Skip to content

public-transport/generating-transit-maps

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 

History

8 Commits
 
 
 
 
 
 

Repository files navigation

generating transit maps

A transit map is a topological map in the form of a schematic diagram used to illustrate the routes and stations within a public transport system—whether this be bus lines, tramways, rapid transit, commuter rail or ferry routes. […]

Their primary function is to help users to efficiently use the public transport system, including which stations function as interchange between lines. Unlike conventional maps, transit maps are usually not geographically accurate—instead they use straight lines and fixed angles, and often illustrate a fixed distance between stations, compressing those in the outer area of the system and expanding those close to the center.

Transit map on Wikipedia

To automatically generate a transit map of a public transport network, the following information is necessary:

  • a list of all stations, their geographical position and their names
  • a list of all lines, their order of stations and their colors
  • a distance metric between stations, e.g. travel time or physical distance

One can build a graph structure from this data and feed it into optimization tools adjusted to this specific problem.

@dirkschumacher, @juliuste and @derhuerst set out to do this with Berlin & Brandenburg public transport (VBB) and German national railways Deutsche Bahn (DB).

generating a graph

@derhuerst wrote generate-vbb-graph and generate-db-graph for this. Both of them generate data in the JSON Graph Format.

They will create two files, nodes.ndjson and edges.ndjson, which ndjson-encoded lists of all nodes and edges, respectively. A node from nodes.ndjson looks like this:

{
	"id": "900000029101",
	"label": "S Spandau",
	"metadata": {
		"x": 536.66,
		"y": 326.25
	}
}

An edge from edges.ndjson looks like this:

{
	"source": "900000100001",
	"target": "900000003201",
	"relation": "regional",
	"metadata": {
		"line": "RB22",
		"time": 180
	}
}

optimizing the graph

Generating a transit map based on the geographical representation of the network is a computationally (NP-)hard task. Given the input graph we would like to find the best representation of it as a transit map, so it is natural to consider this an optimization problem. Some methods have been developed over the years, two of which we implemented / started to investigate.

One method that uses mixed-integer linear programming by Martin Nöllenburg and Alexander Wolff to solve this task was implemented by us in julia. It is still work in progress, as automated labeling is not yet supported, but already yields good results using the open source solver COIN-CBC for average transit size subway-networks. Also this paper gives a nice overview of the problem in general. Note that mixed-integer linear programming aims at finding a (provable) optimal solution: however an optimal solution in the mathematical sense might not be the most pleasent looking transit map.

Related to the problem of embedding a graph as a transit map is to decide which order parallel edges should have, so that line crossings at intersections are minimized. This is something we have only started to look into. However it seems that this problem can also be formulated as a mixed-integer program. Some first ideas have been implemented in julia as well.

rendering the map

generate-vbb-transit-map will take the optimized graph as JSON, add line colors and generate an SVG file.

Here's a preliminary map for Berlin subway:

Berlin subway generated transit map

improvements & enhancements to be implemented

  • handle very large graphs (Germany would be ~500k edges)
  • find a way to avoid intersecting lines
  • add support for node labeling
  • interactive visualisations
    • hide less important lines to reduce noise, show them on zoom
    • route planning, similar to vbb-map-routing

outlook: interactive modelling tool

We may create an interactive transit map modelling tool.

  • After uploading a graph file, users will be able to see the map get optimized gradually.
  • Users will be able to add additional constraints, e.g. fixing a station to a point, or putting additonal emphasis on the shape of a line.
  • Finally, they will be able to export the graph as SVG, PDF and other open formats.