Passenger Flow Prediction Method based on Hybrid Algorithm: Intelligent Transportation System

Ahmed Raza, Guangjie Liu, J. M. Adeke, Jie Cheng, Danish Attique
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Abstract

Forecasting passenger flow at metro transit stations is a useful method for optimizing the organization of passenger transportation and enhancing operational safety and transportation efficiency. Aiming at the problem that the traditional ARIMA model has poor performance in predicting passenger flow, a hybrid prediction method based on ARIMA-Kalman filtering is proposed. In this regard, ARIMA model training experimental samples are integrated with Kalman filter to create a prediction recursion equation, which is then utilized to estimate passenger flow. The simulation experiment results based on the inbound passenger flow data of Nanjing metro station show that compared with the single ARIMA model, the root mean square error of the prediction results of the proposed ARIMA-Kalman filter hybrid algorithm is reduced by 257.106, and the mean absolute error decreased by 145. 675, the mean absolute percentage error dropped by 5. 655%, proving that the proposed hybrid algorithm has higher prediction accuracy. The experiment results based on the passenger flow data of Nanjing metro station show that compared to a single ARIMA model, the proposed ARIMA Kalman filtering hybrid algorithm reduces the root mean square error of the prediction results by 257.106, the average absolute error by 145.675, and the average absolute percentage error by 5.655%. It has been proven that the proposed hybrid algorithm has higher prediction accuracy.
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基于混合算法的客流预测方法智能交通系统
预测地铁站的客流量是优化客运组织、提高运营安全和运输效率的有效方法。针对传统的 ARIMA 模型在预测客流方面性能较差的问题,提出了一种基于 ARIMA-Kalman 滤波的混合预测方法。在此基础上,将 ARIMA 模型训练实验样本与卡尔曼滤波相结合,建立预测递推方程,然后利用该方程估算客流量。基于南京地铁站进站客流数据的仿真实验结果表明,与单一的 ARIMA 模型相比,所提出的 ARIMA-Kalman 滤波混合算法预测结果的均方根误差减少了 257.106,平均绝对误差减少了 145.675,平均绝对误差下降了 5. 655%,证明所提出的混合算法具有更高的预测精度。基于南京地铁站客流数据的实验结果表明,与单一ARIMA模型相比,所提出的ARIMA卡尔曼滤波混合算法的预测结果均方根误差降低了257.106,平均绝对误差降低了145.675,平均绝对百分比误差降低了5.655%。事实证明,所提出的混合算法具有更高的预测精度。
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