Intelligent anomaly detection system for IoT
Fecha
2021-05-22Autor
Bolatti, Diego
Karanik, Marcelo
Todt, Carolina
Scappini, Reinaldo
Gramajo, Sergio
Metadatos
Mostrar el registro completo del ítemResumen
The growing use of the Internet of Things (IoT) in different areas implies a proportional growth in threats and attacks on end devices. To solve this problem, the IoT systems must be equipped with an anomaly detection system (ADS). This work introduces the design of a hybrid ADS based on the Software-Defined Network (SDN) architecture, which combines the rule-based and Machine Learning-based detection technique. Whereas the rule-based approach is used to detect known attacks with the help of rules defined by security experts. And the Machine Learning approach is used to detect unknown attacks with the help of Artificial Intelligence techniques