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Machine learning based cell association for mMTC 5G communication networks

机译:基于机器学习的MMTC 5G通信网络的单元关联

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With the advent of 5G communication networks, the number of devices on the core 5G network significantly increases.A5Gnetwork is a cloud native, massively connected internet of things (IoT) platform with a huge number of devices hosted on the network now known as massive machine type communication (mMTC). As ultra-low latency is pivotal in developing 5G communication, a proper cell association scheme is now required to meet the load and traffic needs of the new network, opposed to older cell association schemes which were based only on the reference signal received power (RSRP). This paper proposes an unsupervised machine learning algorithm, namely hidden Markov model (HMM) learning on the network's telemetry data, which is used to learn network parameters and select the best eNodeB for cell association. The proposed model uses an HMM learning followed by decoding for selecting the optimal cell for association.
机译:随着5G通信网络的出现,核心5G网络上的设备数量显着增加.A5GNetwork是一种云本机,大量连接的东西(物联网)平台,具有在网络上托管的大量设备,现在称为大量机器类型通信(MMTC)。由于在开发5G通信中的超低延迟,现在需要一个适当的小区关联方案来满足新网络的负载和业务需求,而不是仅基于参考信号接收功率的旧单元关联方案(RSRP )。本文提出了一种无监督的机器学习算法,即网络遥测数据上的隐马尔可夫模型(HMM)学习,用于学习网络参数并为小区关联选择最佳eNodeB。所提出的模型使用HMM学习,然后解码选择最佳小区。

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