EcoEdgeTwin: Enhanced 6G Network via Mobile Edge Computing and Digital Twin Integration
Synthia Hossain Karobi, Shakil Ahmed, Saifur Rahman Sabuj, Ashfaq, Khokhar

TL;DR
EcoEdgeTwin is a novel framework that combines Mobile Edge Computing and Digital Twin technologies with deep reinforcement learning to optimize 6G network performance, reducing energy and latency while improving user experience.
Contribution
This paper introduces EcoEdgeTwin, the first framework integrating MEC, DT, and deep reinforcement learning for adaptive, energy-efficient 6G network management.
Findings
Significantly reduces energy consumption and latency.
Enhances Quality of Experience (QoE) for users.
Outperforms benchmark models without DT integration.
Abstract
In the 6G era, integrating Mobile Edge Computing (MEC) and Digital Twin (DT) technologies presents a transformative approach to enhance network performance through predictive, adaptive control for energy-efficient, low-latency communication. This paper presents the EcoEdgeTwin model, an innovative framework that harnesses the synergy between MEC and DT technologies to ensure efficient network operation. We optimize the utility function within the EcoEdgeTwin model to balance enhancing users' Quality of Experience (QoE) and minimizing latency and energy consumption at edge servers. This approach ensures efficient and adaptable network operations, utilizing DT to synchronize and integrate real-time data seamlessly. Our framework achieves this by implementing robust mechanisms for task offloading, service caching, and cost-effective service migration. Additionally, it manages energy…
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Taxonomy
TopicsSoftware-Defined Networks and 5G · IoT and Edge/Fog Computing
