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Impact of data processing on deriving micro-mobility patterns from vehicle availability data

机译:数据处理对来自车辆可用性数据的微移动模式的影响

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摘要

Vehicle availability data is emerging as a potential data source for micro-mobility research and applications. However, there is not yet research that systematically evaluates or validates the processing of this emerging mobility data. To fill this gap, we propose a generally applicable data processing framework and validate its related algorithms. The framework exploits micro-mobility vehicle availability data to identify individual trips and derive aggregate patterns by evaluating a range of temporal, spatial, and statistical mobility descriptors. The impact of data processing is systematically and rigorously investigated by applying the proposed framework with a case study dataset from Zurich, Switzerland. Our results demonstrate that the sampling rate used when collecting vehicle availability data has a significant and intricate impact on the derived micromobility patterns. This research calls for more attention to investigate various issues with emerging mobility data processing to ensure its validity for transportation research and practices.
机译:车辆可用性数据作为微移动性研究和应用的潜在数据来源。然而,还没有研究,系统地评估或验证该新出现的移动数据的处理。为了填补这个差距,我们提出了一般适用的数据处理框架并验证其相关算法。该框架利用微移动性车辆可用性数据来识别单独的旅行,并通过评估一系列时间,空间和统计移动性描述符来导出聚合模式。通过应用提出的框架与瑞士苏黎世的案例研究数据集进行系统地和严格地研究了数据处理的影响。我们的结果表明,收集车辆可用性数据时使用的采样率对衍生的微生物模式具有显着和复杂的影响。这项研究要求更多地注意,调查新出现的移动数据处理的各种问题,以确保其对运输研究和实践的有效性。

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