Digital Twin for Advanced Network Planning: Tackling Interference
Operational data in next-generation networks offers a valuable resource for Mobile Network Operators to autonomously manage their systems and predict potential network issues. Machine Learning and Digital Twin can be applied to gain important insights for intelligent decision-making. This paper prop...
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Zusammenfassung: | Operational data in next-generation networks offers a valuable resource for
Mobile Network Operators to autonomously manage their systems and predict
potential network issues. Machine Learning and Digital Twin can be applied to
gain important insights for intelligent decision-making. This paper proposes a
framework for Radio Frequency planning and failure detection using Digital Twin
reducing the level of manual intervention. In this study, we propose a
methodology for analyzing Radio Frequency issues as external interference
employing clustering techniques in operational networks, and later
incorporating this in the planning process. Simulation results demonstrate that
the architecture proposed can improve planning operations through a data-aided
anomaly detection strategy. |
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DOI: | 10.48550/arxiv.2411.11034 |