Predicting Occupancy Trends in Barcelona's Bicycle Service Stations Using Open Data
May 14, 2015 Β· Declared Dead Β· π Intelligent Systems with Applications
"No code URL or promise found in abstract"
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Authors
Gabriel Martins Dias, Boris Bellalta, Simon Oechsner
arXiv ID
1505.03662
Category
cs.AI: Artificial Intelligence
Cross-listed
cs.CY
Citations
32
Venue
Intelligent Systems with Applications
Last Checked
4 months ago
Abstract
In 2008, the CEO of the company that manages and maintains the public bicycle service in Barcelona recognized that one may not expect to always find a place to leave the rented bike nearby their destination, similarly to the case when, driving a car, people may not find a parking lot. In this work, we make predictions about the statuses of the stations of the public bicycle service in Barcelona. We show that it is feasible to correctly predict nearly half of the times when the stations are either completely full of bikes or completely empty, up to 2 days before they actually happen. That is, users might avoid stations at times when they could not return a bicycle that they have rented before, or when they would not find a bike to rent. To achieve that, we apply the Random Forest algorithm to classify the status of the stations and improve the lifetime of the models using publicly available data, such as information about the weather forecast. Finally, we expect that the results of the predictions can be used to improve the quality of the service and make it more reliable for the users.
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