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首页> 外文期刊>Intelligent Transportation Systems, IEEE Transactions on >Distributed Modeling in a MapReduce Framework for Data-Driven Traffic Flow Forecasting
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Distributed Modeling in a MapReduce Framework for Data-Driven Traffic Flow Forecasting

机译:MapReduce框架中的分布式建模,用于数据驱动的交通流量预测

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With the availability of increasingly more new data sources collected for transportation in recent years, the computational effort for traffic flow forecasting in standalone modes has become increasingly demanding for large-scale networks. Distributed modeling strategies can be utilized to reduce the computational effort. In this paper, we present a MapReduce-based approach to processing distributed data to design a MapReduce framework of a traffic forecasting system, including its system architecture and data-processing algorithms. The work presented here can be applied to many traffic forecasting systems with models requiring a learning process (e.g., the neural network approach). We show that the learning process of the forecasting model under our framework can be accelerated from a computational perspective. Meanwhile, model fusion, which is the key problem of distributed modeling, is explicitly treated in this paper to enhance the capability of the forecasting system in data processing and storage.
机译:近年来,随着越来越多的用于运输的新数据源的可用性,独立模式下的交通流量预测的计算工作对大型网络的要求越来越高。可以利用分布式建模策略来减少计算量。在本文中,我们提出了一种基于MapReduce的处理分布式数据的方法,以设计交通预测系统的MapReduce框架,包括其系统架构和数据处理算法。此处介绍的工作可以应用到具有模型的许多交通预测系统,这些模型需要学习过程(例如,神经网络方法)。我们表明,在计算框架下,可以加快预测模型的学习过程。同时,本文明确论述了作为分布式建模关键问题的模型融合问题,以增强预测系统在数据处理和存储中的能力。

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