Abstract

Multi-objective resource allocation is studied for edge-caching enabled fog-radio access network. Notably, joint maximization of the energy-efficiency (EE) and spectrum-efficiency (SE) and interference management are investigated for distributing contents from the cache-enabled fog access points (F-APs) and cloud base station (CBS) to the user devices (UDs). In our envisioned system, the UDs are grouped into multiple non-overlapping device-clusters based on their locations. A rate-splitting with common message decoding based transmission strategy is applied to enable UDs of each device-cluster to receive data from a suitably selected F-AP and CBS over the same radio resource blocks. To maximize system EE and SE jointly, a multi-objective optimization problem (MOOP) is formulated and it is solved in three stages. At first, by employing the <inline-formula xmlns:mml="http://www.w3.org/1998/Math/MathML" xmlns:xlink="http://www.w3.org/1999/xlink"> <tex-math notation="LaTeX">$\epsilon $ </tex-math></inline-formula> -constraint method, the MOOP is converted to an EE-SE trade-off optimization problem. Then, by leveraging iterative function evaluation based power control and generalized 3D-resource matching, the EE-SE trade-off optimization problem is solved and a novel resource allocation algorithm is proposed to obtain near-optimal Pareto-front for the proposed MOOP. To reduce the complexity of obtaining near-optimal Pareto-front, a sub-optimal resource allocation algorithm is proposed as well. Finally, a low-complexity algorithm is devised to select a suitable operating EE-SE pair from the obtained Pareto-front. The conducted simulations demonstrate that the proposed resource allocation schemes achieve substantial improvement of system EE and SE over the benchmark schemes.

Highlights

  • Leveraging centralized cloud processing based resource allocation, distributed signal processing, and popular content caching at the network edge, fog-radio access network (F-RAN) presents a revolutionary paradigm to satisfy the beyond 5G (B5G) performance requirements [1]

  • We focus on designing novel resource allocation scheme while aiming at joint maximization of system EE and SE and interference management for the content distribution phase of EC enabled F-RAN

  • Iterative Rate Splitting and Resource Matching (I-RSRM)/IRA obtains an inferior matching among the device-clusters, fog access points (F-APs), and resource blocks (RRBs), and such an inferior matching leads to the noticeable SE/EE loss compared to the proposed algorithms, especially for large RRBs

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Summary

INTRODUCTION

Leveraging centralized cloud processing based resource allocation, distributed signal processing, and popular content caching at the network edge, fog-radio access network (F-RAN) presents a revolutionary paradigm to satisfy the beyond 5G (B5G) performance requirements [1]. F-RAN enabled eMBB data delivery calls for a novel solution that maximizes system EE and SE jointly, and provides efficient interference management with improved spectrum resource utilization. This is because on one hand, joint maximization of EE and SE requires to maximize two conflicting objectives, and on the other hand, interference management in a network with multiple device-clusters is a well-known NP-hard problem To address these challenges, we focus on designing novel resource allocation scheme while aiming at joint maximization of system EE and SE and interference management for the content distribution phase of EC enabled F-RAN

Related Works
Contributions and Paper Organization
SYSTEM MODEL
RS-CMD Based Transmission Strategy
Problem Formulation
CBS and F-AP power allocation
18: Output
Algorithms for Maximizing EE and SE
1: Initialize
Low-Complexity Algorithm Design
Operating EE-SE pair selection Algorithm
13: Output
Implementation and Computational Complexity Analysis Implementation
SIMULATION RESULTS
Effect of EE-SE Trade-off Control Parameter
EE and SE Comparison Among the Proposed and Baseline Schemes
CONCLUSION
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