Monitoring the natural environment with the use of IoT based system

Over the years, the issue of air pollution is increasingly published in line with the seriousness of this problem for human health. However, air quality is just one of many issues that are solved by Environmental Computer Science. The areas in which Environmental Computer Science deals are the foundation for the creation of Environmental Decision Support Systems. Such systems are complex, extensive and multidisciplinary IT solutions. The aim of the research was to develop a comprehensive system based on the Internet of Things architecture, which is used to monitor environmental conditions. The first stage of this research includes the creation of a system for collecting, storing and analyzing data in the area of air quality tests in the city.

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