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Big Data Analytics: Estimation of Destination for Users of Bus Rapid Transit (BRT) Public Transportation in Jakarta

机译:大数据分析:雅加达公交快速公交(BRT)公共交通用户的目的地估计

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Origin-Destination (OD) matrix is a metric which has become the main requirement in the analysis of the transportation system. This measurement has been made a model for management, development, and transportation planning purposes. Entering the era of big data, the infrastructure that is used to measure OD matrices has also changed. Due to the development of the Intelligence Transportation System (ITS), estimation of the origin-destination flow of transportation users is utilized as an approach to observe travel behavior of public transport users formulated in the OD matrix. The infrastructure has been developed a lot to get user's behavior by recording their transactions. This research presents the method of alighting station estimation from the Automated Fare Collection (AFC) transaction data on Bus Rapid Transit (BRT) smart card users between bus stations and corridors, with OD matrices as its parameters. The estimated travel destination of users with the same day trip chaining approach was explained in this study. Validation is done by comparing OD matrices with available entry-exit AFC. The comparison of the results of estimated validation between corridors and stops as a comparison of the scope of research on the behavior of travel users is presented. The purpose of this study is to determine the level of validity of the OD matrix estimation results validated with AFC data entries using the method approach that had been offered. The results of comparisons at each level (corridor - bus stop) show that the approach provides results with accuracy up to 94%. The comparison of destination estimation at each level shows that OD matrix validity will be better at higher levels.
机译:起点(OD)矩阵是一种度量标准,已成为分析运输系统的主要要求。该度量已成为用于管理,开发和运输计划目的的模型。进入大数据时代,用于测量OD矩阵的基础架构也发生了变化。由于智能交通系统(ITS)的发展,交通用户的起点-目的地流量的估计被用作一种方法来观察在OD矩阵中制定的公共交通用户的出行行为。已经开发了很多基础结构,以通过记录用户的交易来了解用户的行为。这项研究提出了一种以OD矩阵为参数,根据公交快速公交(BRT)智能卡用户在公交车站和走廊之间的自动票价收集(AFC)交易数据估算下车站的方法。这项研究解释了使用同一天旅行链接方法的用户的估计旅行目的地。通过将OD矩阵与可用的进出AFC进行比较来进行验证。提出了走廊和站点之间的估计验证结果的比较,作为旅行用户行为研究范围的比较。这项研究的目的是使用已提供的方法确定用AFC数据条目验证的OD矩阵估计结果的有效性水平。每个级别(走廊-公交车站)的比较结果表明,该方法提供的结果精度高达94%。每个级别的目的地估计值的比较表明,OD矩阵的有效性在更高级别上会更好。

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