CRLGJul 27, 2025

Interpretable Anomaly-Based DDoS Detection in AI-RAN with XAI and LLMs

arXiv:2507.21193v12 citationsh-index: 29
Originality Incremental advance
AI Analysis

This addresses security for 5G/6G network operators by providing interpretable intrusion detection, though it is incremental as it combines existing methods like LSTM, LIME, and SHAP.

The paper tackles DDoS attack detection in AI-RAN by proposing an LSTM-based anomaly detection system with XAI and LLMs, achieving an F1-score > 0.96 on real 5G network data.

Next generation Radio Access Networks (RANs) introduce programmability, intelligence, and near real-time control through intelligent controllers, enabling enhanced security within the RAN and across broader 5G/6G infrastructures. This paper presents a comprehensive survey highlighting opportunities, challenges, and research gaps for Large Language Models (LLMs)-assisted explainable (XAI) intrusion detection (IDS) for secure future RAN environments. Motivated by this, we propose an LLM interpretable anomaly-based detection system for distributed denial-of-service (DDoS) attacks using multivariate time series key performance measures (KPMs), extracted from E2 nodes, within the Near Real-Time RAN Intelligent Controller (Near-RT RIC). An LSTM-based model is trained to identify malicious User Equipment (UE) behavior based on these KPMs. To enhance transparency, we apply post-hoc local explainability methods such as LIME and SHAP to interpret individual predictions. Furthermore, LLMs are employed to convert technical explanations into natural-language insights accessible to non-expert users. Experimental results on real 5G network KPMs demonstrate that our framework achieves high detection accuracy (F1-score > 0.96) while delivering actionable and interpretable outputs.

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