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Automating mode detection for travel behaviour analysis by using global positioning systems-enabled mobile phones and neural networks

Automating mode detection for travel behaviour analysis by using global positioning systems-enabled mobile phones and neural networks

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Travel surveys collect trip data such as origin, destination, mode, duration, distance and purpose of trips, as well as socioeconomic and demographic data for analysis. Transportation planners, policymakers, state departments of transportation, metropolitan planning organisations, industry professionals and academic researchers use survey data to better understand the current demand and performance of the transportation infrastructure, and to plan in preparation for future growth. Next-generation travel surveys will utilise global positioning systems (GPS) to collect trip data with minimal input from survey participants. Owing to their ubiquity, GPS-enabled mobile phones are developing into a promising survey tool. TRAC-IT is a mobile phone application that collects real-time GPS data and requires minimal input from the user for data such as trip purpose, mode and vehicle occupancy. To ease survey burden on participants and enable real-time, mode-specific location-based services, new techniques must be explored to derive more information directly from GPS data. As part of travel survey collection, TRAC-IT is able to passively determine trip mode using GPS-enabled mobile phones and neural networks. The mode detection technique presented in this article can be optimised using a critical point, pre-processing algorithm to reduce the size of required GPS datasets obtained from GPS-enabled mobile phones, thus reducing data collection costs while conserving precious mobile phone resources such as battery life.

References

    1. 1)
      • KVM Australia: ‘KVM 8 Meg tracking Bluetooth GPS: GPS-BTT-08’. Available at: http://www.kvm.com.au/store/product.aspx?ProductID=2177&CategoryID=387, accessed June 2009.
    2. 2)
      • Qualcomm: ‘Qualcomm announces MSM6125 chipset with features to enable doubling of system capacity and advanced position-location capabilities’. Available at: http://www.qualcomm.com/news/releases/2005/051003_msm6125.html, accessed October 2005.
    3. 3)
      • Auld, J., Williams, C.: `Activity-travel surveying using GPS technology', Presentation to the New Technology Subcommittee at the Transportation Research Board 87th Annual Meeting, Washington, DC.
    4. 4)
      • Wolf, J., Lee, M.: `Synthesis of and statistics for recent GPS-enhanced travel surveys', Paper submitted to the Eighth Int. Conf. Survey Methods in Transport, May 2008, Annecy, France, Harmonization and Data Comparability.
    5. 5)
      • Federal Communication Commission (FCC). ‘Enhance 911 – Wireless Services.’ Retrieved 10/8/2006 at: http://www.fcc.gov/911/enhanced/, accessed June 2008.
    6. 6)
      • Ohmori, N., Nakazato, M., Harata, N., Sasaki, K., Nishii, K.: `Activity diary surveys using GPS mobile phones and PDA', Proc. National Academy of Sciences' Transportation Research Board 85th Annual Meeting, January 2006, Paper #06-3039.
    7. 7)
      • Barbeau, S., Labrador, M., Perez, A., Winters, P., Georggi, N., Aguilar, D., Perez, R.: `Dynamic management of real-time location data on GPS-enabled mobile phones', UBICOMM 2008 – The Second Int. Conf. Mobile Ubiquitous Computing, Systems, Services, and Technologies, September/October 2008, Valencia, Spain.
    8. 8)
      • Murakami, E., Wagner, D.P., Neumeister, D.M.: `Using global positioning systems and personal digital assistants for personal travel surveys in the United States', Int. Conf. Transport Survey Quality and Innovation, 1997, Grainau, Germany, available at: http://gulliver.trb.org/publications/circulars/ec008/session_b.pdf, accessed July 2004.
    9. 9)
      • Sun Microsystems, Inc.: ‘Java specification request (JSR) 179: location API for J2ME™’. Available at: http://jcp.org/en/jsr/detail?id=179, accessed June 2008 (© Sun Microsystems, Inc., 2007).
    10. 10)
      • Kohavi, R.: `A study of cross-validation and bootstrap for accuracy estimation and model selection', Proc. 14th Int. Joint Conf. Artificial Intelligence, August 1995.
    11. 11)
      • GlobalSat: ‘DG-100 GPS data logger’. Available at: http://www.qstarz.com/Products/GPS%20Products/BT-Q1000.html, accessed June 2009.
    12. 12)
      • E. Murakami , D.P. Wagner . Can using global positioning system (GPS) improve trip reporting. Transp. Res. Pt C , 149 - 165
    13. 13)
      • University of Waikato: ‘Weka 3: data mining software in Java’. Available at: http://www.cs.waikato.ac.nz/ml/weka/, accessed June 2008.
    14. 14)
      • Stopher, P.: `Collection and processing of data from mobile technologies', Paper submitted to the Eighth Int. Conf. Survey Methods in Transport: Harmonization and Data Comparability, May 2008, Annecy, France.
    15. 15)
      • van Diggelen, F.: `Indoor GPS theory & implementation', IEEE Position, Location & Navigation Symp., 2002, p. 240–247.
    16. 16)
      • QStarz: ‘Super 51-CH performance Bluetooth GPS travel recorder: BT-Q1000’. Available at: http://www.qstarz.com/Products/GPS%20Products/BT-Q1000.html, accessed June 2009.
    17. 17)
      • Byon, Y., Abdulhai, B.: `Impact of sampling rate of GPS-enabled cell phones on mode detection and GIS map matching performance', Transportation Research Board Annual Meeting 2007, Paper #07-1795.
    18. 18)
      • S. Haykin . Neural networks: a comprehensive foundation.
    19. 19)
      • Barbeau, S., Labrador, M., Georggi, N., Winters, P., Perez, R.: `TRAC-IT: a software architecture supporting simultaneous travel behavior data collection and real-time location-based services for GPS-enabled mobile phones', Proc. National Academy of Sciences' Transportation Research Board 88th Annual Meeting, January 2009, Paper #09-3175.
    20. 20)
      • Telespial Systems Inc.: ‘Super Trackstick Tech Specs’. Available at: http://www.trackstick.com/products/supertrackstick/supertrackstick.html, accessed June 2009.
    21. 21)
      • Goulias, K., Rossi, T.: `Data needs for innovative modeling transportation', Workshop Summary, Research Circular E-C071: Data for Understanding Our Nation's Travel National Household Travel Survey Conf., 2004, p. 56–59, Transportation Research Board.
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