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Stochastic Approach for Short-Term Freeway Traffic Prediction During Peak Periods

机译:高峰期短期高速公路交通量预测的随机方法

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摘要

Using a stochastic approach, this paper explores and models the basic stochastic characteristics of freeway traffic behavior under a wide range of traffic conditions during peak periods and then applies the models to short-term traffic speed prediction. The speed transition probabilities are estimated from real-world 30-s speed data over a six-year period at three different locations along the 38-mi corridor of Interstate 4 (I-4) in Orlando, FL. The cumulative negative/positive transition probabilities and expected values are derived from the transition probabilities and fitted using logistic and exponential models, respectively. The expected values associated with the most likely transition of speed are then derived from the fitted models and used for predicting speed. Each predicted speed is also associated with a probability value, indicating the chance of observing the occurrence of such transition. The prediction performance was compared for three methods using the root mean square errors (RMSEs). The weighted average method was very close to the higher probability method in most cases. For the two probabilistic methods, the performance was slightly better for the morning peak periods than the evening peak period or all data combined. While the prediction performance of the probabilistic models was comparable with those of other methods found in the literature, the probabilistic approach based on the higher probability provides estimates of the associated probability with each prediction. This provides a measure of confidence in the predicted values before such information is disseminated to the public by traffic agencies.
机译:本文采用随机方法,探索并建模了高峰时段在各种交通条件下高速公路交通行为的基本随机特征,并将其应用于短期交通速度预测。速度转换概率是根据佛罗里达州奥兰多市4号州际公路(I-4)38英里长的走廊上三个不同位置的六年中真实世界中30秒钟速度数据估算的。累积的负/正转换概率和期望值分别从转换概率中得出,并分别使用逻辑模型和指数模型进行拟合。然后,从拟合模型中得出与最可能的速度过渡相关的期望值,并将其用于预测速度。每个预测的速度还与概率值相关联,该概率值指示观察到这种过渡的发生的机会。使用均方根误差(RMSE)比较了三种方法的预测性能。在大多数情况下,加权平均法与高概率法非常接近。对于这两种概率方法,早上高峰时段的性能比晚上高峰时段或所有数据的总和稍好。虽然概率模型的预测性能可与文献中发现的其他方法相媲美,但基于较高概率的概率方法可为每个预测提供相关概率的估计。这可以在交通机构向公众传播这些信息之前,对预测值的置信度进行衡量。

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