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首页> 外文期刊>IEEE Transactions on Intelligent Transportation Systems >Short-Term Traffic Flow Forecasting: An Experimental Comparison of Time-Series Analysis and Supervised Learning
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Short-Term Traffic Flow Forecasting: An Experimental Comparison of Time-Series Analysis and Supervised Learning

机译:短期交通流量预测:时间序列分析和监督学习的实验比较

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摘要

The literature on short-term traffic flow forecasting has undergone great development recently. Many works, describing a wide variety of different approaches, which very often share similar features and ideas, have been published. However, publications presenting new prediction algorithms usually employ different settings, data sets, and performance measurements, making it difficult to infer a clear picture of the advantages and limitations of each model. The aim of this paper is twofold. First, we review existing approaches to short-term traffic flow forecasting methods under the common view of probabilistic graphical models, presenting an extensive experimental comparison, which proposes a common baseline for their performance analysis and provides the infrastructure to operate on a publicly available data set. Second, we present two new support vector regression models, which are specifically devised to benefit from typical traffic flow seasonality and are shown to represent an interesting compromise between prediction accuracy and computational efficiency. The SARIMA model coupled with a Kalman filter is the most accurate model; however, the proposed seasonal support vector regressor turns out to be highly competitive when performing forecasts during the most congested periods.
机译:最近,关于短期交通流量预测的文献有了很大的发展。已经发表了许多描述各种不同方法的作品,这些作品通常具有相似的特征和思想。但是,提出新的预测算法的出版物通常采用不同的设置,数据集和性能度量,因此很难一目了然地了解每种模型的优点和局限性。本文的目的是双重的。首先,我们在概率图形模型的通用视图下回顾了短期交通流量预测方法的现有方法,并进行了广泛的实验比较,为它们的性能分析提出了一个通用基准,并提供了基于公开数据集的基础设施。其次,我们介绍了两个新的支持向量回归模型,这些模型是专门设计用于受益于典型交通流量季节性变化的,并且被证明代表了预测准确性和计算效率之间的有趣折衷。最精确的模型是SARIMA模型和Kalman滤波器。但是,在最拥挤的时期进行预测时,建议的季节性支持向量回归器具有很高的竞争力。

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