AI-Enabled IoT-Based Autonomous Air Quality Monitoring Using Robotic Platform | IJET – Volume 12 Issue 2 | IJET-V12I2P108

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International Journal of Engineering and Techniques (IJET)

Open Access • Peer Reviewed • High Citation & Impact Factor • ISSN: 2395-1303

Volume 12, Issue 2  |  Published: April 2026

Author: Venkatesan.S, Madhan Kumar.S, Mohamed Abudhahir.P, Sivasankaran.M.K

DOI: https://doi.org/{{doi}}  â€˘  PDF: Download

Abstract

Air pollution is a severe environmental and public health concern driven by rapid industrialization and urbanization. Traditional air monitoring systems rely on fixed stations and manual observation, leading to delayed responses to hazardous gas leaks. This paper proposes an AI-enabled, IoT-based autonomous air monitoring system implemented on a four-wheel robotic platform. Controlled by an Arduino microcontroller, the robot navigates environments autonomously while continuously monitoring air quality using CO₂ and temperature sensors. An artificial intelligence-based algorithm analyzes the sensor data to generate multi-level warnings (Warning-1 to Warning-3) based on pollution severity. At critical gas concentrations (Warning-4), the system autonomously activates a timer and stops the robot to prevent hazards. IoT technology is integrated to transmit real-time data to a cloud server, enabling remote monitoring and alert generation via mobile devices. Furthermore, the system incorporates an energy-harvesting dual-fan mechanism that captures waste heat and airflow to generate electrical energy, improving the system’s sustainability. The proposed solution eliminates manual intervention, enhances environmental safety in hazardous zones, and supports the development of smart city infrastructure.

Keywords

Air Quality Monitoring, Internet of Things (IoT), Artificial Intelligence, Autonomous Robot, Energy Harvesting, CO2 Sensor, Smart Environment.

Conclusion

The AI-Enabled IoT-Based Intelligent Air Monitoring Sys- tem successfully demonstrates the integration of robotics, IoT, AI-logic, and energy harvesting to create a robust environmental safety tool. By providing continuous, auto- mated monitoring, the system eliminates the need for hu- man operators to risk exposure in toxic zones. The multi- stage warning algorithm ensures early detection, while the autonomous halt protocol prevents accidents in crit- ically polluted areas. The addition of the dual-fan energy harvester significantly enhances the sustainability of the robotic platform. The system is highly scalable and ready for deployment in smart cities, chemical plants, mining sites, and industrial factories.

References

[1]L. Zhang, H. Kambara, W. Cai, W. Cai, and K. Xing, ”Monitoring and evaluation of air quality in Jinan based on machine learning random forest model,” in Proc. ISCAIT, 2025. [2]M. Sawane, S. Sakhare, K. Shevate, and H. Khillari, ”Air-Guard: Smart Air Pollution Monitoring with MOS Sensors & ESP32,” 2025. [3]R. Raina, K. J. Singh, and S. Kumar, ”Air Sense: In- ternet of Things-enabled Novel Power Efficient Indoor Air Quality Monitoring System,” 2025. [4]J. E. M. Gador, L. H. Atienza, J. D. T. Castor, N. A. A. Galang, and J. R. E. Hizon, ”A Wireless Monitor- ing System to Quantify Indoor-Outdoor Air Pollution in a Building,” in TENCON, 2024. [5]K. Naidu, S. Alfonsus, B. Fabian, J. Y. Hermanto, and S. Lukman, ”A Dual-Parameter Sensing System for an Environmental Air Monitoring,” 2024. [6]F. G u¨ l and H. Ero˘glu, ”Sensor Classification for CO2 Detection in IoT-Enabled Indoor Air Quality Monitor- ing Systems,” 2024. [7]P. K. Malik et al., ”Development of a low-cost IoT de- vice using ESP8266 and Atmega328 for real-time mon- itoring of Outdoor Air Quality with Alert,” 2023. [8]S.-M. Petric˘a et al., ”Energy Efficient IoT Air Quality Monitoring System,” in CSCS, 2023. [9]Sholahudin, Y. Damey, W. Fauji, and M. A. S. Yudono, ”Indoor Air Quality Monitoring System with Automa- tion: A Review,” 2023. [10]H. Cho and Y. Baek, ”Design and Implementation of a Smart Air Quality Monitoring and Purifying System for the School Environment,” 2022. [11]K. V. T. Agullo, J. P. A. Sasis, and J. T. Sese, ”Air Purification System for Air Quality Monitoring In- Vehicle,” 2022. [12]T. Manglani, A. Srivastava, A. Kumar, and R. Sharma, ”IoT based Air and Sound Pollution Monitoring Sys- tem for Smart Environment,” in ICEARS, 2022. [13]H. J. Khadim, F. K. Obaed, and Z. T. Abd Ali, ”Appli- cation of MQ-Sensors to Indoor Air Quality Monitoring in Lab based on IoT,” in ITSS-IoE, 2021. [14]I. P. Soares, D. C. G. De Rezende, and K. N. De Almeida, ”Optimal Designing of Air Quality Monitor- ing Network around a Port, in Bahia State,” 2021. [15]M. Komarudin et al., ”Air Quality Monitoring Device for Smart Health Solution during Covid-19 Pandemic,” 2021. [16] S. Faiazuddin, M. V. Lakshmaiah, K. T. Alam, and M. Ravikiran, ”IoT based Indoor Air Quality Monitoring system using Raspberry Pi4,” 2020. [17]S. Esfahani, P. Rollins, J. P. Specht, M. Cole, and J. W. Gardner, ”Smart City Battery Operated IoT Based Indoor Air Quality Monitoring System,” 2020. [18]J. Hofman, M. E. Nikolaou, T. H. Do, X. Qin, and E. R, ”Mapping Air Quality in IoT Cities: Cloud Calibra- tion and Air Quality Inference of Sensor Data,” 2020. [19]L. El Ghazouani et al., ”The Interaction between Ur- ban Heat Island and Air Quality in Casablanca,” 2019. [20]J. Son and Y.-S. Son, ”A Correlation Analysis of In- door Environmental Quality and Indoor Air Quality using IoT,” 2019. [21]A. Delgado and A. Aguirre, ”Air Quality level Assess- ment through the Grey Clustering Analysis on Lima, Peru,” 2019. [22]I. B. Tijani, A. D. Almannaee, A. A. Alharthi, and A. M. Alremeithi, ”Wireless sensor node for indoor air quality monitoring system,” 2018. [23]P. Asthana and S. Mishra, ”IoT Enabled Real Time Bolt based Indoor Air Quality Monitoring System,” 2018. [24]C. Liang, J. Sheng, Z. Yuxuan, and X. Haichao, ”A novel air quality evaluation method based on AP clus- tering and VAE model,” 2018. [25]Y. S. Chang, K.-M. Lin, Y.-T. Tsai, Y.-R. Zeng, and C.-X. Hung, ”Big data platform for air quality analysis and prediction,” 2018.

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{{author}} (April 2026). {{title}}. International Journal of Engineering and Techniques (IJET), 12(2). https://doi.org/{{doi}}
{{author}}, “{{title}},” International Journal of Engineering and Techniques (IJET), vol. 12, no. 2, April 2026, doi: {{doi}}.
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