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GPS and Multi-Week Data Collection of Activity-Travel Patterns. Harry Timmermans Eindhoven University of Technology. The Survey Method. Conventional survey methods for activity-travel diary data Application of new data collection method GPS logger (original traces) User participation
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GPS and Multi-Week Data Collection of Activity-Travel Patterns Harry Timmermans Eindhoven University of Technology
The Survey Method • Conventional survey methods for activity-travel diary data • Application of new data collection method • GPS logger (original traces) • User participation • Personal profile • Downloading en uploading data • Validating activity-trip agendas • Web-based prompt recall • Embedded with TraceAnnotator
Framework Personal Data Geographical Data it appears more than reasonable to expect that a traveler‟s decision to acquire travel information is to some extent dependent on the availability of a telework-option, and vice versa. Take for example the situation where a traveler chooses to work from home after having received travel information that her route from home to work is severely congested. Or 34 35 36 • Transportation mode • Activity episode GPS data Feng&Timmermans
Approach • Classification of transport modes and activity episode • Bayesian Belief Network (BBN) • Replaces ad hoc rules • A graphical representation of probabilistic causal information incorporating sets of probability conditional tables; • Represents the interrelationship between spatial and temporal factors (input), and activity-travel pattern (output), i.e. transportation modes and activity episode; • Learning-based improved accuracy if consistent evidence is obtained over time from more samples;
Accuracy of the Algorithm Source: Anastasia, et al., (2010) Semi-Automatic Imputation of Activity-Travel Diaries Using GPS Traces, Prompted Recall and Context-Sensitive Learning Algorithms. Journal of Transportation Research Record, 2183.
Accuracy of the Algorithm Source: Feng, T and Timmermans, H. (2012) Recognition of transportation mode using GPS and accelerometer data. International Conference of IATBR, Toronto, Canada, 15-20, July, 2012.
Survey Management • Time horizon • 1st wave (April 30 ~ August 30) • 2nd wave (August 13 ~ November 18) • Location • Rotterdam area (NTS NIPO) • Communications • TU/e and NTS NIPO communicated closely to give responses/solutions to all type of problems
User Participation (# of days) 2nd wave: 109 (of 155) participants (in progress, around 80 days) 1st wave: 24 (of 55) participants
Age of Respondents The percentage of respondents who are older than 55 is 45.7%. No children
Frequency of Activities/Trips Data of missing days were filled by full-day single activities. High frequency is due to the short events, which needs to be filtered further.
Frequency of Transport Mode Many short walking trips
Feedbacks from Respondents • Problems during the survey • Problems of using BT747 • Different windows system (64b system) • Internet browser (Firefox sometimes has problems) • Can’t download data (complex reasons) • Can’t upload data (wrong data file or data format) • Problems of website • Small bugs of website program (improved) • Multiple persons in a same household (user account specific) • Long processing time (Not cleaning data) • Missing days • Forget GPS logger or problematic data (view as a schedule)
Current Data Problems • Number of respondents was not enough, less than half in-take people kept active; • Number of days is low, around 50% active participants had more than a month data; • Slightly high proportion of elder people; • Post processing: data in missing days, missing information (parking, expenditure, etc.)