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Forecasting Bus Passenger Flows by Using a Clustering-Based Support Vector Regression Approach

机译:通过使用基于聚类的支持向量回归方法预测总线乘客流动

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摘要

As a significant component of the intelligent transportation system, forecasting bus passenger flows plays a key role in resource allocation, network planning, and frequency setting. However, it remains challenging to recognize high fluctuations, nonlinearity, and periodicity of bus passenger flows due to varied destinations and departure times. For this reason, a novel forecasting model named as affinity propagation-based support vector regression (AP-SVR) is proposed based on clustering and nonlinear simulation. For the addressed approach, a clustering algorithm is first used to generate clustering-based intervals. A support vector regression (SVR) is then exploited to forecast the passenger flow for each cluster, with the use of particle swarm optimization (PSO) for obtaining the optimized parameters. Finally, the prediction results of the SVR are rearranged by chronological order rearrangement. The proposed model is tested using real bus passenger data from a bus line over four months. Experimental results demonstrate that the proposed model performs better than other peer models in terms of absolute percentage error and mean absolute percentage error. It is recommended that the deterministic clustering technique with stable cluster results (AP) can improve the forecasting performance significantly.
机译:作为智能运输系统的重要组成部分,预测总线乘客流量在资源配置,网络规划和频率设置中发挥着关键作用。然而,由于不同的目的地和出发时间,承认公共汽车乘客流量的高波动,非线性和周期性仍然具有挑战性。因此,基于聚类和非线性模拟,提出了一种名为基于关联传播的支持向量回归(AP-SVR)的新型预测模型。对于寻址方法,首先使用聚类算法来生成基于群集的间隔。然后利用使用粒子群优化(PSO)来预测每个群集的乘客流量来预测每个群集的乘客流量来获取优化参数。最后,通过按时间顺序重新排列重新排列SVR的预测结果。拟议的模型使用来自四个月的公交线路的真正的总线乘客数据进行测试。实验结果表明,在绝对百分比误差和平均百分比误差方面,所提出的模型比其他对等模型更好。建议确定具有稳定集群结果(AP)的确定性聚类技术可以显着提高预测性能。

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