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A Traffic Demand Forecasting Model for Internal Junction in a Multi-Level Bus Terminal with RFID Monitoring Systems for the 20th ITS World Congress Tokyo 2013

机译:2013年第20届ITS世界大会东京设有RFID监控系统的多层巴士总站内交通枢纽的交通需求预测模型

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摘要

Taipei Bus Station is the first multi-level bus terminal and hub launched in the heart of Taipei metropolitan area. Different from OASIS21 in Nagoya and Port Authority Bus Terminal in New York City, significant congestion has been experienced during peak hours at a T-junction in the terminal due to the three-level structure in the high-density district. Based on the findings of an earlier study by the authors for a signal control model, a traffic demand forecasting model is needed to upgrade the existing pre-timed control strategy to adaptive control level. The artificial neural network approach is employed for constructing the demand forecasting model taking into account the relevant traffic flow information provided by the RFID readers embedded in the terminal monitoring systems. The results show that separate forecasting models for peak and non-peak periods would be desirable for both approaches at the T-junction.
机译:台北客运站是台北都会区首个首个多层巴士总站及枢纽。与名古屋的OASIS21和纽约市的港口管理局巴士总站不同,由于高密度区的三层结构,在高峰时段在总站的T形路口出现了严重的交通拥堵。基于作者先前对信号控制模型的研究发现,需要一种交通需求预测模型,以将现有的预定时控制策略升级到自适应控制级别。考虑到嵌入在终端监控系统中的RFID阅读器提供的相关交通流信息,采用了人工神经网络方法来构建需求预测模型。结果表明,对于T形交叉口的两种方法,都需要分别针对高峰时段和非高峰时段的预测模型。

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