CRLGDec 10, 2022

Deep learning approach for interruption attacks detection in LEO satellite networks

arXiv:2301.03998v17 citationsh-index: 7
Originality Synthesis-oriented
AI Analysis

This work addresses security vulnerabilities in LEO satellite networks, which is an incremental improvement using existing deep learning methods on new simulation data.

The paper tackles the problem of detecting interruption attacks like DoS and DDoS in LEO satellite networks by applying deep learning algorithms such as MLP, CNN, RNN, GRU, and LSTM, achieving detection rates over 99.33% in full surveillance scenarios and up to 96.12% for binary traffic and 94.35% for multi-class traffic in more realistic settings.

The developments of satellite communication in network systems require strong and effective security plans. Attacks such as denial of service (DoS) can be detected through the use of machine learning techniques, especially under normal operational conditions. This work aims to provide an interruption detection strategy for Low Earth Orbit (\textsf{LEO}) satellite networks using deep learning algorithms. Both the training, and the testing of the proposed models are carried out with our own communication datasets, created by utilizing a satellite traffic (benign and malicious) that was generated using satellite networks simulation platforms, Omnet++ and Inet. We test different deep learning algorithms including Multi Layer Perceptron (MLP), Convolutional Neural Network (CNN), Recurrent Neural Network (RNN), Gated Recurrent Units (GRU), and Long Short-term Memory (LSTM). Followed by a full analysis and investigation of detection rate in both binary classification, and multi-classes classification that includes different interruption categories such as Distributed DoS (DDoS), Network Jamming, and meteorological disturbances. Simulation results for both classification types surpassed 99.33% in terms of detection rate in scenarios of full network surveillance. However, in more realistic scenarios, the best-recorded performance was 96.12% for the detection of binary traffic and 94.35% for the detection of multi-class traffic with a false positive rate of 3.72%, using a hybrid model that combines MLP and GRU. This Deep Learning approach efficiency calls for the necessity of using machine learning methods to improve security and to give more awareness to search for solutions that facilitate data collection in LEO satellite networks.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes