Article ID: | iaor2013187 |
Volume: | 40 |
Issue: | 1 |
Start Page Number: | 1 |
End Page Number: | 22 |
Publication Date: | Jan 2013 |
Journal: | Transportation |
Authors: | Thomas Tom, Jaarsma Rinus, Tutert Bas |
Keywords: | statistics: inference, statistics: regression |
In the pursuit of sustainable mobility policy makers are giving more attention to cycling. The potential of cycling is shown in countries like the Netherlands, where cycling covers 25 % of all person trips. However, the effect of policy interventions on cycling demand is difficult to measure, not least caused by difficulties to control for changing context variables like weather conditions. According to several authors weather has a strong influence on cycling demand, but quantitative studies about the relationship are scarce. We therefore further explored this relationship, with the aim of contributing to the development of a generic demand model with which trend and coincidence in bicycle flows might be unraveled. The study is based on time‐series between 1987 and 2003 of daily bicycle flows, collected on 16 cycle paths near two cities in the Netherlands. The regression analyses show that, not surprisingly, recreational demand is much more sensitive to weather than utilitarian demand. Most daily fluctuations (80 %) are described by weather conditions, and no less than 70 % of the remaining variation is locally constrained. The regression can therefore mainly be improved by incorporating path specific, as yet unknown, variables. We used the regression results to calculate weather‐inclusive bicycle flow predictions and found indications of a downward trend in recreational demand. This trend has been off‐set in the observed flows by more favorable weather conditions over the years considered.