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Crosssection passenger flow forecasting of urban rail transit based onPSOLSSVM algorithm(PDF)

长安大学学报(自然科学版)[ISSN:1006-6977/CN:61-1281/TN]

Issue:
2021年6期
Page:
91-102
Research Field:
交通工程
Publishing date:

Info

Title:
Crosssection passenger flow forecasting of urban rail transit based onPSOLSSVM algorithm
Author(s):
LI Yaxiang WANG Yuanqing
(College of Transportation Engineering, Changan University, Xian 710064, Shaanxi, China)
Keywords:
traffic engineering urban rail transit crosssection passenger flow forecasting particle swarm optimization least squares support vector machines mixed kernel function
PACS:
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DOI:
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Abstract:
In order to improve the level of service and the utilization efficiency of urban rail transit, in view of the problems such as long waiting time for passengers during the offpeak period, high train loading rate during the peak period, and wasted train capacity etc., the maximum crosssection passenger flow of urban rail transit with the feature of nonlinear and random fluctuation was urgent to forecast accurately and rapidly, which could be applied to adjust the train operation plan in time. Firstly, the fullday and timesharing crosssection passenger flow of Xian Urban Rail Transit Line 2 from April to June in 2017 were collected as the data basis, which were divided into the upward passenger flow and the downward passenger flow on weekdays, weekends and holidays. Secondly, the maximum crosssection passenger flow of each phase in the first three days and the crosssection passenger flow of each phase in the day before were adopted as the input variables of the model, and the intraday maximum crosssection passenger flow were adopted as the output variables of the model. Optimal parameters of kernel functions in least squares support vector machines (LSSVM) model were constructed. Thirdly, the RBF kernel, POLY kernel and Sigmoid kernel were combined into a variety of alternative kernel functions. Taking regularization parameter, width parameter, order parameter and offset parameter as the objects, particle swarm optimization (PSO) was chosen to optimize these alternative functions and key parameters. Finally, the regression evaluation indexes of the prediction effects before and after PSO optimization and regression errors in each phase on weekdays, weekends and holidays were compared in different models. The results show that the values of mean absolute percentage error are lower than 5.0% after that the alternative functions and key parameters in LSSVM are optimized by PSO on weekdays, and the accuracy of passenger flow prediction is improved. Under the condition of faster running speed and higher accuracy, the RBF and Sigmoid mixed kernel has the best fitting effect on the upward crosssection passenger flow on weekdays, and the RBF kernel function has the best fitting effect on the downward crosssection passenger flow on weekdays. PSOLSSVM model has the optimal prediction effect on crosssection passenger flow during the peak hours on weekdays. Compared with the better prediction effect of PSOLSSVM model on weekdays, it has a relatively poor prediction effect on crosssection passenger flow on weekends and upward crosssection passenger flow on holidays. The improved kernel function LSSVM model with PSO can better explain the complex fluctuations of crosssection passenger flow on weekdays, achieve ideal regression accuracy under the small sample, and has the real practical value. 1 tab, 12 figs, 25 refs.

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Last Update: 2021-12-14