Optimising shared electric mobility hubs: insights from performance analysis and factors influencing riding demand
Optimising shared electric mobility hubs: insights from performance analysis and factors influencing riding demand
In order to decarbonise the transport networks, systemic change is needed. One manifestation of this transformation is shared electric mobility, seeking to curtail car usage and ownership. This current case study aims to measure and optimise the operational performance of shared electric mobility hubs (eHUBs). From the performance results of eHUBs, one can get helpful insights to develop appropriate future planning and management policies for improving the transport chain. Incorporating data from September 2021 to October 2022, this research developed a novel dynamic two-stage data envelopment analysis (DEA) framework to assess the performance of the eHUB network in Inverness, Scotland. In the first stage, the DEA model computes relative efficiency scores related to the operational performance of the stations. The second stage focuses on network analysis and examining the factors that may influence the high or low obtained performance scores. Scrupulous analysis shows that the population in the catchment area of the eHUBs and the weather conditions (specifically, temperature) are among the most important factors influencing riding demand. The study also finds a weak association between eHUBs efficiency and proximity to public transport stops, suggesting that electric-assist bikes (e-bikes, pedelecs) may not strongly complement public transport, unlike bike-sharing systems. It indicates that e-bikes serve rather as a standalone mode for longer journeys. The findings of the case study can be used to improve sustainable mobility strategies, particularly related to e-bikes in other cities and urban areas.
Hosseini, Keyvan
7d5b7ddf-4d92-48d1-94f2-43af032b4408
Stefaniec, Agnieszka
66b6b4a6-d73d-43de-a604-40094d303d1b
O'Mahony, Margaret
9e83b614-4747-43d8-a192-34a2a58741ab
Caulfield, Brian
df56ae15-2869-4c05-9617-4ed9feec9f16
24 July 2023
Hosseini, Keyvan
7d5b7ddf-4d92-48d1-94f2-43af032b4408
Stefaniec, Agnieszka
66b6b4a6-d73d-43de-a604-40094d303d1b
O'Mahony, Margaret
9e83b614-4747-43d8-a192-34a2a58741ab
Caulfield, Brian
df56ae15-2869-4c05-9617-4ed9feec9f16
Hosseini, Keyvan, Stefaniec, Agnieszka, O'Mahony, Margaret and Caulfield, Brian
(2023)
Optimising shared electric mobility hubs: insights from performance analysis and factors influencing riding demand.
Case Studies on Transport Policy, 13, [101052].
(doi:10.1016/j.cstp.2023.101052).
Abstract
In order to decarbonise the transport networks, systemic change is needed. One manifestation of this transformation is shared electric mobility, seeking to curtail car usage and ownership. This current case study aims to measure and optimise the operational performance of shared electric mobility hubs (eHUBs). From the performance results of eHUBs, one can get helpful insights to develop appropriate future planning and management policies for improving the transport chain. Incorporating data from September 2021 to October 2022, this research developed a novel dynamic two-stage data envelopment analysis (DEA) framework to assess the performance of the eHUB network in Inverness, Scotland. In the first stage, the DEA model computes relative efficiency scores related to the operational performance of the stations. The second stage focuses on network analysis and examining the factors that may influence the high or low obtained performance scores. Scrupulous analysis shows that the population in the catchment area of the eHUBs and the weather conditions (specifically, temperature) are among the most important factors influencing riding demand. The study also finds a weak association between eHUBs efficiency and proximity to public transport stops, suggesting that electric-assist bikes (e-bikes, pedelecs) may not strongly complement public transport, unlike bike-sharing systems. It indicates that e-bikes serve rather as a standalone mode for longer journeys. The findings of the case study can be used to improve sustainable mobility strategies, particularly related to e-bikes in other cities and urban areas.
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More information
Accepted/In Press date: 21 July 2023
e-pub ahead of print date: 22 July 2023
Published date: 24 July 2023
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Local EPrints ID: 495714
URI: http://eprints.soton.ac.uk/id/eprint/495714
ISSN: 2213-624X
PURE UUID: 6dbaf521-9929-4617-8119-95dd158cb400
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Date deposited: 20 Nov 2024 17:53
Last modified: 23 Nov 2024 03:13
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Author:
Keyvan Hosseini
Author:
Agnieszka Stefaniec
Author:
Margaret O'Mahony
Author:
Brian Caulfield
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