Predicting the Location of Bicycle-sharing Stations using OpenStreetMap
Data
- URL: http://arxiv.org/abs/2111.01722v1
- Date: Tue, 2 Nov 2021 16:44:00 GMT
- Title: Predicting the Location of Bicycle-sharing Stations using OpenStreetMap
Data
- Authors: Kamil Raczycki
- Abstract summary: This thesis proposes a new solution to streamline and facilitate the process of such planning by using spatial embedding methods.
Based on publicly available data from OpenStreetMap, and station layouts from 34 cities in Europe, a method has been developed to divide cities into micro-regions.
The result of the work is a mechanism to support planners in their decision making when planning a station layout with a choice of reference cities.
- Score: 0.0
- License: http://creativecommons.org/licenses/by-nc-sa/4.0/
- Abstract: Planning the layout of bicycle-sharing stations is a complex process,
especially in cities where bicycle sharing systems are just being implemented.
Urban planners often have to make a lot of estimates based on both publicly
available data and privately provided data from the administration and then use
the Location-Allocation model popular in the field. Many municipalities in
smaller cities may have difficulty hiring specialists to carry out such
planning. This thesis proposes a new solution to streamline and facilitate the
process of such planning by using spatial embedding methods. Based only on
publicly available data from OpenStreetMap, and station layouts from 34 cities
in Europe, a method has been developed to divide cities into micro-regions
using the Uber H3 discrete global grid system and to indicate regions where it
is worth placing a station based on existing systems in different cities using
transfer learning. The result of the work is a mechanism to support planners in
their decision making when planning a station layout with a choice of reference
cities.
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