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Ahead of Print article ยท Journal article

Security-aware Data-driven Intelligent Transportation Systems

From

COMSATS University Islamabad1

Department of Applied Mathematics and Computer Science, Technical University of Denmark2

Cyber Security, Department of Applied Mathematics and Computer Science, Technical University of Denmark3

King Saud University4

Abdul Wali Khan University Mardan5

Federation University Australia6

Intelligent transportation systems have been envisioned to bring more intelligence and cooperative sensing to meet the imminent demands of overall improved autonomous transportation. However, dynamic era of modern applications and fixed architecture of legacy Internet needs flexible, innovative, adaptive, and programmable software defined intelligent transportation systems (SD-ITS).

The centralized control intelligence of SD-ITS can be a potential primary target of the prevalent cyber threats and attacks that can simply throw the entire network into chaos. The authors propose a DL-driven multi-vector scalable attack detection framework leveraging graphical processing unit (GPU) empowered Bidirectional Long Short-Term Memory (BLSTM) to efficiently tackle exponentially growing diverse sophisticated attacks that primarily target the control unit of the SD-ITS.

The proposed technique has been rigorously evaluated with current state-of-the-art publicly available Flow-based dataset (i.e., CICIDS2017) using standard performance metrics. Further, the proposed mechanism is compared with contemporary benchmarks (i.e., DL algorithms). Extensive experimental results exhibit out-performance of the proposed technique in term of detection accuracy with a trivial trade-off computational complexity.

Finally, the study also employed 10-fold cross validation to explicitly show unbiased results.

Language: English
Publisher: IEEE
Year: 2021
Pages: 15859-15866
ISSN: 15581748 , 23799153 and 1530437x
Types: Ahead of Print article and Journal article
DOI: 10.1109/JSEN.2020.3012046
ORCIDs: 0000-0001-6570-9529 , 0000-0001-8370-9290 , 0000-0002-7381-0683 , 0000-0002-4246-2524 , 0000-0002-5298-1328 and 0000-0003-2165-4575

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