Universitat Oberta de Catalunya. Internet Interdisciplinary Institute (IN3)
Universitat Rovira i Virgili
2019-04-15T11:37:27Z
2019-04-15T11:37:27Z
2018-09-21
Smart cities work with large volumes of data from sensor networks and other sources. To prevent data from being compromised by attacks or errors, smart city IT administrators need to apply attack detection techniques to evaluate possible incidents as quickly as possible. Machine learning has proven to be effective in many fields and, in the context of wireless sensor networks (WSNs), it has proven adequate to detect attacks. However, a smart city poses a much more complex scenario than a WSN, and it has to be evaluated whether these techniques are equally valid and effective. In this work, we evaluate two machine learning algorithms (support vector machines (SVM) and isolation forests) to detect anomalies in a laboratory that reproduces a real smart city use case with heterogeneous devices, algorithms, protocols, and network configurations. The experience has allowed us to show that, although these techniques are of great value for smart cities, additional considerations must be taken into account to effectively detect attacks. Thus, through this empiric analysis, we point out broader challenges and difficulties of using machine learning in this context, both for the technical complexity of the systems, and for the technical difficulty of configuring and implementing them in such environments.
Article
Versió publicada
Anglès
testbed; wireless sensor networks; isolation forest; support vector machines; smart cities; outlier detection; information security; anomaly detection; xarxa de sensors sense fils; banc de proves; bosc d'aïllament; màquines de vectors suport; ciutats intel·ligents; detecció de outliers; seguretat de la informació; detecció d'anomalia; red de sensores inalámbricos; banco de pruebas; bosque de aislamiento; máquinas de vectores de soporte; ciudades inteligentes; detección de outliers; seguridad de la información; detección de anomalías; Sensor networks; Xarxes de sensors; Redes de sensores
Sensors
Sensors, 2018, 18(10)
https://doi.org/10.3390/s18103198
Garcia-Font, V., Garrigues, C., & Rifà-Pous, H. (2018). Difficulties and challenges of anomaly detection in smart cities: a laboratory analysis. Sensors, 18(10). doi:10.3390/s18103198
1424-8220
10.3390/s18103198
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