Data analytics for smart parking applications

dc.contributor.author
Piovesan, N.
dc.contributor.author
Turi, L.
dc.contributor.author
Toigo, E.
dc.contributor.author
Martinez Huerta, Borja
dc.contributor.author
Rossi, M.
dc.date
2019-04-04T16:56:54Z
dc.date
2019-04-04T16:56:54Z
dc.date
2016-09-23
dc.identifier.citation
Piovesan, N., Turi, L., Toigo, E., Martinez, B., & Rossi, M. (2016). Data analytics for smart parking applications. Sensors (Switzerland), 16(10) doi:10.3390/s16101575
dc.identifier.citation
1424-8220
dc.identifier.citation
2-s2.0-84988697534
dc.identifier.citation
10.3390/s16101575
dc.identifier.uri
http://hdl.handle.net/10609/92938
dc.description.abstract
We consider real-life smart parking systems where parking lot occupancy data are collected from field sensor devices and sent to backend servers for further processing and usage for applications. Our objective is to make these data useful to end users, such as parking managers, and, ultimately, to citizens. To this end, we concoct and validate an automated classification algorithm having two objectives: (1) outlier detection: to detect sensors with anomalous behavioral patterns, i.e., outliers; and (2) clustering: to group the parking sensors exhibiting similar patterns into distinct clusters. We first analyze the statistics of real parking data, obtaining suitable simulation models for parking traces. We then consider a simple classification algorithm based on the empirical complementary distribution function of occupancy times and show its limitations. Hence, we design a more sophisticated algorithm exploiting unsupervised learning techniques (self-organizing maps). These are tuned following a supervised approach using our trace generator and are compared against other clustering schemes, namely expectation maximization, k-means clustering and DBSCAN, considering six months of data from a real sensor deployment. Our approach is found to be superior in terms of classification accuracy, while also being capable of identifying all of the outliers in the dataset. © 2016 by the authors; licensee MDPI, Basel, Switzerland.
dc.format
application/pdf
dc.language.iso
eng
dc.publisher
Sensors (Switzerland)
dc.relation
https://www.mdpi.com/1424-8220/16/10/1575/pdf
dc.rights
(c) Author/s & (c) Journal
dc.title
Data analytics for smart parking applications
dc.type
info:eu-repo/semantics/article


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