ML-based cell on/off strategy for 5G networks trained on real European operator data, using class ratio tuning to enforce QoS policies on throughput and outage while achieving energy savings.
Processing ANN traffic predictions for RAN energy efficiency,
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Policy-Guided ML for Energy Savings: Cell On/Off Switching under Operator QoS Constraints in Real 5G Networks
ML-based cell on/off strategy for 5G networks trained on real European operator data, using class ratio tuning to enforce QoS policies on throughput and outage while achieving energy savings.