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An open-data approach for quantifying the potential of taxi ridesharing

机译:一种开放数据方法,用于量化出租车拼车的潜力

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Taxi ridesharing(1) (TRS) is an advanced form of urban transportation that matches separate ride requests with similar spatio-temporal characteristics to a jointly used taxi. As collaborative consumption, TRS saves customers money, enables taxi companies to economize use of their resources, and lowers greenhouse gas emissions. We develop a one-to-one TRS approach that matches rides with similar start and end points. We evaluate our approach by analyzing an open dataset of >5 million taxi trajectories in New York City. Our empirical analysis reveals that the proposed approach matches up to 48.34% of all taxi rides, saving 2,892,036 km of travel distance, 231,362.891 of gas, and 532,134.64 kg of CO2 emissions per week. Compared to many-to-many TRS approaches, our approach is competitive, simpler to implement and operate, and poses less rigid assumptions on data availability and customer acceptance. (C) 2017 Elsevier B.V. All rights reserved.
机译:出租车拼车(1)(TRS)是一种城市交通的高级形式,它可以将具有类似时空特征的单独拼车请求与联合使用的出租车相匹配。作为协作消费,TRS可以节省客户金钱,使出租车公司可以节省资源使用量,并减少温室气体排放。我们开发了一对一的TRS方法,以匹配具有相似起点和终点的游乐设施。我们通过分析纽约市超过500万辆出租车轨迹的开放数据集来评估我们的方法。我们的经验分析表明,该方法可满足所有出租车的48.34%,每周可节省2,892,036 km的行驶距离,231,362.891的汽油和532,134.64 kg的二氧化碳排放量。与多对多TRS方法相比,我们的方法具有竞争力,易于实施和操作,并且对数据可用性和客户接受度的假设不那么严格。 (C)2017 Elsevier B.V.保留所有权利。

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