Design of STM32 Air Quality Detection System
DOI:
https://doi.org/10.54691/3qk0q460Keywords:
Temperature and Humidity; MQ-2; Atmospheric Pressure; OLED.Abstract
With the acceleration of industrialization and the expansion of urbanization, environmental pollution issues have become increasingly severe, especially air pollution, which has become a global public health issue. Long-term exposure to high concentrations of fine particulate matter (such as MQ-2) and other pollutants can have a severe impact on human health, including respiratory and cardiovascular diseases. Therefore, monitoring environmental quality has become particularly important. Moreover, with the improvement of people's living standards and health awareness, more and more people are beginning to pay attention to the quality of the environment they are in. Whether it is at home, in the office, or outdoor activities, a tool that can monitor environmental quality in real-time is needed to help make healthier lifestyle decisions. Based on the above aspects, this system is designed for environmental monitoring.
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