Using GPS, GIS, and Accelerometer Data to Predict Transportation Modes

Med Sci Sports Exerc. 2015 Dec;47(12):2669-75. doi: 10.1249/MSS.0000000000000704.

Abstract

Introduction: Active transportation is a substantial source of physical activity, which has a positive influence on many health outcomes. A survey of transportation modes for each trip is challenging, time-consuming, and requires substantial financial investments. This study proposes a passive collection method and the prediction of modes at the trip level using random forests.

Methods: The RECORD GPS study collected real-life trip data from 236 participants over 7 d, including the transportation mode, global positioning system, geographical information systems, and accelerometer data. A prediction model of transportation modes was constructed using the random forests method. Finally, we investigated the performance of models on the basis of a limited number of participants/trips to predict transportation modes for a large number of trips.

Results: The full model had a correct prediction rate of 90%. A simpler model of global positioning system explanatory variables combined with geographical information systems variables performed nearly as well. Relatively good predictions could be made using a model based on the 991 trips of the first 30 participants.

Conclusions: This study uses real-life data from a large sample set to test a method for predicting transportation modes at the trip level, thereby providing a useful complement to time unit-level prediction methods. By enabling predictions on the basis of a limited number of observations, this method may decrease the workload for participants/researchers and provide relevant trip-level data to investigate relations between transportation and health.

Publication types

  • Research Support, Non-U.S. Gov't

MeSH terms

  • Accelerometry*
  • Algorithms*
  • Bicycling
  • Geographic Information Systems*
  • Humans
  • Motor Vehicles
  • Transportation*
  • Walking