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Adaptive Ensemble Learning for Real-Time Anomaly Detection in 5G Networks

Authors

  • Agus Dendi Rachmatsyah Institut Sains dan Bisnis Atma Luhur Author
  • Benny Wijaya Institut Sains dan Bisnis Atma Luhur Author
  • Syafrul Irawadi Institut Sains Dan Bisnis Atmaluhur Author
  • Ari Amir Al-Kodri Institut Sains dan Bisnis Atma Luhur Author
  • lili Indah Sari Institut Sains dan Bisnis Atma Luhur Author

DOI:

https://doi.org/10.69533/ksrbjq98

Keywords:

5G, Anomaly Detection, Data Streaming, Real-Time Processing, Ensemble Algorithms, Network Security, Machine Learning

Abstract

5G networks enable ultra-high speed, low latency, and massive connectivity for critical applications such as IoT, autonomous vehicles, and digital healthcare. However, the complexity and high traffic volume in 5G architectures increase the risk of anomalies that threaten service quality and security. This study addresses the problem by proposing a real-time anomaly detection framework based on streaming data and ensemble learning algorithms. Network traffic is processed through a stream processing platform, while ensemble models such as Random Forest, Gradient Boosting, and Voting Classifier are applied to improve detection accuracy. Experimental results show that the proposed system achieves high accuracy and low latency in detecting anomalies, including Distributed Denial of Service (DDoS) attacks and technical failures. This research contributes a scalable and effective solution to enhance 5G network security and reliability, advancing the field of cybersecurity and network analytics.

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References

et al. Andrews, J. G., “What will 6G be?,” IEEE J. Sel. Areas Commun., vol. 6, no. 39, pp. 1654–1675, 2021.

et al Zhang, Y., “Real-time anomaly detection in 5G using ML and Kafka,” IEEE Access, vol. 9, pp. 116400–116412, 2021.

et al Sun, L., “LSTM-based streaming anomaly detection for 5G networks. Computer Networks,” vol. 209, p. 108945, 2022.

et al Kumar, A., “Ensemble-based anomaly detection for streaming 5G traffic,” Futur. Gener. Comput. Syst., vol. 140, pp. 152–166, 2023.

et al Li, X., “Lightweight federated learning for anomaly detection in 5G IoT,” IEEE Internet Things Journal, vol. 12, no. 10, pp. 10512–10524, 2023.

et al Xu, R., “Federated anomaly detection in IoT-enabled 5G networks,” IEEE Trans. Netw. Serv. Manag., vol. 3, no. 18, pp. 2650–2663, 2021.

et al Chennoufi, R., “A federated IDS for 5G-enabled IoT,” Ad Hoc Networks, vol. 134, p. 102936, 2022.

et al Ringberg, H., “Anomaly detection in network traffic: A survey,” ACM Comput. Surv., vol. 1, no. 53, pp. 1–37, 2020.

et al Hussain, F., “AI-enabled anomaly detection in 5G: Trends and challenges,” IEEE Commun. Surv. Tutorials, vol. 2, no. 25, pp. 1548–1582, 2023.

et al Reis, M. J. C. S., “Edge-FLGuard: A Federated Learning + Edge AI framework for real-time anomaly detection in 5G IoT,” 2025.

et al Bocu, R., “Real-Time Intrusion Detection and Prevention System for 5G,” 2022.

et al Zehra, S., “Machine-Learning-Based Anomaly Detection in NFV,” 2023.

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Published

2025-12-01

How to Cite

Adaptive Ensemble Learning for Real-Time Anomaly Detection in 5G Networks. (2025). Jurnal Ilmiah Informatika Dan Komputer, 2(2), 81-85. https://doi.org/10.69533/ksrbjq98