RAN Resource Usage Prediction for a 5G Slice Broker

Craig L. Gutterman, E. Grinshpun, Sameerkumar Sharma, G. Zussman
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引用次数: 42

Abstract

Network slicing will allow 5G network operators to offer a diverse set of services over a shared physical infrastructure. We focus on supporting the operation of the Radio Access Network (RAN) slice broker, which maps slice requirements into allocation of Physical Resource Blocks (PRBs). We first develop a new metric, REVA, based on the number of PRBs available to a single Very Active bearer. REVA is independent of channel conditions and allows easy derivation of an individual wireless link's throughput. In order for the slice broker to efficiently utilize the RAN, there is a need for reliable and short term prediction of resource usage by a slice. To support such prediction, we construct an LTE testbed and develop custom additions to the scheduler. Using data collected from the testbed, we compute REVA and develop a realistic time series prediction model for REVA. Specifically, we present the X-LSTM prediction model, based upon Long Short-Term Memory (LSTM) neural networks. Evaluated with data collected in the testbed, X-LSTM outperforms Autoregressive Integrated Moving Average Model (ARIMA) and LSTM neural networks by up to 31%. X-LSTM also achieves over 91% accuracy in predicting REVA. By using X-LSTM to predict future usage, a slice broker is more adept to provision a slice and reduce over-provisioning and SLA violation costs by more than 10% in comparison to LSTM and ARIMA.
5G切片代理的RAN资源使用预测
网络切片将允许5G网络运营商在共享的物理基础设施上提供多种服务。我们的重点是支持无线接入网(RAN)片代理的操作,它将片需求映射到物理资源块(PRBs)的分配中。我们首先开发了一个新的指标,REVA,基于单个非常活跃的持票人可用的prb数量。REVA独立于信道条件,允许轻松推导单个无线链路的吞吐量。为了使片代理能够有效地利用RAN,需要对片的资源使用情况进行可靠的短期预测。为了支持这样的预测,我们构建了一个LTE测试平台,并为调度器开发了定制的附加功能。利用从试验台收集的数据,我们计算了REVA,并建立了一个真实的REVA时间序列预测模型。具体来说,我们提出了基于长短期记忆(LSTM)神经网络的X-LSTM预测模型。通过测试平台收集的数据进行评估,X-LSTM比自回归综合移动平均模型(ARIMA)和LSTM神经网络的性能高出31%。X-LSTM预测REVA的准确率也超过91%。通过使用X-LSTM来预测未来的使用情况,与LSTM和ARIMA相比,片代理可以更熟练地配置片,并将过度配置和SLA违反成本降低10%以上。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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