A Cluster-Based Trip Prediction Graph Neural Network Model for Bike Sharing Systems
B\'arbara Tavares, Cl\'audia Soares, Manuel Marques

TL;DR
This paper introduces a novel graph neural network model for bike trip prediction in sharing systems, utilizing station clustering and meteorological data to improve accuracy and address bike imbalance issues.
Contribution
It proposes a new clustering algorithm, AdaTC+, and demonstrates its effectiveness in enhancing trip prediction accuracy over existing methods.
Findings
Clustering improves prediction accuracy from 83% to 88%.
AdaTC+ outperforms benchmark clustering methods in link prediction.
Model maintains performance with network upgrades, showing robustness.
Abstract
Bike Sharing Systems (BSSs) are emerging as an innovative transportation service. Ensuring the proper functioning of a BSS is crucial given that these systems are committed to eradicating many of the current global concerns, by promoting environmental and economic sustainability and contributing to improving the life quality of the population. Good knowledge of users' transition patterns is a decisive contribution to the quality and operability of the service. The analogous and unbalanced users' transition patterns cause these systems to suffer from bicycle imbalance, leading to a drastic customer loss in the long term. Strategies for bicycle rebalancing become important to tackle this problem and for this, bicycle traffic prediction is essential, as it allows to operate more efficiently and to react in advance. In this work, we propose a bicycle trips predictor based on Graph Neural…
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Taxonomy
TopicsHuman Mobility and Location-Based Analysis · Urban Transport and Accessibility · Transportation Planning and Optimization
Methodstravel james · Graph Neural Network
