首页> 外文会议>Joint Rail Conference >ESTIMATION OF PRE-COVID19 DAILY RIDERSHIP PATTERNS FROM PAPER AND ELECTRONIC TICKET SALES DATA WITH ORIGIN-DESTINATION, TIME-OF-DAY, AND TRAIN-START DETAIL ON A COMMUTER RAILROAD: QUICK-RESPONSE BIG DATA ANALYTICS IN A WORLD STEEPED WITH TRADITION
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ESTIMATION OF PRE-COVID19 DAILY RIDERSHIP PATTERNS FROM PAPER AND ELECTRONIC TICKET SALES DATA WITH ORIGIN-DESTINATION, TIME-OF-DAY, AND TRAIN-START DETAIL ON A COMMUTER RAILROAD: QUICK-RESPONSE BIG DATA ANALYTICS IN A WORLD STEEPED WITH TRADITION

机译:从纸张和电子票据销售数据的估算与征地 - 目的地,一天时间和培训 - 在通勤铁路上的培训 - 开始细节:在世界上迅速响应大数据分析陡峭的传统

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Our niche method independently estimates hourly commuter rail station-to-station origin-destination (OD) matrix data each day from ticket sales and activation data from four sales channels (paper/mobile tickets, mail order, and onboard sales) by extending well-established transportation modelling methodologies. This algorithm s features include: (1) handles multi-pack pay-per-ride fare instruments not requiring electronic validation, like ten-trip paper tickets "punched" onboard by railroad conductors; (2) correctly infers directionality for direction-agnostic ticket-types; (3) estimates unlimited ride ticket utilization patterns sufficiently precisely to inform vehicle assignment/scheduling; (4) provides integer outputs without allowing rounding to affect control totals nor introduce artifacts; (5) deals gracefully with cliff-edge changes in demand, like the COVID19 related lockdown; and (6) allocates hourly traffic to each train-start based on passenger choice. Our core idea is that the time of ticket usage is ultimately a function of the time of sale and ticket type, and mutual transformation is made via probability density functions ("patterns ") given sufficient distribution data. We generated pre-COVID daily OD matrices and will eventually extend this work to post-COVID inputs. Results were provided to operations planners using visual and tabular interfaces. These matrices represent data never previously available by any method; prior OD surveys required 100,000 respondents, and even then could neither provide daily nor hourly levels of detail, and could not monitor special event ridership nor specific seasonal travel such as summer Friday afternoons.
机译:我们的利基方法每天从票据销售和激活数据(纸张/移动机票,邮件订单和板载销售)独立估计每天单个通勤铁路站到站点目的地(OD)矩阵数据建立了运输建模方法。该算法的功能包括:(1)处理多包支付每乘票价仪器,不需要电子验证,如铁路导线的十次纸张门票“穿上”; (2)正确地倾向于方向 - 无症票类型; (3)估计无限制的乘坐机票利用模式,可以充分恰好地通知车辆分配/调度; (4)提供整数输出而不允许舍入以影响控制总计,也不引入伪影; (5)优雅地处理悬崖边缘的需求变化,如Covid19相关的锁定; (6)根据乘客选择为每列火车开始分配每小时流量。我们的核心思想是,机票使用时间最终是销售时间和票类型的函数,并且通过概率密度函数(“图案”)给定足够的分发数据进行互换。我们生成了Pre-Covid日常OD矩阵,最终将把这项工作扩展到Covid输入。使用视觉和表格界面向操作规划仪提供结果。这些矩阵表示任何方法以前从未获得的数据;先前的OD调查需要100,000名受访者,甚至那么既不能提供每日和每小时的细节水平,也无法监控特殊事件骑乘,也不是夏季星期五下午的特定季节性旅行。

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