Abstract
The emergence of electric bikes (e-bikes) has brought a paradigm shift in shared mobility with a promise to move towards the mission of sustainable cities. Whereas an in-depth understanding of e-bike riding characteristics is
crucial to effectively design the infrastructure for active mobility, it remains an open area of research. We take the first step towards modelling the e-bike navigation comfort in pedestrian crowds. Through a laboratory controlled
field experiment, we collect trajectories of e-bike riders under different pedestrian crowding levels
in both opposite- (meeting) and same-direction (passing) encounters. For each trajectory, we obtain e-bike speed,
e-bike lateral distance, and pedestrian crowding after processing the data obtained from four stationary cameras.
Considering the riding comfort as a latent variable, we adopt a Bayesian network to represent the relationship between observed and the latent variables. Subsequently, we use fundamental principles of conditional probability to identify the causal effect of pedestrian crowding on e-bike riding comfort. Controlling for the demographic
heterogeneity, we also estimate the relationship between the comfort of an e-bike rider, pedestrian crowding, and her riding characteristics (e.g., speed and lateral distance). The results of this study would guide policymakers in ex-ante evaluations of the infrastructure decisions for active mobility.
crucial to effectively design the infrastructure for active mobility, it remains an open area of research. We take the first step towards modelling the e-bike navigation comfort in pedestrian crowds. Through a laboratory controlled
field experiment, we collect trajectories of e-bike riders under different pedestrian crowding levels
in both opposite- (meeting) and same-direction (passing) encounters. For each trajectory, we obtain e-bike speed,
e-bike lateral distance, and pedestrian crowding after processing the data obtained from four stationary cameras.
Considering the riding comfort as a latent variable, we adopt a Bayesian network to represent the relationship between observed and the latent variables. Subsequently, we use fundamental principles of conditional probability to identify the causal effect of pedestrian crowding on e-bike riding comfort. Controlling for the demographic
heterogeneity, we also estimate the relationship between the comfort of an e-bike rider, pedestrian crowding, and her riding characteristics (e.g., speed and lateral distance). The results of this study would guide policymakers in ex-ante evaluations of the infrastructure decisions for active mobility.
| Original language | English |
|---|---|
| Article number | 102841 |
| Number of pages | 11 |
| Journal | Sustainable Cities and Society |
| Volume | 69 |
| DOIs | |
| Publication status | Published - 2021 |
Subject classification (UKÄ)
- Transport Systems and Logistics
Fingerprint
Dive into the research topics of 'Electric bike navigation comfort in pedestrian crowds'. Together they form a unique fingerprint.Research output
- 1 Doctoral Thesis (compilation)
-
Towards an electric bike level of service
Kazemzadeh, K., 2021, Lund University Faculty of Engineering, Technology and Society, Traffic and Roads, Lund, Sweden.Research output: Thesis › Doctoral Thesis (compilation)
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