Abstract
Since security threats in IoT-enabled smart cities may not appear clear and
present to detection mechanisms, efforts have been made to use artificial
intelligence methods for anomaly detection. Anomaly detection has been
performed using unsupervised learning approaches (Autoencoders, GANs, One
Class SVMs) in turn, with these instances considered security threats. In
addition, an element for patches and traffic redirection in real time is included
in the framework. Results show that the AI detection in general has much
more security resilience, decreasing possible attack vectors. This makes the
integration of various features like AI, blockchain, and IDS for a solid IoT
security a must. Since security threats in IoT-enabled smart cities may not
appear clear and present to detection mechanisms, efforts have been made to
use artificial intelligence methods for anomaly detection. Anomaly detection
has been performed using unsupervised learning approaches (Autoencoders,
GANs, One-Class SVMs) in turn, with these instances considered security
threats. In addition, an element for patches and traffic redirection in real time
is included in the framework. Results show that the AI detection in general has
much more security resilience, decreasing possible attack vectors. This makes
the integration of various features like AI, blockchain, and IDS for a solid IoT
security a must.