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Traffic Flow Prediction using Kalman Filtering Technique

机译:使用卡尔曼滤波技术进行交通流预测

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Traffic flow prediction is an important research problem in many of the Intelligent Transportation Systems (ITS) applications. The use of Autoregressive Integrated Moving average (ARIMA) or seasonal ARIMA (SARIMA) for traffic flow prediction requires huge flow data for model development and hence it may not be possible to use ARIMA in cases where sufficient data are unavailable. To overcome this problem, a prediction scheme based on Kalman filtering technique (KFT) was proposed and evaluated which requires only limited input data. Only previous two days flow observations has been used in the prediction scheme developed using KFT for predicting the next day flow values with a desired accuracy. Traffic flow prediction using both historic (previous two days flow data) and real time data on the day of interest was also attempted. Promising results were obtained with mean absolute percentage error (MAPE) of 10 between observed and predicted flows and this indicates the suitability of the proposed prediction scheme for traffic flow forecasting in ITS applications.
机译:交通流量预测是许多智能交通系统(其)应用中的重要研究问题。用于交通流预测的自回归综合移动平均(ARIMA)或季节性ARIMA(Sarima)需要巨大的流量数据进行模型开发,因此在足够数据不可用的情况下可能无法使用ARIMA。为了克服该问题,提出并评估了基于卡尔曼滤波技术(KFT)的预测方案,其仅需要有限的输入数据。在使用KFT开发的预测方案中仅使用前两天的流动观察,以预测具有所需精度的下一日流量值。还尝试使用历史(前两天流量数据)和实时数据的交通流预测。在观察和预测流之间的平均绝对百分比误差(MAPE)获得了有希望的结果,这表明了所提出的预测方案在其应用中的交通流预测的适用性。

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