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首页> 外文期刊>International Journal of Information Technology & Decision Making >AN ADAPTIVE SYSTEM FOR PREDICTING FREEWAY TRAVEL TIMES
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AN ADAPTIVE SYSTEM FOR PREDICTING FREEWAY TRAVEL TIMES

机译:预测高速公路出行时间的自适应系统

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摘要

This paper presents an adaptive system that embeds a Bayesian inference-based dynamic model (BDM) for predicting real-time travel time on a freeway corridor. Bayesian forecasting is a learning process that revises sequentially the state of a priori knowledge of travel time based on newly available information. The prediction result is a posterior travel time distribution that can be employed to generate a single-value (typically but not necessarily the mean) travel time as well as a confidence interval representing the uncertainty of travel time prediction. To better track travel time fluctuations during nonrecurrent congestion due to unforeseen events (e.g., incidents, accidents, or bad weather), the BDM is integrated into an adaptive control framework that can automatically learn and adjust the system evolution noise level. The experimental results based on real loop detector data of a freeway stretch in Northern Taiwan suggest that the proposed method is able to provide accurate and reliable travel time prediction under both recurrent and nonrecurrent traffic conditions.
机译:本文提出了一种自适应系统,该系统嵌入了基于贝叶斯推理的动态模型(BDM),用于预测高速公路走廊上的实时行驶时间。贝叶斯预测是一种学习过程,可以根据新获得的信息顺序修改旅行时间的先验知识状态。预测结果是后部旅行时间分布,可用于生成单值(通常但不一定是平均值)旅行时间以及表示旅行时间预测不确定性的置信区间。为了更好地跟踪由于不可预见的事件(例如,事件,事故或恶劣的天气)导致的非经常性拥堵期间的旅行时间波动,BDM被集成到自适应控制框架中,该框架可以自动学习和调整系统演进噪声水平。基于台湾北部某条高速公路的实际环路检测器数据的实验结果表明,该方法能够在经常性和非经常性交通条件下提供准确而可靠的行驶时间预测。

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