Visualization of Urban Mobility Data from Intelligent Transportation Systems
Abstract
:1. Introduction
1.1. Motivation
1.2. Contributions
1.3. Outline
2. Literature Review
- Which phenomena related to transportation have been analyzed using visualizations and which types of data have been exploited?
- How traditional techniques have been used, and which novel techniques have been proposed?
- Urban traffic flows and monitoring;
- People dynamics in urban environments;
- Road traffic incidents;
- Air pollution.
2.1. Urban Traffic Flows and Monitoring
2.2. People Dynamics in Urban Environments
2.3. Road Traffic Incidents
2.4. Air Pollution
2.5. Travel Behavior on Public Transportation Systems
2.6. Level of Service on Public Transportation Systems
2.7. Trip Patterns
2.8. Other Topics
3. Conclusions
Funding
Acknowledgments
Conflicts of Interest
Abbreviations
AFC | Automatic Fare Counting |
ANPR | Automatic Number-plate Recognition |
APC | Automatic Passenger Counting |
AVL | Automatic Vehicle Location |
CoAXs | Collaborative Accessibility-Based Stakeholder Engagement for Public Transportation Planning |
D2ITS | Data-Driven Intelligent Transportation System |
GIS | Geographic Information System |
GPS | Global Positioning System |
GTFS | General Transit Feed Specification |
ICT | Information and Communication Technology |
ITS | Intelligent Transportation Systems |
PTS | Public Transportation System |
VDGIS | Very Dynamic Geographic Information Systems |
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Topics | Related Studies |
---|---|
Urban traffic flows and monitoring | [8,15,16,17,18,19,21,22,23,24,25,26,27,28,29,30,31,32,33,34,35,36] |
People dynamics in urban environments | [14,36,37,38,39,40,41,42,43,44] |
Road traffic incidents | [48,49,50,51,52] |
Air pollution | [17,53,54,55,56] |
Travel behavior on PTS | [58,59,60,61] |
Level of Service on PTS | [64,65,66,67] |
Trip patterns | [43,69,70,71] |
Big city data | [73,74,75] |
Travel demand | [76,77,78] |
Public tansportation ridership | [84,85] |
Sparse trajectory data | [14,89] |
Cyclist behavior | [87,88] |
Temporal transportation data | [90,93] |
Commuting efficiency | [79] |
Accessibility | [80,81] |
Urban traffic conversations | [91] |
Interchange patterns | [92] |
Co-occurrence | [94] |
Groups | Subgroups | Data Types | Related Studies |
---|---|---|---|
Sensors | Activity-based | Floating car data | [79] |
Mobile phone data | [37,38,39,40,41,42,76,94] | ||
Smart card data (AFC) | [58,59,60,61,75,85,92] | ||
Device-based | Bicycle trajectories data | [87,88] | |
Bus AVL data | [15,55,64] | ||
Bus GPS trajectories | [55] | ||
Vehicle sensor data | [16,18,19,24,26,30,32,36,52,53,73,74,75,90,96] | ||
Non-APC Passenger count data | [47,84] | ||
Taxi GPS trajectories | [22,23,27,28,33,35,43,69,70,71,75,77,78] | ||
Subway AVL data | [67] | ||
Tram AVL data | [15,65,66] | ||
Vehicle GPS trajectories | [25,93] | ||
Location-based | Video stream data (incl. ANPR) | [31,34,56,73,89] | |
Others | Survey-based | Household survey data | [74] |
Land use data | [80,81] | ||
Socio–economic data | [37,76] | ||
Travel diary survey data | [44,47,76,97] | ||
Report-based | Car incident record data | [48,49,50,51,52,90] | |
Transit data | [64] | ||
Schedule data | [55,67,80,81] | ||
Social networks | Microblogging data | [14,32,42,91] | |
Model-based | Highway traffic flow data | [21] | |
Origin-destination matrices (travel demand) | [44,79] | ||
Urban traffic flow data (network capacity, travel times) | [8,17,29,36,98] | ||
Road traffic air pollution (emission and dispersion) or heat | [17,53,54] |
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Sobral, T.; Galvão, T.; Borges, J. Visualization of Urban Mobility Data from Intelligent Transportation Systems. Sensors 2019, 19, 332. https://doi.org/10.3390/s19020332
Sobral T, Galvão T, Borges J. Visualization of Urban Mobility Data from Intelligent Transportation Systems. Sensors. 2019; 19(2):332. https://doi.org/10.3390/s19020332
Chicago/Turabian StyleSobral, Thiago, Teresa Galvão, and José Borges. 2019. "Visualization of Urban Mobility Data from Intelligent Transportation Systems" Sensors 19, no. 2: 332. https://doi.org/10.3390/s19020332
APA StyleSobral, T., Galvão, T., & Borges, J. (2019). Visualization of Urban Mobility Data from Intelligent Transportation Systems. Sensors, 19(2), 332. https://doi.org/10.3390/s19020332