Measuring Changes in Multimodal Travel Behavior Resulting from Transport Supply Improvement

Despite the desired transition toward sustainable and multimodal mobility, few tools have been developed either to quantify mode use diversity or to assess the effects of transportation system enhancements on multimodal travel behaviors. This paper attempts to fill this gap by proposing a methodology to appraise the causal impact of transport supply improvement on the evolution of multimodality levels between 2013 and 2018 in Montreal (Quebec, Canada). First, the participants of two household travel surveys were clustered into types of people (PeTys) to overcome the cross-sectional nature of the data. This allowed changes in travel behavior per type over a five-year period to be evaluated. A variant of the Dalton index was then applied on a series of aggregated (weighted) intensities of use of several modes to measure multimodality. Various sensitivity analyses were carried out to determine the parameters of this indicator (sensitivity to the least used modes, intensity metric, and mode independency). Finally, a difference-in-differences causal inference approach was explored to model the influence of the improvement of three alternative transport services (transit, bikesharing, and station-based carsharing) on the evolution of modal variability by type of people. The results revealed that, after controlling for different socio-demographic and spatial attributes, increasing transport supply had a significant and positive impact on multimodality. This outcome is therefore good news for the mobility of the future as alternative modes of transport emerge.

[1]  Tobias Kuhnimhof,et al.  Multimodal Travel Choices of Bicyclists , 2010 .

[2]  Ralph Buehler,et al.  The multimodal majority? Driving, walking, cycling, and public transportation use among American adults , 2015 .

[3]  Marco Diana,et al.  A comparative assessment of synthetic indices to measure multimodality behaviours , 2016 .

[4]  Tobias Kuhnimhof,et al.  Users of transport modes and multimodal travel behavior : Steps toward understanding travelers' options and choices , 2006 .

[5]  K. Goulias,et al.  Exploring the correlations between spatiotemporal daily activity-travel patterns and stated interest and perception of risk with self-driving cars , 2020 .

[6]  E. Heinen,et al.  Key events and multimodality: a life course approach , 2016 .

[7]  Marco Diana,et al.  Studying Patterns of Use of Transport Modes through Data Mining: Application to U.S. National Household Travel Survey Data Set , 2012 .

[8]  E. Heinen Are multimodals more likely to change their travel behaviour? A cross-sectional analysis to explore the theoretical link between multimodality and the intention to change mode choice , 2018, Transportation Research Part F: Traffic Psychology and Behaviour.

[9]  Kay W. Axhausen,et al.  Measuring the car ownership impact of free-floating car-sharing – A case study in Basel, Switzerland , 2018, Transportation Research Part D: Transport and Environment.

[10]  Kelly Clifton,et al.  Capturing and Representing Multimodal Trips in Travel Surveys , 2012 .

[11]  Eric Molin,et al.  Multimodal travel groups and attitudes: A latent class cluster analysis of Dutch travelers , 2016 .

[13]  Elizabeth A. Stuart,et al.  Using propensity scores in difference-in-differences models to estimate the effects of a policy change , 2014, Health Services and Outcomes Research Methodology.

[14]  Ralph Buehler,et al.  A New Generation , 2011 .

[15]  Patricia L. Mokhtarian,et al.  Desire to change one’s multimodality and its relationship to the use of different transport means , 2009 .

[16]  Catherine Morency,et al.  Using 5 parallel passive data streams to report on a wide range of mobility options , 2018 .

[17]  C. Morency,et al.  Enriching Travel Demand Forecasting Models with a Household Typology , 2019, Transportation Research Record: Journal of the Transportation Research Board.

[18]  Candace Brakewood,et al.  Sharing riders: How bikesharing impacts bus ridership in New York City , 2017 .

[19]  Catherine Morency,et al.  Modeling the interactions between mobility options in the surrounding of bikesharing stations , 2020 .

[20]  Andre L. Carrel,et al.  Capturing Modality Styles Using Behavioral Mixture Models and Longitudinal Data , 2011 .

[21]  P. Vortisch,et al.  Household Travel Survey of Intermodal Trips – Approach, Challenges and Comparison , 2015 .

[22]  Claudia Nobis Multimodality , 2007 .

[23]  Dennis Luxen,et al.  Real-time routing with OpenStreetMap data , 2011, GIS.

[24]  Rebekka Oostendorp,et al.  Combining means of transport as a users' strategy to optimize traveling in an urban context: empirical results on intermodal travel behavior from a survey in Berlin , 2018, Journal of Transport Geography.

[25]  E. Heinen,et al.  The same mode again? An exploration of mode choice variability in Great Britain using the National Travel Survey , 2015 .