Multimodal Transportation Choices and Health: Exploratory Analysis Using Data Fusion Techniques

作者:Lugo Miguel; Srinivasan Sivaramakrishnan*
来源:Transportation Research Record, 2016, 2598(2598): 37-45.
DOI:10.3141/2598-05

摘要

This study demonstrates the feasibility of fusing large-scale travel and health surveys and uses the new comprehensive data set generated to model the relationship between health and multimodal (walking, biking, transit, and vehicle usage) long-term (weekly, monthly, and yearly) travel choices. Two measures of health, the body-mass index (BMI) and a self-assessed physical health score (SAPHS), were fused from a health survey onto a travel survey at the disaggregate (individual) level. The probabilistic record linkage software, Link Plus, was used for the data fusion purposes. The methodology was validated by using the eating and health module (EH) of the American Time Use Surveys (ATUS). Subsequently, the algorithm was used to match the health information from theATUS to theNational Household Travel Surveys (NHTS) of 2008 to 2009, and the resulting master data set was used to develop models for multi modal travel choices and health. The statistical analysis indicates that although increasing walking and transit use were associated with better health (relative to nonusers of the mode), those with the highest levels of walking and transit use were also found to be in poor health relative to moderate users of the mode. Similarly, those at the two ends of the vehicle miles traveled spectrum (first and fourth quartiles) had higher BMI compared with those in the middle of the spectrum. There were no statistically significant effects of weekly bike trips on health measures. Overall, this study is envisioned as a proof-of-concept of how data fusion techniques may be used to integrate multiple data sets to facilitate a comprehensive study of multimodal travel choices and health.

  • 出版日期2016

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