently, the new datasets obtained through the statistical study are used to train the GRU model for final predictions. The proposed model has exhibited an overall accuracy between 90.4% to 99.2% for all clusters. The generic nature of the proposed methodology allows for its extension to predict the transient behaviour of other pollutants across different geographical locations.
Date of Conference: 14-16 December 2022
Date Added to IEEE Xplore: 14 April 2023
ISBN Information:
Conference Location: Chennai, India

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