On the Application of Uplink/Downlink Decoupled Access in Heterogeneous Mobile Edge Computing
Yao Shi, Emad Alsusa, Mohammed W. Baidas

TL;DR
This paper explores uplink/downlink decoupled access in heterogeneous mobile edge computing, proposing algorithms for joint base station association, subchannel allocation, and power control to reduce latency and improve resource utilization.
Contribution
It introduces a novel joint BS association and resource allocation algorithm using SPA matching for heterogeneous MEC, considering multi-BS association and decoupled access.
Findings
Proposed scheme outperforms benchmarks in latency reduction.
Effective utilization of heterogeneous resources demonstrated.
Joint optimization improves system performance under QoS constraints.
Abstract
Mobile edge computing (MEC) is a key player in low latency 5G networks with the task to resolve the conflict between computationally-intensive mobile applications and resource-limited mobile devices (MDs). As such, there has been intense interest in this topic, especially in multi-user single-server and homogeneous multi-server scenarios. However, the research in the heterogeneous multi-server scenario is limited, where the servers are located at small base-stations (SBSs), macro base-stations (MBSs), or the cloud with different computing and communication capabilities. On the other hand, computational-tasks offloading is limited by the type of MD-BS association with almost all previous works focusing on offloading the MD's computational tasks to the MEC servers/cloudlets at its serving BS. However, in multi-BS association, or downlink/uplink decoupled (DUDe) scenarios, an MD can be…
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Taxonomy
TopicsIoT and Edge/Fog Computing · Age of Information Optimization · Brain Tumor Detection and Classification
