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A Short-Term Forecast Method for Highway Traffic Conditions Based on CHMM

机译:基于CHMM的公路交通状况短期预测方法

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Short-term traffic flow forecasting has been the most important application of the intelligent transportation system (ITS). This paper presents a model structure with a coupled hidden Markov model (CHMM) for short-term traffic prediction in the highway system with real-time traffic flows data. Data used in this study was gathered from simulation software. The model defines traffic states in a two-dimensional space with speed and volume observations. The decoding function of CHMM is used in this study to estimate the most likely sequence of traffic states. The forecasting model is accessed by predicting errors. The CHMM is compared to autoregressive moving average (ARIMA), which is one of the most widely used regression techniques. These results present that the CHMM outperforms the regression model. Consequently, the paper concludes that CHMM is more robust and successful in modelling unstable traffic conditions.
机译:短期交通流量预测一直是智能交通系统(ITS)的最重要应用。本文提出了一种具有耦合隐马尔可夫模型(CHMM)的模型结构,用于具有实时交通流量数据的公路系统中的短期交通量预测。本研究中使用的数据是从模拟软件中收集的。该模型通过观察速度和体积来定义二维空间中的交通状态。在这项研究中,使用CHMM的解码功能来估计最可能的交通状态序列。通过预测错误可以访问预测模型。将CHMM与自回归移动平均值(ARIMA)进行比较,后者是最广泛使用的回归技术之一。这些结果表明,CHMM的性能优于回归模型。因此,本文得出的结论是,CHMM在不稳定交通状况建模方面更加强大和成功。

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