| dc.description.abstract |
The rapid expansion of urban areas has intensified challenges related to air pollution, posing
significant risks to public health, ecological stability, and urban resilience. Current forecasting
and mitigation strategies often face high computational costs, limited scalability, and insufficient
integration of health impacts, creating a gap between theoretical models and their practical
application in real-world smart city contexts. For instance, a highly sophisticated deep learning
model can accurately predict air pollution levels in controlled settings. However, its deployment
within a real-time smart city infrastructure can prove impractical due to the demands for high
computational power, expensive hardware, and prolonged processing times. Consequently, city
administrators cannot use these predictions quickly enough to issue a timely health advisory
or implement mitigation strategies. To address these challenges, this dissertation presents a
comprehensive, energy-efficient, AI-driven framework for urban air quality management that
integrates real-time forecasting, sustainable mitigation strategies, and health impact assessments.
The framework features a multi-layered architecture that combines convolutional and recurrent
neural networks with federated optimization and edge computing. This design ensures accurate,
low-latency predictions while minimizing computational demands. A spatiotemporal deep
learning model captures local dependencies and long-term temporal dynamics, enabling robust
air quality forecasting across diverse urban landscapes. Moreover, federated learning techniques
are employed to safeguard data privacy and enhance convergence on heterogeneous datasets,
while lightweight, energy-efficient models incorporate environmental and industrial parameters
to facilitate low-power deployment. Evaluation using extensive urban datasets demonstrates
that the proposed models/frameworks achieve superior prediction accuracy, faster convergence,
and reduced energy consumption compared to existing methods. In addition, a health-oriented
analysis highlights the correlation between pollution exposure, demographic factors, and public
health risks. At the same time, the integration of meteorological data reveals strong associations
between heatwave events and declining air quality. These findings offer actionable insights for
emission control, sustainable urban planning, and proactive health risk management.
By aligning predictive intelligence with national smart city and green growth strategies, the
framework presents scalable, adaptive solutions that promote healthier and more resilient urban
ecosystems. It equips policymakers, planners, and public health authorities with decision-support
tools designed to enhance sustainability, livability, and overall human well-being. |
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