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Survey of neural network-based models for short-term traffic state prediction

机译:基于神经网络的短期交通状态预测模型调查

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Traffic state prediction is a key component in intelligent transport systems (ITS) and has attracted much attention over the last few decades. Advances in computational power and availability of a large amount of data have paved the way to employ advanced neural network (NN) models for ITS, including deep architectures. There have been various NN-based approaches proposed for short-term traffic state prediction that are surveyed in this article, where the existing NN models are classified and their application to this area is reviewed. An in-depth discussion is provided to demonstrate how different types of NNs have been used for different aspects of short-term traffic state prediction. Finally, possible further research directions are suggested for additional applications of NN models, especially using deep architectures, to address the dynamic nature in complex transportation networks. This article is categorized under:
机译:交通状态预测是智能传输系统(其)中的关键组件,在过去的几十年中引起了很多关注。 计算能力和大量数据的可用性的进步已经为其采用了高级神经网络(NN)模型,包括深度架构,铺平了方法。 已经有各种基于NN的方法,用于在本文中调查的短期交通状态预测,其中现有的NN模型被分类,并审查它们在该区域的应用程序。 提供深入讨论以演示如何用于短期交通状态预测的不同方面的不同类型的NNS。 最后,建议可能进一步的研究方向用于NN模型,特别是使用深层架构,以解决复杂运输网络中的动态性质。 本文分类为:

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