Smart City Gnosys

Smart city article details

Title Iot Audio Sensor Networks And Decision Trees For Enhanced Rain Sound Classification
ID_Doc 33639
Authors Machap K.; Narani S.R.
Year 2024
Published International Journal Of Advances In Signal And Image Sciences, 10, 1
DOI http://dx.doi.org/10.29284/ijasis.10.1.2024.35-44
Abstract Accurately classifying rain sounds is essential in the field of climate investigation and environmental monitoring for understanding rainfall patterns, intensity, and how it affects ecosystems and urban infrastructure. This research presents a new method for rain sound classification combines decision trees (DTs) algorithms with networks of Internet of Things (IoT) audio sensors. To record ambient noises, particularly those caused by precipitation, the system makes use of a dispersed network of inexpensive IoT audio sensors placed in different places. A DTs algorithm, trained on a broad dataset including varying rain intensities and background sounds, is then applied by a central processing unit (CPU) to these recordings. When compared to more conventional approaches, experimental findings show the technique significantly improves rain sound classification accuracy, especially when it comes to differentiating between moderate and mild rain sounds and ambient noise. Automated weather alarm systems, urban drainage management, agricultural planning, and real-time rainfall monitoring are some of the potential uses for the proposed system. It helps advance environmental science, meteorology, and smart city projects by using IoT and machine learning to provide more accurate and faster rainfall data, which is essential for infrastructure planning and decision-making. © 2024, XLESCIENCE. All rights reserved.
Author Keywords Acoustic sensing; classification algorithms; data analytics; ecological research; environmental acoustics; IoT deployment; rainfall patterns; sensor fusion


Similar Articles


Id Similarity Authors Title Published
34029 View0.882Alsouda Y.; Pllana S.; Kurti A.Iot-Based Urban Noise Identification Using Machine Learning: Performance Of Svm, Knn, Bagging, And Random ForestACM International Conference Proceeding Series, Part F148162 (2019)
2468 View0.877Ali Y.H.; Rashid R.A.; Hamid S.Z.A.A Machine Learning For Environmental Noise Classification In Smart CitiesIndonesian Journal of Electrical Engineering and Computer Science, 25, 3 (2022)
682 View0.877Russo M.; Puglisi V.F.; Avanzato R.; Beritelli F.A Cnn-Based Audio Sensor For Rainfall Estimation: Implementation On Embedded BoardProceedings of the 11th IEEE International Conference on Intelligent Data Acquisition and Advanced Computing Systems: Technology and Applications, IDAACS 2021, 2 (2021)
21820 View0.871Baucas M.J.; Spachos P.Edge-Based Data Sensing And Processing Platform For Urban Noise ClassificationIEEE Sensors Letters, 8, 5 (2024)
46501 View0.87Alías F.; Alsina-Pagès R.M.Review Of Wireless Acoustic Sensor Networks For Environmental Noise Monitoring In Smart CitiesJournal of Sensors, 2019 (2019)
33514 View0.865Albaji A.O.; Rashid R.B.A.; Abdul Hamid S.Z.Investigation On Machine Learning Approaches For Environmental Noise ClassificationsJournal of Electrical and Computer Engineering, 2023 (2023)
52316 View0.862Bello J.P.; Mydlarz C.; Salamon J.Sound Analysis In Smart CitiesComputational Analysis of Sound Scenes and Events (2017)
8998 View0.855Alkhatib M.I.I.; Talei A.; Chang T.K.; Pauwels V.R.N.; Chow M.F.An Urban Acoustic Rainfall Estimation Technique Using A Cnn Inversion Approach For Potential Smart City ApplicationsSmart Cities, 6, 6 (2023)