Litcius/Paper detail

Features-Aware DDoS Detection in Heterogeneous Smart Environments based on Fog and Cloud Computing

Wanderson L. Costa, Ariel L. C. Portela, Rafael L. Gomes

2021International Journal of Communication Networks and Information Security (IJCNIS)23 citationsDOIOpen Access PDF

Abstract

Nowadays, urban environments are deploying smart environments (SEs) to evolve infrastructures, resources, and services. SEs are composed of a huge amount of heterogeneous devices, i.e., the SEs have both personal devices (smartphones, notebooks, tablets, etc) and Internet of Things (IoT) devices (sensors, actuators, and others). One of the existing problems of the SEs is the detection of Distributed Denial of Service (DDoS) attacks, due to the vulnerabilities of IoT devices. In this way, it is necessary to deploy solutions that can detect DDoS in SEs, dealing with issues like scalability, adaptability, and heterogeneity (distinct protocols, hardware capacity, and running applications). Within this context, this article presents an Intelligent System for DDoS detection in SEs, applying Machine Learning (ML), Fog, and Cloud computing approaches. Additionally, the article presents a study about the most important traffic features for detecting DDoS in SEs, as well as a traffic segmentation approach to improve the accuracy of the system. The experiments performed, using real network traffic, suggest that the proposed system reaches 99% of accuracy, while reduces the volume of data exchanged and the detection time.

Topics & Concepts

Denial-of-service attackComputer scienceCloud computingScalabilityAdaptabilityContext (archaeology)Fog computingTrinooInternet of ThingsDistributed computingApplication layer DDoS attackComputer networkComputer securityThe InternetReal-time computingWorld Wide WebDatabaseOperating systemBiologyPaleontologyEcologyNetwork Security and Intrusion DetectionAnomaly Detection Techniques and ApplicationsAdvanced Data and IoT Technologies