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Short-term traffic flow prediction in smart multimedia system for Internet of Vehicles based on deep belief network

机译:基于深度信念网络的车联网智能多媒体系统中的短期交通流量预测

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摘要

In the multimedia system for Internet of Vehicles (IoVs), accurate traffic flow information processing and feedback can give drivers guidance. In traditional information processing for IoVs, few researches deal with traffic flow information processing by deep learning. Specially, most of the existing prediction technologies adopt shallow neural network, and their models for chaotic time series are prone to be restricted by multiple parameters. Over the last few years, the dawning of the big data era creates opportunities for the intelligent traffic control and management. In this paper, we take Restricted Boltzmann Machine (RBM) as the method for traffic flow prediction, which is a typical algorithm based on deep learning architecture. Considering traffic big data aggregation in IoVs, multimedia technologies provide enough real sample data for model training. RBM constructs the long-term model of polymorphic for chaotic time series, using phase space reconstruction to recognize the data. To the best of our knowledge, it is the first time apply RBM model to short-term traffic flow prediction, which can improve the performance of multimedia system in IoVs. Moreover, experimental results show that the proposed method has superior performance than traditional shallow neural network prediction methods. (C) 2018 Elsevier B.V. All rights reserved.
机译:在用于车联网(IoV)的多媒体系统中,准确的交通流信息处理和反馈可以为驾驶员提供指导。在传统的IoV信息处理中,很少有研究通过深度学习来处理交通流信息。特别是,大多数现有的预测技术都采用浅层神经网络,并且它们的混沌时间序列模型很容易受到多个参数的限制。在过去的几年中,大数据时代的到来为智能交通控制和管理创造了机会。本文采用受限玻尔兹曼机(RBM)作为交通流量预测的方法,这是一种基于深度学习架构的典型算法。考虑到IoV中的流量大数据聚合,多媒体技术为模型训练提供了足够的真实样本数据。 RBM使用相空间重构来识别数据,从而构建了混沌时间序列的多态长期模型。据我们所知,这是第一次将RBM模型应用于短期交通流量预测,可以提高IoV中多媒体系统的性能。实验结果表明,该方法具有优于传统浅层神经网络预测方法的性能。 (C)2018 Elsevier B.V.保留所有权利。

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