Investigation of Bus Special Lane Performance Using Statistical Analysis and Optimization of the Signalized Intersection Delay by Machine Learning Methods

IF 1 Q3 ENGINEERING, MULTIDISCIPLINARY
Vahid Najafi moghaddam Gilani, Mohammad Reza Ghanbari Tamrin, S. Hosseinian, M. Nikookar, Daniel Safari, Soheil YektaParast
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引用次数: 2

Abstract

Nowadays, the performance analysis and evaluation of public transportation systems have great importance in traffic engineering science. So far, the bus system has not been very effective in some cities in Iran, and many management approaches such as the allocation of special lanes and regular bus scheduling, which are needed to increase the efficiency of this system, have not been sufficiently considered. The purpose of the present study is to optimize the delay of the signalized intersection of bus lane and investigate the factors affecting the urban bus usage by citizens in public transportation of Rasht city and especially their satisfaction. Therefore, the intersection delay was optimized by gathering the traffic volume data in peak hour time of a signalized intersection along the bus lane and using machine learning methods. In addition, by collecting two different questionnaires, taking 84 samples (first questionnaire) and 374 samples (second questionnaire), the satisfaction of citizens and business people on the boundary of the bus lane was considered. The results indicated that about 95% of the businesses around this route believe that the construction of the bus lane led to a decrease in the income of more than 110 dollars per month. Further to this, despite the lack of facilities, poorly designed routes, and lack of the bus system fleet, the bus lane of Imam Khomeini had a high degree of satisfaction among the citizens. The result of various models showed that the adaptive network-based fuzzy inference system (ANFIS) had the highest R2 and the lowest amount of root mean square error (RMSE). In fact, this model had a better performance to predict and optimize the delay of signalized intersection than the fuzzy model. The optimum amount of intersection delay was determined as 56 seconds. With this value, the delay of bus movements in the bus lane had a higher possibility of being reduced.
基于统计分析的公交专用道性能研究及基于机器学习的交叉口信号延迟优化
目前,公共交通系统的性能分析与评价在交通工程科学中具有重要的意义。到目前为止,公交系统在伊朗的一些城市还不是很有效,许多提高公交系统效率所需要的管理方法,如设置专用车道、定期安排公交班次等都没有得到充分的考虑。本研究的目的是优化公交车道信号交叉口的延误,并探讨影响拉什特市市民在公共交通中使用城市公交的因素,特别是他们的满意度。因此,通过采集公交专用道沿线信号交叉口高峰时段交通量数据,利用机器学习方法对交叉口延误进行优化。此外,通过收集两份不同的问卷,84份样本(第一份问卷)和374份样本(第二份问卷),考虑市民和商业人士对公交车道边界的满意度。结果表明,该路线周围约95%的商家认为公交车道的建设导致每月收入减少110美元以上。此外,尽管缺乏设施,路线设计不佳,缺乏公交系统车队,但伊玛目霍梅尼的公交车道在市民中获得了很高的满意度。各种模型的结果表明,基于自适应网络的模糊推理系统具有最高的R2和最低的均方根误差(RMSE)。实际上,该模型比模糊模型具有更好的信号交叉口延迟预测和优化性能。确定最佳交叉口延迟量为56秒。有了这个值,公交车道上的公交运行延误就有更高的减少可能性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Journal of Optimization
Journal of Optimization ENGINEERING, MULTIDISCIPLINARY-
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