IOT, AI, AND ML BASED NOISE SOURCE IDENTIFICATION, MONITORING AND CONTROLLING DEVICE WITH ALERT MECHANISM
noise pollution, IoT, machine learning, acoustic classification, environmental monitoring, smart cities, edge computing, automated control
Recently, more and more issues associated with urban noise pollution have been addressed. That is why recent urban noise pollution appears as key problem causing millions worldwide to sleep poorly, develop cardiovascular issues, and live a welfare lower-quality life. Conventional means of monitoring sound are oriented towards inspection of noise and do not have sound analysis intelligence to act on its measure. This article discusses how an artificial intelligence and machine learning IoT based noise source isolation system works which includes continuous monitoring, and the necessary automation mechanism of control. This solution assumes the integration of sensors on one side, while state-of-the art edge computing approach incorporating trained machine learning models works on the other hand. After noise sources have been localized, the systems then go on to hold the noise levels within the regulators limits and send out alerts whenever the regulations have not been adhered to within the required duration. In this context, Acoustic signals are passed through a Convolutional Neural Network in a forward model. This network is able to discern different sources of noise such as human activity, traffic, construction, and equipment, with very close accuracy. Furthermore, data consolidation, predictive analysis, and user alerting are executed through IoT cloud platform delivered through mobile and web dashboards. In addition, we have successfully utilized the led noise infringement system in the environmental noise management system which is based on non-directional loudspeakers for premature noise control across urban, industrial and residential sectors. Noise is discouraged by the system once it notices the existence of a breach of light noise and those commitment is really a good one since 89 percent of all the noise sources present in the System will be classified under 3 seconds on average when alert is to be sent for breach of containment rules and then it will go 34% more times further in automatically reducing the breach by the defaulter. That is all, as usage of noise control solution for the smart city adhering to the requirements of noise Proposed Regulation is concerned.
: https://doi.org/10.56975/ijvra.v4i3.702431
Registration ID: IJVRA_702431 Published ID: IJVRA2603768
"IOT, AI, AND ML BASED NOISE SOURCE IDENTIFICATION, MONITORING AND CONTROLLING DEVICE WITH ALERT MECHANISM", IJVRA - International Journal of Versatile Research and Analysis (www.IJVRA.org), ISSN:2984-8903, Vol.4, Issue 3, page no.923-933, March-2026, Available :https://ijpub.org/ijvra/papers/IJVRA2603768.pdf
Paper Reg. ID: IJVRA_702431
Published Paper Id: IJVRA2603768
Research Area: Other area not in list
Country: Jaysingpur, Maharashtra, India
DOI: https://doi.org/10.56975/ijvra.v4i3.702431
ISSN: 2984-8903 | IMPACT FACTOR: 9.12 Calculated By Google Scholar | ESTD YEAR: 2023
An International UGC CARE JOURNAL PUBLICATION Low Cost (₹599), Scholarly Open Access, Peer-Reviewed, Refereed Journal Impact Factor 9.12 Calculate by Google Scholar and Semantic Scholar | AI-Powered Research Tool, Multidisciplinary, Monthly, Multilanguage, Crossref DOI Member Journal Indexing in All Major Database & Metadata, Citation Generator
Publisher: IJVRA (IJ Publication) Janvi Wave
© 2026 - Authors hold the copyright of this article. This work is licensed under a Creative Commons Attribution 4.0 International License and The Open Definition.
This article is distributed under the terms of the Creative Commons Attribution 4.0 International License (CC BY 4.0). 🛡️ Disclaimer:
The content, data, and findings in this article are based on the authors’ research and have been peer-reviewed for academic purposes only. Readers are advised to verify all information before practical or commercial use. The journal and its editorial board are not liable for any errors, losses, or consequences arising from its use.