Difference between revisions of "About"
Line 1: | Line 1: | ||
<div style=background:#2B3856 border:#A3BFB1> | <div style=background:#2B3856 border:#A3BFB1> | ||
− | <font size = 5; color="#FFFFFF"> | + | <font size = 5; color="#FFFFFF">Discovering traffic patterns by using network graph visualisations</font> |
</div> | </div> | ||
<!--MAIN HEADER --> | <!--MAIN HEADER --> |
Revision as of 15:25, 4 August 2017
Discovering traffic patterns by using network graph visualisations
|
|
|
|
|
|
Abstract
Transportation networks are key lifelines that aid movement of people, goods, services and resources that are vital to the productivity of a nation. A good visualization of corridors along which vehicular transport moves is key in understanding patterns of such movement. Using a dataset that captures that timestamp information of vehicles passing through a wildlife preserve, a network visualization application is created using R Shiny as the platform. The insights derived can help understand metrics such as traffic density along corridors, the directions of traffic flow, and the daily and seasonal patterns of traffic flow.
Motivation
Network patterns can reveal very interesting insights but it is very difficult to implement with off-the-shelf software tools such as Tableau®. Gephi®, an open-source and free software is one of the leading tools to visualise network graphs. But, in order to make our findings easily accessible to everyone without any installation of any tools at their end, we propose the usage of the recently introduced ggraph package from R. Besides bringing the same kind of flexibility offered by a commercial tool, it offers an extension on the well-acclaimed ggplot2 package in R. Built specifically for supporting relational data structures such as networks, graphs and trees, the API provides a self-contained set of facets and customisations, enhancing the quality of visualisations.
Practical use cases
- Traffic planning.
- Systems such as Singapore ERP.
- Implementing diversions during peak periods.