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Optimization of Urban Bus Stops Setting Based on Data Mining

机译:基于数据挖掘的城市公交车站优化

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The unreasonable setting of urban bus stops is a common problem in real life, which seriously affects people's happiness, sense of belonging and brand in the city. However, the existing related research on the above problems generally has the defects of high technical complexity and high cost. Therefore, we aim to propose a way to optimize the setting of urban public transportation stations and reduce the technical complexity and high cost of existing public transportation station optimization by using artificial intelligence algorithms. First, we extract and integrate bus GPS data and bus card swipe data in the business system and perform exploratory analysis on the pre-processed data. Second, the original k-NN algorithm is improved, and an ik-NN algorithm is proposed to determine the cardholder's boarding point. Then, we divide the upstream and downstream lines to calculate the total number of upstream and downstream passengers. Third, we propose an algorithm for calculating the number of passengers getting off at bus stations and calculating the number of passengers getting on and off at each bus station. Finally, according to the number of passengers getting on and off at each bus station, the OD matrix is constructed, the residents' travel rules are analyzed, and optimization suggestions for the setting of urban bus stations are proposed. This paper selects the public transit GPS data set and swipe card data set of Shenzhen, China for experiments. The experimental results show that: (1) Compared with K-means, the ik-NN algorithm we proposed can effectively determine the actual car station of each cardholder, and the algorithm is less sensitive to feature dimensions. At the same time, the ik-NN algorithm has a high operating efficiency and is less affected by the "k" value. (2) The calculation algorithm for the number of passengers getting off at bus stations can effectively use the existing data of the business system to determine the number of passengers getting off at each bus station. Therefore, the calculation times of this algorithm are low, and the accuracy is high. (3) The optimization suggestions for bus stations based on the OD matrix analysis of residents' travel rules meet the needs of urban development and have certain reference value.
机译:城市公交车站的不合理环境是现实生活中的一个常见问题,这严重影响了人们的幸福,归属感和城市品牌。然而,对上述问题的现有相关研究通常具有高技术复杂性和高成本的缺陷。因此,我们的目标是通过使用人工智能算法,提出一种优化城市公共交通站的设定,降低现有公共交通站优化的技术复杂性和高成本。首先,我们在业务系统中提取和集成总线GPS数据和总线卡刷卡数据,并对预处理数据进行探索性分析。其次,提高了原始的K-NN算法,提出了IK-NN算法来确定持卡人的登机点。然后,我们划分上游和下游线来计算上游和下游乘客的总数。第三,我们提出了一种计算在公交车站下车的乘客数量的算法,并计算每个总线站上和关闭的乘客数量。最后,根据每个总线站在每个总线站上的乘客数量,建造OD矩阵,分析了居民的旅行规则,提出了对城市总线设定的优化建议。本文选择了中国深圳的公共交通GPS数据集和刷卡数据集进行实验。实验结果表明:(1)与K-Means相比,我们提出的IK-NN算法可以有效地确定每个持卡人的实际车站,并且该算法对特征尺寸不太敏感。同时,IK-NN算法具有高的操作效率,并且受“k”值的影响较小。 (2)在公交车站下车的乘客数量的计算算法可以有效地利用业务系统的现有数据来确定在每个总线站下车的乘客数量。因此,该算法的计算时间很低,精度高。 (3)基于居民旅行规则OD矩阵分析的公交车站的优化建议符合城市发展需求,并具有一定的参考价值。

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