Emre Kuskapan, Tiziana Campisi, Giulia De Cet, Chiara Vianello, Muhammed Yasin Codur
Examination of the Effects of the Pandemic Process on the E-scooter Usage Behaviours of Individuals with Machine Learning
Číslo: 3/2023
Periodikum: Transactions on Transport Sciences
DOI: 10.5507/tots.2023.016
Klíčová slova: E-scooter; Machine learning; Pre-post COVID-19 travel behaviour; Mobility choices; Sicily
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Several factors relating to services and infrastructure as well as socio-demographic components contributed to the propensity to use e-scooters as evidenced by a number of literature works in the European context. However, little research has been conducted using the machine learning approach to understand which factors and how they may influence modal choices. The present research work focused on the analysis of last-mile transport choices by investigating the propensity of a sample of users residing in Sicily during different time phases before and after the COVID-19 pandemic. In this study, 35 different classes were determined for a total of 545 data. The classification process was carried out using SMO, KNN and RF machine learning algorithms.
The results showed a reduction in the frequency of e-scooter use during the health crisis caused by the pandemic. The results showed that this was a temporary behaviour, even though the purpose of e-scooter use by most individuals changed during the health crisis caused by the pandemic. However, it was observed that the frequency of e-scooter use decreased in most individuals during the health crisis caused by the pandemic and this became a permanent behaviour.
The results suggest that the analysis of the importance of variables in relation to different periods and is essential for a better understanding and effective modelling of people's travel behaviour and for improving the attractiveness of these means of transport for companies operating services in the areas examined.