학술논문

QLRan: Latency-Quality Tradeoffs and Task Offloading in Multi-node Next Generation RANs
Document Type
Conference
Source
2021 16th Annual Conference on Wireless On-demand Network Systems and Services Conference (WONS) Wireless On-demand Network Systems and Services Conference (WONS), 2021 16th Annual Conference on. :1-8 Mar, 2021
Subject
Communication, Networking and Broadcast Technologies
Computing and Processing
Cloud computing
NP-hard problem
Simulation
Linear programming
Loss measurement
Convex functions
Resource management
NG-RAN
Tasks Offloading
Convex optimization
OpenAirInterface (OAI)
Testbed
Language
Abstract
Next-Generation Radio Access Network (NG-RAN) is an emerging paradigm that provides flexible distribution of cloud computing and radio capabilities at the edge of the wireless Radio Access Points (RAPs). Computation at the edge bridges the gap for roaming end users, enabling access to rich services and applications. In this paper, we propose a multi-edge node task offloading system, i.e., QLRan, a novel optimization solution for latency and quality tradeoff task allocation in NG-RANs. Considering constraints on service latency, quality loss, and edge capacity, the problem of joint task offloading, latency, and Quality Loss of Result (QLR) is formulated in order to minimize the User Equipment (UEs) task offloading utility, which is measured by a weighted sum of reductions in task completion time and QLR cost. The QLRan optimization problem is proved as a Mixed Integer Nonlinear Program (MINLP) problem, which is a NP-hard problem. To efficiently solve the QLRan optimization problem, we utilize Linear Programming (LP)-based approach that can be later solved by using convex optimization techniques. Additionally, a programmable NG-RAN testbed is presented where the Central Unit (CU), Distributed Unit (DU), and UE are virtualized using the OpenAirInterface (OAI) software platform to characterize the performance in terms of data input, memory usage, and average processing time with respect to QLR levels. Simulation results show that our algorithm performs significantly improves the network latency over different conflgurations.