Publication Type
Journal Article
Version
publishedVersion
Publication Date
6-2025
Abstract
Public electric vehicle charging stations (EVCSs) are vital for boosting EV adoption. This study investigates Seoul’s public EV charging patterns, taking into account the surrounding urban built environment. We collected built-environment data from land-use maps, Point of Interest (POI) data, and panorama images near public EVCS. The computer-vision technique was used to extract scene features from panorama images. We conducted a spatiotemporal analysis of public EVCS usage. The built-environment factors underwent dimensionality reduction and were assessed for outliers. Descriptive analysis revealed afternoon peak charging times and variations between chargers. Additional peaks are observed in the weekday late evening for chargers located near mega-retail stores. Public EVCS in Seoul were utilized more on weekdays than on weekends. Public EVCS in central business districts saw the most significant usage, with potential cases of overuse. An analysis of the built environment around the chargers showed unique characteristics, with some forming identifiable clusters. The most used public EVCS had more parking areas than other POIs, matching visual observations. Computer visioning mainly recognized highways, parking lots, and crosswalks as common features near the chargers. Outlier test results generally defined fast chargers in the central business district area as outliers. The results also demonstrated that built-environment measures from POI data and computer vision can be used in a complementary manner. Our study offers empirical findings to enhance the understanding of public EV charging usage. We demonstrated the use of POI data and computer-vision techniques to quantify the built environment.
Keywords
EV, EV charging, Built environment, POI, Computer vision
Discipline
Transportation | Urban Studies
Research Areas
Integrative Research Areas
Publication
Public Transport
Volume
17
Issue
2
First Page
529
Last Page
563
ISSN
1866-749X
Identifier
10.1007/s12469-024-00383-6
Publisher
Springer
Citation
JIAO, Junfeng and CHOI, Seung Jun.
Built environment and public electric vehicle charging: an investigation using POI data and computer vision. (2025). Public Transport. 17, (2), 529-563.
Available at: https://ink.library.smu.edu.sg/cis_research/491
Creative Commons License

This work is licensed under a Creative Commons Attribution-NonCommercial-No Derivative Works 4.0 International License.
Additional URL
https://doi.org/10.1007/s12469-024-00383-6