Short-term prediction of traffic dynamics with real-time recurrent learning algorithms

Jiuh-Biing Sheu, L. Lan, Yi-San Huang
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引用次数: 17

Abstract

Short-term prediction of dynamic traffic states remains critical in the field of advanced traffic management systems and related areas. In this article, a novel real-time recurrent learning (RTRL) algorithm is proposed to address the above issue. We dabble in comparing pair predictability of linear method versus RTRL algorithms and simple non-linear method versus RTRL algorithms individually using a first-order autoregressive time-series AR(1) and a deterministic function. A field study tested with flow, speed and occupancy series data collected directly from dual-loop detectors on a freeway is conducted. The numerical results reveal that the performance of RTRL algorithms in predicting short-term traffic dynamics is satisfactorily accepted. Furthermore, it is found that the dynamics of short-term traffic states characterised in different time intervals, collected in diverse time lags and times of day may have significant effects on the prediction accuracy of the proposed algorithms.
基于实时循环学习算法的交通动态短期预测
动态交通状态的短期预测是先进交通管理系统及相关领域的关键。本文提出了一种新的实时循环学习(RTRL)算法来解决上述问题。我们使用一阶自回归时间序列AR(1)和确定性函数分别比较线性方法与RTRL算法和简单非线性方法与RTRL算法的对可预测性。本文对高速公路上的流量、速度和占用率系列数据进行了实地研究。数值结果表明,RTRL算法在预测短期交通动态方面的性能是令人满意的。此外,研究发现,在不同的时间间隔中收集的短期交通状态的动态特征,在不同的时间滞后和一天的时间可能对所提出的算法的预测精度有显著影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Transportmetrica
Transportmetrica 工程技术-运输科技
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