Deep Reinforcement Learning for Channel State Information Prediction in Internet of Vehicles

Xing-fa Liu, Wei Yu, Cheng Qian, David W. Griffith, N. Golmie
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Abstract

In this paper, we address the issue of Channel State Information (CSI) prediction of the Internet of Vehicles (loV) system, which is a highly dynamic network environment. We propose a deep reinforcement learning-based approach to predict CSI with historical data and video footage captured by smart cameras. Specifically, we use a Conventional Neural Network (CNN) to extract unique environmental characteristics, which will be sent to a Recurrent Neural Network (RNN)-based learning model so that the future CSI can be predicted. Our approach also considers the heterogeneous nature of IoV communication environments by adopting transfer learning to reduce the training cost when applying our approach to different IoV scenarios. We assess the efficacy of our proposed approach using our designed IoV simulation platform. The experimental results confirm that our approach can accurately predict CSI by using historically generated data.
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用于车联网通道状态信息预测的深度强化学习
在本文中,我们探讨了车联网(loV)系统的信道状态信息(CSI)预测问题,这是一个高度动态的网络环境。我们提出了一种基于深度强化学习的方法,利用历史数据和智能摄像头捕获的视频片段预测 CSI。具体来说,我们使用传统神经网络(CNN)来提取独特的环境特征,并将其发送给基于循环神经网络(RNN)的学习模型,从而预测未来的 CSI。我们的方法还考虑到了物联网通信环境的异质性,在将我们的方法应用于不同物联网场景时,采用迁移学习来降低训练成本。我们利用设计的物联网仿真平台评估了所提方法的功效。实验结果证实,我们的方法可以利用历史生成的数据准确预测 CSI。
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