交通速度预测:建模方法的比较

Yu Cao, Zhou Huang, Xingchen Zhang, Gang Liu, R. Y. Hou
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引用次数: 0

摘要

在过去的二十年里,智能交通系统的建设已经成为一个热门而富有挑战性的研究课题。作为该系统的关键角色,准确的交通速度预测至关重要。虽然已经提出了许多强大的预测方法,但它们都没有考虑到模型在实际情况下的应用,即在具有不同特征的各种类型道路上的应用。因此,我们在不同类型的道路上应用一些具有代表性和最先进的预测方法,帮助人们选择合适的预测方法来构建智能交通系统。首先,我们以广州市214条道路61天的交通数据为数据集,根据道路的特点选择了四条典型道路。然后,我们使用特征工程来提高数据集的质量。之后,我们在选定的道路上应用自回归综合移动平均(ARIMA)、指数平滑(Exponential Smoothing)、短期和长期记忆(LSTM)神经网络和Informer进行比较。模型在不同类型道路上的表现差异显著:低均值和低方差道路的平均绝对误差(MAE)在2左右,而高均值和高方差道路的平均绝对误差(MAE)在5左右。值得注意的是,在基准测试中,Holt-Winters模型在短周期预测中表现最好,而Informer模型在长周期预测中表现最好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Traffic Speed Forecasting: Comparison of Modeling Approaches
Over the past two decades, building an intelligent transportation system has become a popular and challenging research topic. As a key role in such a system, accurate traffic speed forecasting is critical. Although many powerful prediction methods have been proposed, they have not considered the application of models in real situations, that is, on various types of roads with different characteristics. So, we apply some representative and state-of-the-art methods on different types of roads to help people select the appropriate prediction method to construct an intelligent transportation system. First, we use the traffic data of 214 roads in Guangzhou in 61 days as the data set, and select four typical roads according to their characteristics of the roads. Then we use feature engineering to enhance the quality of the data set. After that, we apply Autoregressive Integrated Moving Average (ARIMA), Exponential Smoothing, short-term and long-term memory (LSTM) neural networks, and Informer on selected roads to make comparisons. The performance of models varies significantly in different types of roads: The Mean Absolute Error (MAE) for low mean and low variance roads is around 2, but the MAE for high mean and high variance roads is about 5. Notably, the Holt-Winters model shows the best performance in short-period prediction, and the Informer model offers the best performance in long-period prediction in the benchmarking.
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