scholarly journals Exploratory analysis on worker's independent and joint travel patterns during weekdays and weekends

2021 ◽  
pp. 100073
Author(s):  
Devika Babu ◽  
M.V.L.R. Anjaneyulu
Author(s):  
Zhenpeng Zou ◽  
Hannah Younes ◽  
Sevgi Erdoğan ◽  
Jiahui Wu

The proliferation of micromobility, evolving from station-based to dockless bikeshare programs, has dramatically accelerated since 2017 with an influx of investment from the private sector to a new product, dockless e-scooter share. As an alternative to pedal bikes, e-scooters have become widespread across the U.S.A. owing to the unprecedented convenience they bring to commuters and travelers with electric-power propulsion and freedom from docking stations. In cities like Washington, D.C., e-scooter share can play an important role to support transportation sustainability and boost accessibility in less-connected communities. This study takes advantage of publicly available but not readily accessible e-scooter share data in Washington, D.C. for an initial view of the travel patterns and behaviors related to this new mode. The study adopted an innovative approach to scrape and process general bikeshare feed specification data in real time for e-scooters. Not only locational time series data, but also e-scooter share trip trajectories were generated. The trip trajectory data provide a unique opportunity to examine travel patterns at the street link level—a level of analysis that has not been reached before for e-scooter share to the authors’ knowledge. The paper first provides descriptive statistics on e-scooter share trips, followed by an exploratory analysis of trip trajectories conjoined with street link level features. Important insights on e-scooter route choice are derived. Lastly, policy and regulatory implications in relation to e-scooter facility design and safety risks are discussed.


2002 ◽  
Vol 1807 (1) ◽  
pp. 101-108 ◽  
Author(s):  
Teresa Frusti ◽  
Chandra R. Bhat ◽  
Kay W. Axhausen

The presence of fixed commitments in the activity—travel patterns of individuals is examined. Data obtained from a 6-week travel diary survey undertaken in Germany are used in the empirical analysis. The results provide several important insights into the determinants of fixed commitments.


Author(s):  
Rajul Misra ◽  
Chandra Bhat

Analysis of activity-travel patterns is an important component of any activity-based transportation planning exercise. Most of the current activity-travel literature focuses on studying the characteristics of workers. In comparison, little emphasis has been placed on studying non-worker activity-travel patterns. The results of an exploratory analysis of the activity-travel patterns of nonworkers in the San Francisco Bay Area are presented. The attributes of a nonworker’s overall activity-travel pattern are examined in terms of three dimensions: number of stops of each activity type, trip chaining, and the temporal sequencing of activities. Implications for transportation planning and policy analysis are discussed.


Author(s):  
Allison M. Lockwood ◽  
Sivaramakrishnan Srinivasan ◽  
Chandra R. Bhat

Research on travel demand modeling has predominantly focused on weekday activity–travel patterns, with studying the effects of commute travel on peak period traffic congestion as a major objective. Few studies have examined the weekend activity–travel behavior of individuals. However, weekend travel volume has been increasing over time and is comparable to weekday travel volumes. Hence, weekend activity–travel patterns warrant careful attention in transportation planning. This paper focuses on presenting a comprehensive exploratory analysis of weekend activity–travel patterns and contrasting weekday and weekend activity participation characteristics. Data from the 2000 San Francisco Bay Area Travel Survey, California, are used in the analysis. A comparative analysis of several aggregate activity–travel characteristics indicates that, although weekday and weekend travel volumes are comparable, there are several key differences in activity–travel characteristics. Specifically, weekend activity–travel is predominantly leisure oriented and undertaken during the midday period. Average trip distances are longer on weekends. Transit shares are lower but occupancy levels in personal automobiles are higher on weekends. The weekend activity sequencing and trip-chaining characteristics explored in this study provide further insights into individuals’ activity organization patterns on weekend days. This paper highlights the importance of studying weekend activity–travel behavior for transportation planning and air-quality modeling. Insights from this exploratory analysis can form the basis for comprehensive weekend activity–travel modeling efforts.


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