Cycling into the workshop: predictive maintenance for Barcelona's bike-sharing system
Jordi Grau-Escolano, Aleix Bassolas, and Julian Vicens

TL;DR
This study develops a predictive maintenance system for Barcelona's bike-sharing system, distinguishing between bike types and usage patterns to improve maintenance accuracy and operational efficiency using machine learning models.
Contribution
Introduces a novel predictive maintenance approach tailored for bike-sharing systems, incorporating mobility analysis and interpretability techniques for different bike types.
Findings
Electric bikes have higher maintenance needs than mechanical bikes.
Predictive models accurately forecast maintenance requirements across the fleet.
Mobility patterns significantly influence bike component failures.
Abstract
Bike-sharing systems have emerged as a significant element of urban mobility, providing an environmentally friendly transportation alternative. With the increasing integration of electric bikes alongside mechanical bikes, it is crucial to illuminate distinct usage patterns and their impact on maintenance. Accordingly, this research aims to develop a comprehensive understanding of mobility dynamics, distinguishing between different mobility modes, and introducing a novel predictive maintenance system tailored for bikes. By utilising a combination of trip information and maintenance data from Barcelona's bike-sharing system, Bicing, this study conducts an extensive analysis of mobility patterns and their relationship to failures of bike components. To accurately predict maintenance needs for essential bike parts, this research delves into various mobility metrics and applies statistical…
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