Near Real-Time Data-Driven Adaptive RAN Slicing of VR Traffic in ORAN

Open Radio Access Network (ORAN) provides a flexible framework for network slicing in 4G/5G systems, with xApps enabling efficient near-real-time resource management. The purpose of slicing is to allocate resources in a way that meets the heterogeneous demands posed by diverse services, while minimi...

Full description

Saved in:
Bibliographic Details
Main Authors: Andreas Casparsen, Beatriz Soret, Jimmy Jessen Nielsen, Petar Popovski
Format: Article
Language:English
Published: IEEE 2025-01-01
Series:IEEE Open Journal of the Communications Society
Subjects:
Online Access:https://ieeexplore.ieee.org/document/11007140/
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1849435405196197888
author Andreas Casparsen
Beatriz Soret
Jimmy Jessen Nielsen
Petar Popovski
author_facet Andreas Casparsen
Beatriz Soret
Jimmy Jessen Nielsen
Petar Popovski
author_sort Andreas Casparsen
collection DOAJ
description Open Radio Access Network (ORAN) provides a flexible framework for network slicing in 4G/5G systems, with xApps enabling efficient near-real-time resource management. The purpose of slicing is to allocate resources in a way that meets the heterogeneous demands posed by diverse services, while minimizing the amount of unused resources. We demonstrate experimentally how xApps can support slicing through near real-time control of Radio Access Network (RAN) resources and at the same time avoid resource waste due to overprovisioning. We develop an open-loop implementation for Radio Resource Management (RRM) to allocate resources efficiently across slices to serve multiple users of Virtual Reality (VR) traffic with latency guarantees. Prior research concluded that VR traffic is highly variable in its demand. We evaluate the methods’ ability to meet latency targets and minimize overprovisioning under variable traffic using specialized xApps with open-loop prediction. Our findings reveal distinct trade-offs between the methods: our proposed solution, Latency Estimation Correction (LEC), offers superior latency control but at the cost of resource efficiency; it emphasizes estimating end-to-end latency and guides the allocation accordingly. Conversely, a simpler Packet Size Prediction (PSP) approach demonstrates improved resource efficiency, though it sacrifices control over latency. The method leverages traffic forecasting to predict the required allocation. This comparison underscores the balance between latency management and resource utilization in the context of network slicing and ORAN. Aggregating users reduces resource overprovisioning by 30%, though it introduces a slight increase in end-to-end latency offset. Across target latencies ranging from 10 to 16.67 ms, our evaluations show a stable average offset of 0.6 ms.
format Article
id doaj-art-70b5ece97e354de2aeb97a4481be5e6b
institution Kabale University
issn 2644-125X
language English
publishDate 2025-01-01
publisher IEEE
record_format Article
series IEEE Open Journal of the Communications Society
spelling doaj-art-70b5ece97e354de2aeb97a4481be5e6b2025-08-20T03:26:17ZengIEEEIEEE Open Journal of the Communications Society2644-125X2025-01-0164624463710.1109/OJCOMS.2025.357149811007140Near Real-Time Data-Driven Adaptive RAN Slicing of VR Traffic in ORANAndreas Casparsen0https://orcid.org/0009-0004-5849-0265Beatriz Soret1https://orcid.org/0000-0003-2708-645XJimmy Jessen Nielsen2https://orcid.org/0000-0001-6664-7198Petar Popovski3https://orcid.org/0000-0001-6195-4797Department of Electronic Systems, Aalborg University, Aalborg, DenmarkDepartment of Electronic Systems, Aalborg University, Aalborg, DenmarkDepartment of Electronic Systems, Aalborg University, Aalborg, DenmarkDepartment of Electronic Systems, Aalborg University, Aalborg, DenmarkOpen Radio Access Network (ORAN) provides a flexible framework for network slicing in 4G/5G systems, with xApps enabling efficient near-real-time resource management. The purpose of slicing is to allocate resources in a way that meets the heterogeneous demands posed by diverse services, while minimizing the amount of unused resources. We demonstrate experimentally how xApps can support slicing through near real-time control of Radio Access Network (RAN) resources and at the same time avoid resource waste due to overprovisioning. We develop an open-loop implementation for Radio Resource Management (RRM) to allocate resources efficiently across slices to serve multiple users of Virtual Reality (VR) traffic with latency guarantees. Prior research concluded that VR traffic is highly variable in its demand. We evaluate the methods’ ability to meet latency targets and minimize overprovisioning under variable traffic using specialized xApps with open-loop prediction. Our findings reveal distinct trade-offs between the methods: our proposed solution, Latency Estimation Correction (LEC), offers superior latency control but at the cost of resource efficiency; it emphasizes estimating end-to-end latency and guides the allocation accordingly. Conversely, a simpler Packet Size Prediction (PSP) approach demonstrates improved resource efficiency, though it sacrifices control over latency. The method leverages traffic forecasting to predict the required allocation. This comparison underscores the balance between latency management and resource utilization in the context of network slicing and ORAN. Aggregating users reduces resource overprovisioning by 30%, though it introduces a slight increase in end-to-end latency offset. Across target latencies ranging from 10 to 16.67 ms, our evaluations show a stable average offset of 0.6 ms.https://ieeexplore.ieee.org/document/11007140/VRORANnetwork slicingxApp
spellingShingle Andreas Casparsen
Beatriz Soret
Jimmy Jessen Nielsen
Petar Popovski
Near Real-Time Data-Driven Adaptive RAN Slicing of VR Traffic in ORAN
IEEE Open Journal of the Communications Society
VR
ORAN
network slicing
xApp
title Near Real-Time Data-Driven Adaptive RAN Slicing of VR Traffic in ORAN
title_full Near Real-Time Data-Driven Adaptive RAN Slicing of VR Traffic in ORAN
title_fullStr Near Real-Time Data-Driven Adaptive RAN Slicing of VR Traffic in ORAN
title_full_unstemmed Near Real-Time Data-Driven Adaptive RAN Slicing of VR Traffic in ORAN
title_short Near Real-Time Data-Driven Adaptive RAN Slicing of VR Traffic in ORAN
title_sort near real time data driven adaptive ran slicing of vr traffic in oran
topic VR
ORAN
network slicing
xApp
url https://ieeexplore.ieee.org/document/11007140/
work_keys_str_mv AT andreascasparsen nearrealtimedatadrivenadaptiveranslicingofvrtrafficinoran
AT beatrizsoret nearrealtimedatadrivenadaptiveranslicingofvrtrafficinoran
AT jimmyjessennielsen nearrealtimedatadrivenadaptiveranslicingofvrtrafficinoran
AT petarpopovski nearrealtimedatadrivenadaptiveranslicingofvrtrafficinoran