Abstract
Air pollution is a significant environmental concern that affects human health,
ecosystems, and climate change. Effective monitoring and management of outdoor air quality
are crucial for mitigating its adverse effects. This paper presents an advanced approach to
outdoor pollution measurement utilizing Internet of Things (IoT) technology, combined with
optimization techniques to enhance system efficiency and data accuracy. The proposed
framework integrates a network of IoT sensors that continuously monitor various air pollutants,
such as particulate matter (PM), carbon monoxide (CO), sulfur dioxide (SO₂), nitrogen dioxide
(NO₂), and ozone (O₃), across different geographic locations. The data collected by these
sensors are transmitted to a centralized system where optimization algorithms, such as Genetic
Algorithms (GA), Particle Swarm Optimization (PSO), and Simulated Annealing (SA), are applied
to optimize sensor placement, data transmission, and processing efficiency. This ensures
accurate, real-time pollution monitoring and data analysis, providing actionable insights for
policymakers, environmental agencies, and the general public.