流量计数预测的自动机器学习管道

Amirsaman Mahdavian, A. Shojaei, M. Salem, H. Laman, Jian Yuan, A. Oloufa
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引用次数: 1

摘要

研究表明,交通量预测是交通管理的重要工具。然而,很少有研究检验了通用自动化框架在汽车交通量预测中的应用。在这些有限的文献中,使用广泛数据集和包容性预测因子的研究是不充分的;这样的工作没有纳入一套全面的线性和非线性算法,利用一个强大的交叉验证方法。本文提出的模型管道自动识别最合适的特征选择方法和建模方法,以降低平均绝对百分比误差。我们利用超参数优化来生成一个通用的自动化框架,不同于依赖于单个案例研究的模型优化技术。生成的模型可以独立地定制到任何相应的项目。自动化大部分流程可以最大限度地减少交通量预测所需的工作和专业知识。为了测试我们模型的适用性,我们使用了2001年至2017年佛罗里达州的历史交通数据。结果证实,在本具体案例研究中,非线性模型在预测乘用车月交通量方面优于线性模型。通过采用本研究中开发的框架,交通规划者可以确定美国道路上导致产能过剩问题的关键环节。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automated Machine Learning Pipeline for Traffic Count Prediction
Research indicates that the projection of traffic volumes is a valuable tool for traffic management. However, few studies have examined the application of a universal automated framework for car traffic volume prediction. Within this limited literature, studies using broad data sets and inclusive predictors have been inadequate; such works have not incorporated a comprehensive set of linear and nonlinear algorithms utilizing a robust cross-validation approach. The proposed model pipeline introduced in this study automatically identifies the most appropriate feature-selection method and modeling approach to reduce the mean absolute percentage error. We utilized hyperparameter optimization to generate a universal automated framework, distinct from model optimization techniques that rely on a single case study. The resulting model can be independently customized to any respective project. Automating much of this process minimizes the work and expertise required for traffic count forecasting. To test the applicability of our models, we used Florida historical traffic data from between 2001 and 2017. The results confirmed that nonlinear models outperformed linear models in predicting passenger vehicles’ monthly traffic volumes in this specific case study. By employing the framework developed in this study, transportation planners could identify the critical links on US roads that incur overcapacity issues.
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