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Identifying trip ends from raw GPS data with a hybrid spatio-temporal clustering algorithm and random forest model: a case study in Shanghai

机译:用Hybrid时空聚类算法和随机林模型的原始GPS数据识别跳闸结束:在上海的案例研究

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摘要

Smartphones have been advocated as the preferred devices for travel behavior studies over conventional surveys. But the primary challenges are candidate stops extraction from GPS data and trip ends distinction from noise. This paper develops a Resident Travel Survey System (RTSS) for GPS data collection and travel diary verification, and then uses a two-step method to identify trip ends. In the first step, a density-based spatio-temporal clustering algorithm is proposed to extract candidate stops from trajectories. In the second step, a random forest model is applied to distinguish trip ends from mode transfer points. Results show that the clustering algorithm achieves a precision of 96.2%, a recall of 99.6%, mean absolute error of time within 3?min, and average offset distance within 30 meters. The comprehensive accuracy of trip ends identification is 99.2%. The two-step method performs well in trip ends identification and promotes the efficiency of travel survey systems.
机译:智能手机被提倡作为旅行行为研究的优选设备,用于传统调查。但主要挑战是候选人停止从GPS数据和跳闸结局与噪声不同的挑战。本文开发了一个用于GPS数据收集和旅行日记验证的居民旅行调查系统(RTS),然后使用两步方法识别行程结束。在第一步中,提出了一种基于密度的时空聚类算法,以从轨迹中提取候选物。在第二步中,应用随机林模型以区分跳闸结束从模式传递点。结果表明,聚类算法达到96.2%的精度,召回的召回量为99.6%,意味着在3?min内的平均时间差,平均偏移距离30米。跳闸结束识别的综合准确性为99.2%。两步法在跳闸结束识别中表现良好,促进旅行调查系统的效率。

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