ML-Aided Dynamic BSR Periodicity Adjustment for Enhanced UL Scheduling in Cellular Systems
Contemporary research has revealed a limitation in the Uplink (UL) Buffer Status Report (BSR) scheduling procedure – its reliance on outdated information. In addition, a significant limitation in current BSR implementations lies in their inflexibility. The 3rd Generation Partnership Proje...
| الحاوية / القاعدة: | IEEE Open Journal of the Communications Society |
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| المؤلفون الرئيسيون: | , , |
| التنسيق: | مقال |
| اللغة: | الإنجليزية |
| منشور في: |
IEEE
2025-01-01
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| الموضوعات: | |
| الوصول للمادة أونلاين: | https://ieeexplore.ieee.org/document/10965763/ |
| _version_ | 1849665770687037440 |
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| author | Nadezhda Chukhno Salwa Saafi Sergey Andreev |
| author_facet | Nadezhda Chukhno Salwa Saafi Sergey Andreev |
| author_sort | Nadezhda Chukhno |
| collection | DOAJ |
| container_title | IEEE Open Journal of the Communications Society |
| description | Contemporary research has revealed a limitation in the Uplink (UL) Buffer Status Report (BSR) scheduling procedure – its reliance on outdated information. In addition, a significant limitation in current BSR implementations lies in their inflexibility. The 3rd Generation Partnership Project (3GPP) specifications constrain BSR periodicities to certain quantized values based on Quality of Service (QoS) requirements for various applications. For instance, applications demanding low latency may require very small BSR periodicities, resulting in substantial overhead due to frequent BSR reports. This may result in the wastage of network resources in case of a low BSR periodicity setting. Alternatively, a high BSR periodicity setting may lead packets to wait more at the user buffer and thus result in higher packet latencies. To address these limitations, we propose a framework that predicts time intervals between packet arrivals and subsequently adjusts the BSR periodicity according to the predicted traffic arrivals. The simulation results demonstrate that the proposed Machine Learning (ML)-aided BSR reporting provides flexibility in BSR periodicity adapted to the intensity of traffic arrival and converges to optimal periodicity depending on the mean traffic arrival rate. |
| format | Article |
| id | doaj-art-0dccee34e63e4cf39724ef56c923bf2d |
| institution | Directory of Open Access Journals |
| issn | 2644-125X |
| language | English |
| publishDate | 2025-01-01 |
| publisher | IEEE |
| record_format | Article |
| spelling | doaj-art-0dccee34e63e4cf39724ef56c923bf2d2025-08-20T02:20:23ZengIEEEIEEE Open Journal of the Communications Society2644-125X2025-01-0163513352710.1109/OJCOMS.2025.356100210965763ML-Aided Dynamic BSR Periodicity Adjustment for Enhanced UL Scheduling in Cellular SystemsNadezhda Chukhno0https://orcid.org/0000-0002-1466-5367Salwa Saafi1https://orcid.org/0000-0002-2786-9377Sergey Andreev2https://orcid.org/0000-0001-8223-3665Tampere Wireless Research Center, Tampere University, Tampere, FinlandTampere Wireless Research Center, Tampere University, Tampere, FinlandTampere Wireless Research Center, Tampere University, Tampere, FinlandContemporary research has revealed a limitation in the Uplink (UL) Buffer Status Report (BSR) scheduling procedure – its reliance on outdated information. In addition, a significant limitation in current BSR implementations lies in their inflexibility. The 3rd Generation Partnership Project (3GPP) specifications constrain BSR periodicities to certain quantized values based on Quality of Service (QoS) requirements for various applications. For instance, applications demanding low latency may require very small BSR periodicities, resulting in substantial overhead due to frequent BSR reports. This may result in the wastage of network resources in case of a low BSR periodicity setting. Alternatively, a high BSR periodicity setting may lead packets to wait more at the user buffer and thus result in higher packet latencies. To address these limitations, we propose a framework that predicts time intervals between packet arrivals and subsequently adjusts the BSR periodicity according to the predicted traffic arrivals. The simulation results demonstrate that the proposed Machine Learning (ML)-aided BSR reporting provides flexibility in BSR periodicity adapted to the intensity of traffic arrival and converges to optimal periodicity depending on the mean traffic arrival rate.https://ieeexplore.ieee.org/document/10965763/Buffer status reportuplink schedulingcellular networksmachine learninguplink traffic predictionwireless communications |
| spellingShingle | Nadezhda Chukhno Salwa Saafi Sergey Andreev ML-Aided Dynamic BSR Periodicity Adjustment for Enhanced UL Scheduling in Cellular Systems Buffer status report uplink scheduling cellular networks machine learning uplink traffic prediction wireless communications |
| title | ML-Aided Dynamic BSR Periodicity Adjustment for Enhanced UL Scheduling in Cellular Systems |
| title_full | ML-Aided Dynamic BSR Periodicity Adjustment for Enhanced UL Scheduling in Cellular Systems |
| title_fullStr | ML-Aided Dynamic BSR Periodicity Adjustment for Enhanced UL Scheduling in Cellular Systems |
| title_full_unstemmed | ML-Aided Dynamic BSR Periodicity Adjustment for Enhanced UL Scheduling in Cellular Systems |
| title_short | ML-Aided Dynamic BSR Periodicity Adjustment for Enhanced UL Scheduling in Cellular Systems |
| title_sort | ml aided dynamic bsr periodicity adjustment for enhanced ul scheduling in cellular systems |
| topic | Buffer status report uplink scheduling cellular networks machine learning uplink traffic prediction wireless communications |
| url | https://ieeexplore.ieee.org/document/10965763/ |
| work_keys_str_mv | AT nadezhdachukhno mlaideddynamicbsrperiodicityadjustmentforenhancedulschedulingincellularsystems AT salwasaafi mlaideddynamicbsrperiodicityadjustmentforenhancedulschedulingincellularsystems AT sergeyandreev mlaideddynamicbsrperiodicityadjustmentforenhancedulschedulingincellularsystems |
