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Short-term traffic flow prediction using seasonal ARIMA model with limited input data

机译:使用季节性ARIMA模型在输入数据有限的情况下进行短期交通流量预测

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Abstract Background Accurate prediction of traffic flow is an integral component in most of the Intelligent Transportation Systems (ITS) applications. The data driven approach using Box-Jenkins Autoregressive Integrated Moving Average (ARIMA) models reported in most studies demands sound database for model building. Hence, the applicability of these models remains a question in places where the data availability could be an issue. The present study tries to overcome the above issue by proposing a prediction scheme using Seasonal ARIMA (SARIMA) model for short term prediction of traffic flow using only limited input data. Method A 3-lane arterial roadway in Chennai, India was selected as the study stretch and limited flow data from only three consecutive days was used for the model development using SARIMA. After necessary differencing to make the input time series a stationary one, the autocorrelation function (ACF) and partial autocorrelation function (PACF) were plotted to identify the suitable order of the SARIMA model. The model parameters were found using maximum likelihood method in R. The developed model was validated by performing 24?hrs. ahead forecast and the predicted flows were compared with the actual flow values. A comparison of the proposed model with historic average and naive method was also attempted. The effect of increase in sample size of input data on prediction results was studied. Short term prediction of traffic flow during morning and evening peak periods was also attempted using both historic and real time data. Concluding remarks The mean absolute percentage error (MAPE) between actual and predicted flow was found to be in the range of 4–10, which is acceptable in most of the ITS applications. The prediction scheme proposed in this study for traffic flow prediction could be considered in situations where database is a major constraint during model development using ARIMA.
机译:摘要背景交通流量的准确预测是大多数智能运输系统(ITS)应用程序中不可或缺的组成部分。在大多数研究中,使用Box-Jenkins自回归综合移动平均(ARIMA)模型进行数据驱动的方法需要建立模型的可靠数据库。因此,在可能存在数据可用性的地方,这些模型的适用性仍然是一个问题。本研究试图通过提出一种使用季节性ARIMA(SARIMA)模型的预测方案来克服上述问题,以仅使用有限的输入数据对交通流量进行短期预测。方法选择印度钦奈的3通道动脉巷道作为研究范围,并使用连续三天的有限流量数据进行SARIMA模型开发。在进行必要的微分以使输入时间序列平稳之后,绘制自相关函数(ACF)和部分自相关函数(PACF)以识别SARIMA模型的合适顺序。使用R中的最大似然法找到模型参数。开发的模型通过执行24小时进行验证。将提前预测和预测流量与实际流量值进行比较。还尝试将提出的模型与历史平均法和幼稚方法进行比较。研究了输入数据样本量增加对预测结果的影响。还尝试使用历史数据和实时数据对早高峰时段和傍晚高峰时段的交通流量进行短期预测。结束语实际流量和预测流量之间的平均绝对百分比误差(MAPE)被发现在4-10之间,这在大多数ITS应用中都是可以接受的。在数据库是使用ARIMA进行模型开发的主要约束条件下,可以考虑本研究中提出的用于交通流量预测的预测方案。

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