An Explainable Deep Learning Framework for Resilient Intrusion Detection in IoT-Enabled Transportation Networks
The security of safety-critical IoT systems, such as the Internet of Vehicles (IoV), has a great interest, focusing on using Intrusion Detection Systems (IDS) to recognise cyber-attacks in IoT networks. Deep learning methods are commonly used for the anomaly detection engines of many IDSs because of...
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Veröffentlicht in: | IEEE transactions on intelligent transportation systems 2023-01, Vol.24 (1), p.1000-1014 |
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creator | Oseni, Ayodeji Moustafa, Nour Creech, Gideon Sohrabi, Nasrin Strelzoff, Andrew Tari, Zahir Linkov, Igor |
description | The security of safety-critical IoT systems, such as the Internet of Vehicles (IoV), has a great interest, focusing on using Intrusion Detection Systems (IDS) to recognise cyber-attacks in IoT networks. Deep learning methods are commonly used for the anomaly detection engines of many IDSs because of their ability to learn from heterogeneous data. However, while this type of machine learning model produces high false-positive rates and the reasons behind its predictions are not easily understood, even by experts. The ability to understand or comprehend the reasoning behind the decision of an IDS to block a particular packet helps cybersecurity experts validate the system's effectiveness and develop more cyber-resilient systems. This paper proposes an explainable deep learning-based intrusion detection framework that helps improve the transparency and resiliency of DL-based IDS in IoT networks. The framework employs a SHapley Additive exPlanations (SHAP) mechanism to interpret decisions made by deep learning-based IDS to experts who rely on the decisions to ensure IoT networks' security and design more cyber-resilient systems. The proposed framework was validated using the ToN_IoT dataset and compared with other compelling techniques. The experimental results have revealed the high performance of the proposed framework with a 99.15% accuracy and a 98.83% F1 score, illustrating its capability to protect IoV networks against sophisticated cyber-attacks. |
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Deep learning methods are commonly used for the anomaly detection engines of many IDSs because of their ability to learn from heterogeneous data. However, while this type of machine learning model produces high false-positive rates and the reasons behind its predictions are not easily understood, even by experts. The ability to understand or comprehend the reasoning behind the decision of an IDS to block a particular packet helps cybersecurity experts validate the system's effectiveness and develop more cyber-resilient systems. This paper proposes an explainable deep learning-based intrusion detection framework that helps improve the transparency and resiliency of DL-based IDS in IoT networks. The framework employs a SHapley Additive exPlanations (SHAP) mechanism to interpret decisions made by deep learning-based IDS to experts who rely on the decisions to ensure IoT networks' security and design more cyber-resilient systems. The proposed framework was validated using the ToN_IoT dataset and compared with other compelling techniques. The experimental results have revealed the high performance of the proposed framework with a 99.15% accuracy and a 98.83% F1 score, illustrating its capability to protect IoV networks against sophisticated cyber-attacks.</description><identifier>ISSN: 1524-9050</identifier><identifier>EISSN: 1558-0016</identifier><identifier>DOI: 10.1109/TITS.2022.3188671</identifier><identifier>CODEN: ITISFG</identifier><language>eng</language><publisher>New York: IEEE</publisher><subject>Anomalies ; Computer architecture ; Cybersecurity ; Decisions ; Deep learning ; Explainable AI ; Internet of Things ; Internet of Vehicles ; Internet of Vehicles (IoV) ; Intrusion detection ; Intrusion detection systems ; IoT ; Machine learning ; network intrusion detection ; Protocols ; Resilience ; Safety ; Safety critical ; Security ; System effectiveness ; Transportation networks</subject><ispartof>IEEE transactions on intelligent transportation systems, 2023-01, Vol.24 (1), p.1000-1014</ispartof><rights>Copyright The Institute of Electrical and Electronics Engineers, Inc. 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subjects | Anomalies Computer architecture Cybersecurity Decisions Deep learning Explainable AI Internet of Things Internet of Vehicles Internet of Vehicles (IoV) Intrusion detection Intrusion detection systems IoT Machine learning network intrusion detection Protocols Resilience Safety Safety critical Security System effectiveness Transportation networks |
title | An Explainable Deep Learning Framework for Resilient Intrusion Detection in IoT-Enabled Transportation Networks |
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