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Short-term hourly traffic forecasts using Hong Kong Annual Traffic Census

机译:使用香港年度交通普查的短期每小时交通预测

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摘要

The need for acquiring the current-year traffic data is a problem for transport planners since such data may not be available for on-going transport studies. A method is proposed in this paper to predict hourly traffic flows up to and into the near future, using historical data collected from the Hong Kong Annual Traffic Census (ATC). Two parametric and two non-parametric models have been employed and evaluated in this study. The results show that the non-parametric models (Non-Parametric Regression (NPR) and Gaussian Maximum Likelihood (GML)) were more promising for predicting hourly traffic flows at the selected ATC station. Further analysis encompassing 87 ATC stations revealed that the NPR is likely to react to unexpected changes more effectively than the GML method, while the GML model performs better under steady traffic flows. Taking into consideration the dynamic nature of the common traffic patterns in Hong Kong and the advantages/disadvantages of the various models, the NPR model is recommended for predicting the hourly traffic flows in that region.
机译:对于运输计划人员来说,获取本年度交通数据的需求是一个问题,因为此类数据可能无法用于正在进行的交通研究。本文提出了一种方法,该方法使用从香港年度交通普查(ATC)收集的历史数据来预测直至和将来的每小时流量。在这项研究中,采用了两个参数模型和两个非参数模型。结果表明,非参数模型(非参数回归(NPR)和高斯最大似然(GML))对于预测所选ATC站的每小时交通量更有希望。包括87个ATC站在内的进一步分析表明,与GML方法相比,NPR可能更有效地应对意外变化,而GML模型在稳定的交通流量下表现更好。考虑到香港常见交通模式的动态性质以及各种模型的优缺点,建议使用NPR模型来预测该地区的每小时交通流量。

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