DSTL: A Dual-Step Transfer Learning-Based Prediction Model for Next-Generation Intelligent Cellular Networks

Waqar A. Aziz;Iacovos I. Ioannou;Marios Lestas;Vasos Vassiliou
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Abstract

Traffic modeling and prediction are indispensable to future extensive data-driven automated intelligent cellular networks. It contributes to proactive and autonomic network control operations within cellular networks. Current methodologies typically rely on established prediction models designed for univariate and multivariate time series forecasting. However, these approaches often demand a substantial volume of training data and extensive computational resources for prediction model training. In this study, we introduce a dual-step transfer learning (DSTL)-based prediction model specifically designed for the prediction of multivariate spatio-temporal cellular traffic. This technique involves the categorization of gNodeBs (gNBs) into distinct clusters based on their traffic pattern correlations. Instead of training the prediction model individually on each gNB, a base model is trained on the aggregated dataset of all the gNBs within a base cluster using a combination of recurrent neural network (RNN) and bidirectional long-short term memory (RNN-BLSTM) network. In the first-step transfer learning (TL), the base model is provided to the gNBs within the base cluster and to the other clusters, where it undergoes the process of fine-tuning the intra-cluster aggregated dataset. Once the model is trained on the aggregated dataset within each cluster, it is provided to the gNBs within the respective cluster in the second-step TL. The model received by each gNB through the proposed DSTL technique either necessitates minimal fine-tuning or, in some cases, requires no further adjustment. We conduct extensive experiments on a real-world Telecom Italia cellular traffic dataset. The results demonstrate that the proposed DSTL-based prediction model achieves a mean absolute percentage error of 2.97%, 9.85%, and 9.73% in predicting spatio-temporal Internet, calling, and messaging traffic, respectively, while utilizing less computational resources and requiring less training time than traditional model training and TL techniques.
基于双步迁移学习的下一代智能蜂窝网络预测模型
流量建模和预测对于未来广泛的数据驱动自动智能蜂窝网络来说是不可或缺的。它有助于蜂窝网络内的主动和自主网络控制操作。当前的方法通常依赖于专为单变量和多变量时间序列预测而设计的成熟预测模型。然而,这些方法往往需要大量的训练数据和广泛的计算资源来训练预测模型。在本研究中,我们引入了一种基于双步迁移学习(DSTL)的预测模型,专门用于预测多变量时空蜂窝流量。该技术包括根据流量模式相关性将 gNodeB(gNB)分为不同的群组。该技术不对每个 gNB 单独训练预测模型,而是使用循环神经网络(RNN)和双向长短期记忆(RNN-BLSTM)网络组合,对基础集群内所有 gNB 的汇总数据集训练基础模型。在第一步迁移学习(TL)中,基础模型被提供给基础集群内的 gNB 和其他集群,并在那里对集群内的聚合数据集进行微调。一旦模型在每个集群内的聚合数据集上训练完成,就会在第二步 TL 中提供给相应集群内的 gNB。每个 gNB 通过建议的 DSTL 技术接收到的模型只需进行最小程度的微调,或者在某些情况下无需进一步调整。我们在实际的意大利电信蜂窝通信数据集上进行了广泛的实验。结果表明,与传统的模型训练和 TL 技术相比,所提出的基于 DSTL 的预测模型在预测时空互联网流量、通话流量和信息流量方面的平均绝对百分比误差分别为 2.97%、9.85% 和 9.73%,同时利用的计算资源更少,所需的训练时间更短。
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