Public Transit of the Future: Enhancing Well-Being through Designing Human-centered Public Transportation Spaces
August 04, 2024 Β· Declared Dead Β· π Transportation Research Interdisciplinary Perspectives
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Authors
Yasaman Hakiminejad, Elizabeth Pantesco, Arash Tavakoli
arXiv ID
2408.01908
Category
cs.HC: Human-Computer Interaction
Citations
9
Venue
Transportation Research Interdisciplinary Perspectives
Last Checked
4 months ago
Abstract
Studies show that psychological effects are among one of the top concerns for public transportation users. While many Americans spend a significant portion of their time in public transportation spaces, the impact of the design and maintenance of these spaces on user well-being has not been fully studied. In this study, we conducted a survey to better understand the effect of implementing different designs on people's well-being and perceptual metrics (N=304). Participants were presented with six images depicting different cabin configurations, including (1) the current version of the cabin space, (2) a low-maintenance version, (3) an aesthetically enhanced version, (4) a bike rack-enabled version, (5) a version with an added workspace, and (6) an improved version with biophilic design. After viewing each image, participants' well-being metrics (e.g., stress, and emotion) and their public transportation perception metrics (e.g., perceptions of safety, and reasonable cost) were evaluated. Our results from linear mixed-effect modeling indicated that adding functional amenities and biophilic design elements led to an overall enhancement in well-being and perceptual metrics. Conversely, low maintenance worsened all measured well-being. This research lays the ground for developing human-centered public transportation spaces that can lead to an increase in public transportation adoption.
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