A Multiclass Machine Learning Framework for Detecting Routing Attacks in RPL-Based IoT Networks Using a Novel Simulation-Driven Dataset
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Abstract
The use of resource-constrained Low-Power and Lossy Networks (LLNs), where the IPv6 Routing Protocol for LLNs (RPL) is the de facto routing standard, has increased due to the Internet of Things’ (IoT) explosive growth. Because of the dynamic nature of IoT deployments and the lack of in-protocol security, RPL is still quite susceptible to routing-layer attacks like Blackhole, Lowered Rank, version number manipulation, and Flooding despite its lightweight architecture. Lightweight, data-driven intrusion detection methods are necessary since traditional cryptographic countermeasures are frequently unfeasible for LLNs. However, the lack of RPL-specific control-plane semantics in current cybersecurity datasets…
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- FWCI
- 100.41
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- 99%
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2Topics & keywords
Topics
Keywords
- Overfitting
- Random forest
- Decision tree
- Pipeline (software)
- Cloud computing
- Anomaly detection
- Intrusion detection system
- Flooding (psychology)
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