Smart City Gnosys

Smart city article details

Title Analysis And Evaluation Of Clustering Techniques Applied To Wireless Acoustics Sensor Network Data
ID_Doc 9062
Authors Pita A.; Rodriguez F.J.; Navarro J.M.
Year 2022
Published Applied Sciences (Switzerland), 12, 17
DOI http://dx.doi.org/10.3390/app12178550
Abstract Exposure to environmental noise is related to negative health effects. To prevent it, the city councils develop noise maps and action plans to identify, quantify, and decrease noise pollution. Smart cities are deploying wireless acoustic sensor networks that continuously gather the sound pressure level from many locations using acoustics nodes. These nodes provide very relevant updated information, both temporally and spatially, over the acoustic zones of the city. In this paper, the performance of several data clustering techniques is evaluated for discovering and analyzing different behavior patterns of the sound pressure level. A comparison of clustering techniques is carried out using noise data from two large cities, considering isolated and federated data. Experiments support that Hierarchical Agglomeration Clustering and K-means are the algorithms more appropriate to fit acoustics sound pressure level data. © 2022 by the authors.
Author Keywords clustering algorithms; data clustering; environmental noise assessment; knowledge discovery; unsupervised learning; urban acoustic environment; wireless sensor network data


Similar Articles


Id Similarity Authors Title Published
46501 View0.881Alías F.; Alsina-Pagès R.M.Review Of Wireless Acoustic Sensor Networks For Environmental Noise Monitoring In Smart CitiesJournal of Sensors, 2019 (2019)
2468 View0.865Ali 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)
52316 View0.859Bello J.P.; Mydlarz C.; Salamon J.Sound Analysis In Smart CitiesComputational Analysis of Sound Scenes and Events (2017)