Two-Phase Cell Switching in 6G vHetNets: Sleeping-Cell Load Estimation and Renewable-Aware Switching Toward NES
Maryam Salamatmoghadasi, Metin Ozturk, Halim Yanikomeroglu

TL;DR
This paper introduces a two-phase framework for sustainable 6G vHetNets, focusing on accurate sleep cell load estimation and renewable-aware cell switching to enhance energy efficiency and network sustainability.
Contribution
It presents novel load estimation methods and a renewable energy-aware switching strategy, integrating real data and practical deployment scenarios for improved network sustainability.
Findings
LSTM-based load prediction achieves below 1% MAPE.
Renewable-aware switching yields up to 23% energy savings.
Framework bridges theoretical models and practical 6G network operations.
Abstract
This paper proposes a two phase framework to improve the sustainability in vertical heterogeneous networks that integrate various types of base stations~(BSs), including terrestrial macro BSs~(MBSs), small BSs~(SBSs), and a high altitude platform station super MBS (HAPS SMBS). In Phase I, we address the critical and often overlooked challenge of estimating the traffic load of sleeping SBSs, a prerequisite for practical cell switching, by introducing three methods with varying data dependencies: (i) a distance based estimator (no historical data), (ii) a multi level clustering (MLC) estimator (limited historical data), and (iii) a long short term memory~(LSTM) based temporal predictor (full historical data). In Phase II, we incorporate the most accurate estimation results from Phase I into a renewable energy aware cell switching strategy, explicitly modeling solar powered SBSs in three…
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Taxonomy
TopicsAdvanced MIMO Systems Optimization · Advanced Data and IoT Technologies · Telecommunications and Broadcasting Technologies
