In many cities worldwide, the notion of walking as sustainable urban mobility is becoming increasingly popular. Improving the walkability of cities has many benefits, including improved health, reduced traffic, and consequently lower air pollution. To improve walkability, it is important to conduct a thorough analysis of what factors make cities more walkable.
Credit: Professor Yuki Oyama from Shibaura Institute of Technology
In many cities worldwide, the notion of walking as sustainable urban mobility is becoming increasingly popular. Improving the walkability of cities has many benefits, including improved health, reduced traffic, and consequently lower air pollution. To improve walkability, it is important to conduct a thorough analysis of what factors make cities more walkable.
One essential aspect in analyzing walkability is understanding traveler behavior. Before and during their journey, various factors can influence their path choices. For example, travelers can consider the most efficient route before starting but could encounter unexpected events necessitating route changes. Factors like surface conditions, traffic lights or a more scenic view can also influence their decisions. As such, the path choice of travelers can be categorized into two routing mechanisms – global path preferences and local responses to the perceived attributes of the path. While global preferences like the total distance can play a role, pedestrians often prioritize locally perceived attributes. Thus, it is necessary to understand to what extent and which attributes influence the global and local preferences of travelers and related design policies.
To address this, Associate Professor Yuki Oyama from the Department of Civil Engineering at Shibaura Institute of Technology, Japan, developed a novel network path choice model, called the global-local path choice model. “Traditional route choice models typically assume that travelers mainly have global preferences such as using the shortest path. However, in reality, travelers locally perceive and respond to different attributes of a path and capturing this behavior has been challenging. The present model successfully analyses this behavior,” explains Dr. Oyama. The details of the model were outlined in a study published in the journal Transportation Research Part A on February 13, 2024.
Central to this innovative model is a reward decomposition approach integrated into a link-based (Markovian) path choice model, which considers path choice as sequential link choices towards the destination in a Markovian way. In this approach, the Markovian reward function is broken down into a global utility, which is a function of attributes that can be globally perceived from anywhere, and a local utility, a function of attributes that can be only locally perceived from the current state. This enables empirical analyses of the influence of different attributes on the local and global path choices of travelers.
Dr. Oyama applied this model to study a real pedestrian network using GPS data collected from pedestrian movements. In this analysis, the green view index (GVI), which represents the greenery around streets, extracted from Google Street View images, was used as a locally perceived attribute. The idea was to study how visual street quality influences the decisions of pedestrians. The results revealed that pedestrians locally perceived and reacted to GVI values, rather than having pre-trip global perceptions of the values. Moreover, results also revealed the importance of the location of interventions like increasing greenery and showed that interventions should be placed on streets that are directly connected to the most walked-on streets.
Highlighting the potential applications of the study, Dr. Oyama remarks, “This method can be used as a decision-making tool for the design and control of a transportation network as well as visual information provision for route guidance. Moreover, beyond travelers in transportation networks, this model can contribute to elucidating the routing behavior of other agents like animals.”
Overall, this study provides a new way for analyzing walkability from the viewpoint of pedestrians’ local responses to the environment, paving the way for more walkable and environment-friendly cities!
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Reference
DOI: https://doi.org/10.1016/j.tra.2024.103998
About Shibaura Institute of Technology (SIT), Japan
Shibaura Institute of Technology (SIT) is a private university with campuses in Tokyo and Saitama. Since the establishment of its predecessor, Tokyo Higher School of Industry and Commerce, in 1927, it has maintained “learning through practice” as its philosophy in the education of engineers. SIT was the only private science and engineering university selected for the Top Global University Project sponsored by the Ministry of Education, Culture, Sports, Science and Technology and will receive support from the ministry for 10 years starting from the 2014 academic year. Its motto, “Nurturing engineers who learn from society and contribute to society,” reflects its mission of fostering scientists and engineers who can contribute to the sustainable growth of the world by exposing their over 8,000 students to culturally diverse environments, where they learn to cope, collaborate, and relate with fellow students from around the world.
Website: https://www.shibaura-it.ac.jp/en/
About Associate Professor Yuki Oyama from SIT, Japan
Yuki Oyama is currently an Associate Professor at the Department of Civil Engineering at Shibaura Institute of Technology. He obtained his bachelor’s and master’s in engineering from the University of Tokyo in 2012 and 2014, respectively, followed by a Ph.D. in 2017. At SIT he currently leads the Activity Landscape Design (ActScape) Lab. In 2017, he received the Kometani-Sasaki Award for his PhD thesis from Institute of Systems Science Research, Japan. His main research interest is developing new methodologies for modelling and analyzing agents’ behavior in networks, particularly, urban transportation networks, such as congested transport networks, pedestrian activity networks, and sustainable transport networks.
Funding Information
This work was financially supported by JSPS, Japan KAKENHI Grant numbers 20K14899 and 23H01586. The data for the case study was collected through a Probe Person survey, a complementary survey of the Sixth Tokyo Metropolitan Region Person Trip Survey.
Journal
Transportation Research Part A General
DOI
10.1016/j.tra.2024.103998
Method of Research
Computational simulation/modeling
Subject of Research
Not applicable
Article Title
Global path preference and local response: A reward decomposition approach for network path choice analysis in the presence of visually perceived attributes
Article Publication Date
13-Feb-2024
COI Statement
The authors declare that they have no known competing financial interests or personal relationships that could have appeared to influence the work reported in this paper.