Development of IoT-Based Alcohol Detector Using Blynkand Node MCU

Volume: 10 | Issue: 01 | Year 2024 | Subscription
International Journal of Chemical Separation Technology
Received Date: 05/03/2024
Acceptance Date: 06/09/2024
Published On: 2024-08-01
First Page: 8
Last Page: 14

Journal Menu

By: Kazi Kutubuddin and Sayyad Liyakat

Professor and Head, Department of Electronics and Telecommunication Engineering, Brahmdevdada Mane
Institute of Research Technology,
Scholar, Solapur Department of Electronics and Telecommunication Engineering, Brahmdevdada Mane
Institute of Technology, Solapur (MS), India.

Abstract

Despite its long history in human society, alcohol consumption has a substantial negative impact on
health and accidents. Worldwide, drunk driving is a leading factor in traffic fatalities and accidents.
People still drive while intoxicated, endangering both themselves and other drivers, in spite of strong
legislation and awareness programmers. Using Blynk and Node MCU, an Internet of Things-based
alcohol detector had been created in response to this problem with the goal of preventing drunk driving
and enhancing road safety. A device called alcohol detector serves to measure the amount of alcohol
present in a person’s breath, urine, or blood. A gas sensor built into the device calculates how much
alcohol is in the individual’s breath. The sensor has been coupled to the NodeMCU, and that’s
connected to the Blynk app. The device’s gas sensor calculates how much alcohol the user exhales and
sends the data to the Node MCU. Through a mobile application, users can operate and keep an eye on
linked devices with the Blynk IoT platform. The portability of this Internet of Things-based alcohol
detector is one of its biggest benefits. The development of an affordable solution without compromising
the precision and quality of the device has been made possible by the use of open-source technologies
such as Blynk and Node MCU.

Loading

Citation:

How to cite this article: Kazi Kutubuddin and Sayyad Liyakat, Development of IoT-Based Alcohol Detector Using Blynkand Node MCU. International Journal of Chemical Separation Technology. 2024; 10(01): 8-14p.

How to cite this URL: Kazi Kutubuddin and Sayyad Liyakat, Development of IoT-Based Alcohol Detector Using Blynkand Node MCU. International Journal of Chemical Separation Technology. 2024; 10(01): 8-14p. Available from:https://journalspub.com/publication/development-of-iot-based-alcohol-detector-using-blynkand-node-mcu/

Refrences:

1. Sultanabanu Sayyad Liyakat, (2024). IoT-based Alcohol Detector using Blynk, Journal of Electronics Design and Technology, 1(1), 10-15.
2. Mishra Sunil B., et al. (2024). Review of the Literature and Methodological Structure for IoT and PLM Integration in the Manufacturing Sector, Journal of Advancement in Machines, 9(1), 1-5
3. Prashant K Magadum (2024). Machine Learning for Predicting Wind Turbine Output Power in Wind Energy Conversion Systems, Grenze International Journal of Engineering and Technology, Jan Issue, Vol 10, Issue 1, pp. 2074-2080. Grenze ID: 01.GIJET.10.1.4_1
4. Mishra Sunil B., et al. (2024). AI-Driven IoT (AI IoT) in Thermodynamic Engineering, Journal of Modern Thermodynamics in Mechanical System, 6(1), 1-8.
5. Sayyad Liyakat (2024). Impact of Solar Penetrations in Conventional Power Systems and Generation of Harmonic and Power Quality Issues, Advance Research in Power Electronics and Devices, 1(1), 10-16.
6. Kazi, K. (2024). Modelling and Simulation of Electric Vehicle for Performance Analysis: BEV and HEV Electrical Vehicle Implementation Using Simulink for E-Mobility Ecosystems. In L. D., N. Nagpal, N. Kassarwani, V. Varthanan G., & P. Siano (Eds.), E-Mobility in Electrical Energy Systems for Sustainability (pp. 295-320). IGI Global. https://doi.org/10.4018/979-8 3693-2611-4.ch014 Available at: https://www.igi-global.com/gateway/chapter/full-text pdf/341172
7. Kazi, K. (2024). AI-Driven IoT (AIIoT) in Healthcare Monitoring. In T. Nguyen & N. Vo (Eds.), Using Traditional Design Methods to Enhance AI-Driven Decision Making (pp. 77 101). IGI Global. https://doi.org/10.4018/979-8-3693-0639-0.ch003 available at: https://www.igi-global.com/chapter/ai-driven-iot-aiiot-in-healthcare-monitoring/336693
8. K K S Liyakat (2022). Implementation of e-mail security with three layers of authentication, Journal of Operating Systems Development and Trends, 9(2), 29-35
9. Kazi Sultanabanu Sayyad Liyakat (2023). IoT Based Arduino-Powered Weather Monitoring System, Journal of Telecommunication Study, 8(3), 25-31.
10. Kazi Sultanabanu Sayyad Liyakat (2023). Arduino Based Weather Monitoring System, Journal of Switching Hub, 8(3), 24-29.
11. V D Gund, et al. (2023). PIR Sensor-Based Arduino Home Security System, Journal of Instrumentation and Innovation Sciences, 8(3), 33-37