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Machine Learning for RF Slicing Using CSI Prediction in Software Defined Large-Scale MIMO Wireless Networks

机译:使用CSI预测在软件中定义大规模MIMO无线网络的CSI预测机器学习

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摘要

In this paper, we investigate the machine learning approaches (sparse Bayesian linear regression (SBLR) and support vector machine (SVM)) for channel state information (CSI) prediction and dynamic radio frequency (RF) slicing for software defined virtual wireless networks in large-scale multi-input multi-output (MIMO) wireless networks. Specifically, a subset of the antennas of virtual wireless networks transmits pilot symbols for estimating the CSI and use the estimated CSI dataset to train and estimate the remaining channels and future CSI for virtual networks using machine learning algorithms. This helps not only to predict the CSI with least overhead and fulfills the service demands of users but also to reduce the power consumption and computation overhead in the network. Predicted CSI is leveraged for RF slicing for virtual wireless networks. Simulation results show that the proposed SBLR for predicting CSI results in lower BER and higher data rate for the wireless users. Furthermore, SBLR outperforms the other approaches when we have sparse CSI information and we need to generalize the prediction process.
机译:在本文中,我们调查了机器学习方法(稀疏贝叶斯线性回归(SBLR)和支持向量机(SVM)),用于信道状态信息(CSI)预测和动态射频(RF)SLICING for Software定义的虚拟无线网络-Scale多输入多输出(MIMO)无线网络。具体地,虚拟无线网络的天线的子集发送用于估计CSI的导频符号,并使用估计的CSI数据集训练和估计使用机器学习算法的虚拟网络的剩余信道和未来CSI。这不仅有助于预测CSI最小开销并满足用户的服务需求,而且还可以降低网络中的功耗和计算开销。预测的CSI是用于虚拟无线网络的RF切片。仿真结果表明,建议的SBLR用于预测CSI的较低BER和无线用户的更高数据率。此外,当我们有稀疏的CSI信息时,SBLR胜过其他方法,并且我们需要概括预测过程。

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