Published February 1, 2021 | Version v1
Conference paper Open

Neural Network Architectures for the detection of SYN flood attacks in IoT systems

  • 1. Internet Science Group Institute of Communication and Computer Systems Athens, Greece
  • 2. National Technical University of Athens Athens, Greece
  • 3. IITIS Polish Academy of Science Gliwice, Poland

Description

We investigate light-weight techniques for detecting common SYN attacks on devices that are attached to the Internet, such as IoT devices and gateways, Fog servers or edge devices which may have low processing capacity. In particular, we examine the Random Neural Network with Deep Learning, trained with "normal" non-attack traffic, and a Long-Short-Term-Memory (LSTM) neural network. Using the same traffic traces for attack traffic, our experiments show that the Random Neural Network provides substantially better attack detection and significantly lower false alarm rates as compared to the LSTM network.

Files

Neural Network Architectures for the detection of SYN flood attacks in IoT.pdf