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地铁清分中心ACC系统建设要素分析--《中国铁路》2013年11期
地铁清分中心ACC系统建设要素分析
【摘要】:从软件系统建设的角度,分析ACC系统的功能范围、目标架构、冗余方式、清分算法实现、应用集成等关键问题。阐述ACC系统的核心特点及通用型软件平台和容灾中心功能;提出清分模型需要乘客行为验证。
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【分类号】:U231.92【正文快照】:
前我国各城市轨道交通都建设或规划建设多条线路,由于各线路的投资或运营主体不同,形成路网后通常要单独建设一套多线路自动售检票系统清分中心(ACC)统一管理。1 ACC系统的核心功能轨道交通收费系统是基于智能卡(IC),由客流带动票卡的流转驱动系统运行,从而产生交易数据和收益
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DOI:&10.1111/j.04.t01-1-00228.x
Computational Intelligence pages 18&36, Author Information1
IBM Toronto Lab, Canada&, 2University of Ottawa, Canada&, 3University of Ottawa, Canada&Publication HistoryIssue online: 28 JAN 2004Version of Record online: 28 JAN 2004
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