AI-Assisted RLF Avoidance for Smart EN-DC Activation
المؤلف | Asad Zaidi, Syed Muhammad |
المؤلف | Manalastas, Marvin |
المؤلف | Abu-Dayya, Adnan |
المؤلف | Imran, Ali |
تاريخ الإتاحة | 2024-10-20T10:43:20Z |
تاريخ النشر | 2020 |
اسم المنشور | Proceedings - IEEE Global Communications Conference, GLOBECOM |
المصدر | Scopus |
الرقم المعياري الدولي للكتاب | 23340983 |
الملخص | In the first phase of 5G network deployment, User Equipment (UE) will camp traditionally on LTE network. Later on, if the UE requests a 5G service, it will be made to camp simultaneously on LTE and 5G. This dual-camping is enabled through a 3GPP-standardized approach known as E-UTRAN New-Radio Dual-Connectivity (EN-DC). Unlike single-networkcamping, where poor RF conditions of only one network affect user Quality-of-Experience (QoE), in EN-DC, poor RF condition in either LTE or 5G network can be detrimental to user QoE. Sub-optimal parameter configuration to activate EN-DC can hamper retainability KPI as UE may observe increased radio link failure (RLF). While the need to maximize the EN-DC activation is obvious for 5G network maximum utility, RLF avoidance is equally important to maintain the QoE requirements. We address this problem by first using Tomek Link to counter data imbalance problem and then building an AI model to predict RLF from real network low level measurements. We then propose and evaluate an RLF risk-aware EN-DC activation scheme that draws on insights from the developed RLF prediction model. Simulation using a 3GPP-compliant 5G simulator show that compared to no-conditioning on EN-DC activation, in the evaluated cell cluster, the proposed scheme can help reduce the potential RLF instances by 99%. This RLF reduction happens at the cost of 50% reduction in EN-DC activation. This is first study to present a framework and insights for operators to optimally conFigure the EN-DC activation parameters to achieve desired trade-off between maximizing 5G sites utility and QoE. |
راعي المشروع | EN-DC mode addresses strict QoE requirements of the UE by enabling multi-connectivity to 4G and 5G cells. However, multi-connectivity can be beneficial only if the RF condition of participating 4G and 5G cells are above a certain threshold. Currently, there does not exist EN-DC mode selection scheme in literature that takes into account the risk of RLFs. This paper proposes a smart EN-DC triggering scheme by which RLF due to poor RF conditions can be minimized. The scheme works by selecting the best B1 thresholds based on insights from a Deep learning based AI model to predict RLF. The core RLF prediction model is developed, trained and validated using real networks measurements of RSRP, SINR and underlying 3GPP based RLF related parameters. The value of these low level parameters are used to identify potential RLF against RSRP, SINR values. We use Tomek Links approach to enhance the classification accuracy. Simulation results based on a state of the art 3GPP compliant network simulator show that for the presented network deployment, compared to no smart conditioning on EN-DC i.e. without using proposed scheme, RLF can be reduced from 2403 cases to just 14 potential RLF cases when using 5G SINR and RSRP threshold of 0dB and -110dBm respectively as per proposed scheme. ACKNOWLEDGMENT This work is supported by the National Science Foundation under Grant Numbers 1718956 and 1730650 and Qatar National Research Fund (QNRF) under Grant No. NPRP12-S 0311-190302. The statements made herein are solely the responsibility of the authors. For more details about these projects please visit: http://www.ai4networks.com. REFERENCES |
اللغة | en |
الناشر | Institute of Electrical and Electronics Engineers Inc. |
الموضوع | 5G Artificial Intelligence EN-DC New Radio Radio Link Failure |
النوع | Conference |
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