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Study on identification method for key monitoring nodes in comprehensive transportation hub

机译:综合交通枢纽关键监控节点识别方法研究

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It is difficult to monitor crowded passengers in comprehensive transportation hubs due to complex facility layout and high passenger flow. Artificial identification is still the common method to find out passenger congestion and other unusual event. Thus, in order to improve the efficiency of passenger monitoring, it is necessary to identify key nodes which are need to be monitored to support the decision making of monitoring equipments configuration and operation. An operational strategy for key monitoring nodes identification using Grey Relational Analysis (GRA) was presented. Passenger facilities were divided into four types to create potential monitoring nodes diagram. And then, based on the pedestrian simulation tool, evaluation indicators system of monitoring node importance was established. GRA algorithm with variable weight was used to calculate importance of different potential monitoring nodes. At last, the identification method was illustrated with a case study of a designing comprehensive transportation hub in Beijing.
机译:由于复杂的设施布局和高客流量,很难在综合交通枢纽监视拥挤的乘客。人工识别仍然是找出乘客拥堵和其他异常事件的常用方法。因此,为了提高旅客监控的效率,有必要确定需要监控的关键节点,以支持监控设备配置和运行的决策。提出了一种使用灰色关联分析(GRA)识别关键监控节点的操作策略。将客运设施分为四种类型,以创建潜在的监视节点图。然后,基于行人模拟工具,建立了监测节点重要性的评价指标体系。使用可变权重的GRA算法来计算不同潜在监视节点的重要性。最后,以北京某综合交通枢纽设计案例为例,对识别方法进行了说明。

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