Revealing Travel Patterns of Sharing-Bikes in a Spatial-Temporal Manner Using Non-Negative Matrix Factorization Method

Conference Paper (2018)
Author(s)

Yongqi Dong (Tsinghua University)

Zi Yang (Tsinghua University)

Yun Yue (Tsinghua University)

Xin Pei (Tsinghua University)

Zuo Zhang (Tsinghua University)

Affiliation
External organisation
DOI related publication
https://doi.org/10.1061/9780784481523.165
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Publication Year
2018
Language
English
Affiliation
External organisation
Pages (from-to)
1665-1674
ISBN (electronic)
9780784481523

Abstract

The booming bike-sharing business provides great convenience to people's daily travel and brings notable change to city traffic. Meanwhile, few studies have analyzed the basis patterns of sharing-bikes and their influence on the traffic using empirical data. In this paper, we investigate the data provided by one of the leading bike-sharing companies. The city is gridded into regular rectangle regions using a geohash algorithm, and the starting and ending region of bike journeys are given. We modeled the macro travel patterns of sharing bikes in a spatial-temporal manner and used the non-negative matrix factorization (NFM) method to obtain the basis collective patterns. The patterns show that, different from other modes of shared mobility like ride-sharing, the trip characteristics of bike-sharing could be approximately described by a linear combination of three basis patterns, and bike-sharing mainly serves for the first/last mile short-distance travel around transport hubs, i.e., subway stations. Our findings are helpful for policy makers to better understand the dynamics patterns and influence of sharing-bikes, and to make better arrangements towards facility building and other bike policies.

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