基于数据挖掘方法的德黑兰地铁乘客平均出行时间优化

E. Rezaei, H. Rahmani, Elham Ashraf
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引用次数: 1

摘要

在城市铁路等公共交通系统的设计和开发中,不仅要考虑车站的路线和位置,还要考虑车队的运行时间表。列车时刻表是一个重要因素,因为它影响到客户满意度、地铁运营成本和环境健康;因此,列车时刻表优化提高了服务质量。在此时刻表优化中,列车在车站的停靠时间和乘客的等待时间将被考虑在内。在时间优化研究中,到目前为止,数据挖掘算法的数学分析和模拟已经用于时间表的一般变化。在本文中,为了找到与其他数据的显著差异,对数据进行了详细的检查。本文采用数据挖掘分析方法,对德黑兰地铁误点数据进行了分析。在相对理解数据集的重要特征后,判别分析方法被用于识别具有显著差异的延迟行程。考虑到遗传算法实现最优解的能力,本文提出的方法是提供一种将遗传算法与判别分析方法相结合的解决方案。本文的结果是40个最终染色体,表明与其他旅行相比,旅行在延迟方面表现出显着差异。根据这些行程的特点,可以通过改变时刻表来进行优化。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optimization of Average Travel Time of Passengers in Tehran Metro Using Data Mining Methods
In the design and development of public transportation systems such as urban railways, not only the route and location of stations, but also the timetable of fleet movements must be considered. Train timetables are an important factor as they influence customer satisfaction, metro operating costs, and environmental health; as a result, train timetables optimization increases the service quality. In this timetable optimization, train stopping time at the station as well as passenger waiting time would be taken into account. In time optimization research, mathematical analysis and simulation of data mining algorithms have been used so far for general changes in timetables. In this article, the data are examined in detail in order to find significant differences with other data. In this paper, the data of delayed trips in Tehran metro have been examined using data mining analysis methods. The Discriminant Analysis method has been used to identify delayed trips with significant differences after a relative understanding of important features of the dataset. Considering the power of the genetic algorithm to achieve an optimal solution, the approach proposed in this paper is to provide a solution to combine this algorithm and discriminant analysis method. The result of this paper is 40 final chromosomes, indicating trips that exhibit a significant difference in latency, compared to other trips. And according to the characteristics of these trips, the optimization can be done by changes in the timetable.
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