Conference Paper

Design of IoT-based Air Quality Meter Module and Air Quality Analysis with Machine Learning

Number: 26 July 31, 2021
TR EN

Design of IoT-based Air Quality Meter Module and Air Quality Analysis with Machine Learning

Abstract

This study proposes an ARM based air quality module placed to public transport vehicles for analyzing the effect of PM2.5 and PM10 particles in the cities in real-time using Internet of Things. The STM32 microcontroller is used for obtaining the data from the PM, humidity, and temperature sensors. The data collected from the sensors are sent to the i.MX6UL microprocessor using RS-485 connected to the internet portal with an Ethernet module. The microprocessor sends the data to the Microsoft Azure Hub in-on-line, and it is also recorded via the computer. The obtained data is analyzed for air quality-meteorological variables and the regression models are implemented via machine learning algorithms. PM2.5, PM10, humidity and temperature data are evaluated with R2 test and root mean square error for regression models. The Random Forest algorithm shows better results among other used regression models.

Keywords

Supporting Institution

Scientific and Technical Research Council of Turkey (TUBITAK)

Project Number

1139B412000704

References

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  5. El Houssaini, D., Khriji, S., Besbes, K., & Kanoun, O. Real Time Temperature Measurement for Industrial Environment.
  6. Giannadaki, D., Lelieveld, J., & Pozzer, A. (2016). Implementing the US air quality standard for PM 2.5 worldwide can prevent millions of premature deaths per year. Environmental Health, 15(1), 1-11.
  7. Hu, K., Rahman, A., Bhrugubanda, H., & Sivaraman, V. (2017). HazeEst: Machine learning based metropolitan air pollution estimation from fixed and mobile sensors. IEEE Sensors Journal, 17(11), 3517-3525.
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Details

Primary Language

English

Subjects

Engineering

Journal Section

Conference Paper

Publication Date

July 31, 2021

Submission Date

June 25, 2021

Acceptance Date

June 27, 2021

Published in Issue

Year 2021 Number: 26

APA
Türkyener, E. A., Şahin, S., & Arslan, S. (2021). Design of IoT-based Air Quality Meter Module and Air Quality Analysis with Machine Learning. Avrupa Bilim Ve Teknoloji Dergisi, 26, 364-368. https://doi.org/10.31590/ejosat.957500
AMA
1.Türkyener EA, Şahin S, Arslan S. Design of IoT-based Air Quality Meter Module and Air Quality Analysis with Machine Learning. EJOSAT. 2021;(26):364-368. doi:10.31590/ejosat.957500
Chicago
Türkyener, Ege Alp, Savaş Şahin, and Sadık Arslan. 2021. “Design of IoT-Based Air Quality Meter Module and Air Quality Analysis With Machine Learning”. Avrupa Bilim Ve Teknoloji Dergisi, nos. 26: 364-68. https://doi.org/10.31590/ejosat.957500.
EndNote
Türkyener EA, Şahin S, Arslan S (July 1, 2021) Design of IoT-based Air Quality Meter Module and Air Quality Analysis with Machine Learning. Avrupa Bilim ve Teknoloji Dergisi 26 364–368.
IEEE
[1]E. A. Türkyener, S. Şahin, and S. Arslan, “Design of IoT-based Air Quality Meter Module and Air Quality Analysis with Machine Learning”, EJOSAT, no. 26, pp. 364–368, July 2021, doi: 10.31590/ejosat.957500.
ISNAD
Türkyener, Ege Alp - Şahin, Savaş - Arslan, Sadık. “Design of IoT-Based Air Quality Meter Module and Air Quality Analysis With Machine Learning”. Avrupa Bilim ve Teknoloji Dergisi. 26 (July 1, 2021): 364-368. https://doi.org/10.31590/ejosat.957500.
JAMA
1.Türkyener EA, Şahin S, Arslan S. Design of IoT-based Air Quality Meter Module and Air Quality Analysis with Machine Learning. EJOSAT. 2021;:364–368.
MLA
Türkyener, Ege Alp, et al. “Design of IoT-Based Air Quality Meter Module and Air Quality Analysis With Machine Learning”. Avrupa Bilim Ve Teknoloji Dergisi, no. 26, July 2021, pp. 364-8, doi:10.31590/ejosat.957500.
Vancouver
1.Ege Alp Türkyener, Savaş Şahin, Sadık Arslan. Design of IoT-based Air Quality Meter Module and Air Quality Analysis with Machine Learning. EJOSAT. 2021 Jul. 1;(26):364-8. doi:10.31590/ejosat.957500