CYAIApr 3, 2016

Bicycle-Sharing System Analysis and Trip Prediction

arXiv:1604.00664v179 citations
Originality Synthesis-oriented
AI Analysis

This addresses the issue of bike imbalance at stations for service providers, but it appears incremental as it builds on existing prediction methods for such systems.

The paper tackles the problem of predicting individual trip destinations and durations in bicycle-sharing systems to help service providers schedule bike re-dispatch in advance, and experiments on a real-world system demonstrate the model's effectiveness.

Bicycle-sharing systems, which can provide shared bike usage services for the public, have been launched in many big cities. In bicycle-sharing systems, people can borrow and return bikes at any stations in the service region very conveniently. Therefore, bicycle-sharing systems are normally used as a short-distance trip supplement for private vehicles as well as regular public transportation. Meanwhile, for stations located at different places in the service region, the bike usages can be quite skewed and imbalanced. Some stations have too many incoming bikes and get jammed without enough docks for upcoming bikes, while some other stations get empty quickly and lack enough bikes for people to check out. Therefore, inferring the potential destinations and arriving time of each individual trip beforehand can effectively help the service providers schedule manual bike re-dispatch in advance. In this paper, we will study the individual trip prediction problem for bicycle-sharing systems. To address the problem, we study a real-world bicycle-sharing system and analyze individuals' bike usage behaviors first. Based on the analysis results, a new trip destination prediction and trip duration inference model will be introduced. Experiments conducted on a real-world bicycle-sharing system demonstrate the effectiveness of the proposed model.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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