用机器学习检验流行病过程对个人电动滑板车使用行为的影响

Q3 Engineering Transactions on Transport Sciences Pub Date : 2023-10-04 DOI:10.5507/tots.2023.016
Emre Kuskapan, Tiziana Campisi, Giulia De Cet, Chiara Vianello, Muhammed Yasin Codur
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引用次数: 0

摘要

为了了解和预测出行需求,分析用户行为从而选择出行方式是交通规划和决策中的一项重要任务。最近的大流行事件对欧洲用户的交通方式选择提出了挑战,减少了在不同时间使用公共交通工具,并倾向于步行和/或使用电动自行车和踏板车进行最后一英里旅行。一些研究通过发展多项逻辑回归和人工神经网络模型来分析COVID-19之前和之后旅行者对交通方式的选择,重点分析了大流行如何影响工人对交通方式的选择,特别是当地公共交通。特别是在非欧洲国家,对社会经济因素与电动踏板车出行时间之间的关系进行了研究,研究是在大流行病造成的健康危机之前和期间进行的。在这些情况下,大流行后电动滑板车出行的持续时间普遍增加。然而,很少有研究分析了欧洲的情况。与服务和基础设施以及社会人口因素有关的几个因素促成了使用电动滑板车的倾向,欧洲背景下的一些文学作品证明了这一点。然而,很少有研究使用机器学习方法来了解哪些因素以及它们如何影响模态选择。目前的研究工作重点是通过调查在COVID-19大流行前后不同时间阶段居住在西西里岛的用户样本的倾向,分析最后一英里的交通选择。在本研究中,共545个数据,确定了35个不同的类别。分类过程使用SMO、KNN和RF机器学习算法进行。结果显示,在疫情造成的健康危机期间,电动滑板车的使用频率有所下降。结果表明,这是一种暂时的行为,尽管大多数人使用电动滑板车的目的在大流行造成的健康危机期间发生了变化。然而,据观察,在大流行造成的健康危机期间,大多数人使用电动滑板车的频率有所下降,并成为一种永久性行为。结果表明,对不同时期变量的重要性进行分析,对于更好地理解和有效地模拟人们的旅行行为以及提高这些运输工具对在所研究地区经营服务的公司的吸引力至关重要。
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Examination of the Effects of the Pandemic Process on the E-scooter Usage Behaviours of Individuals with Machine Learning
Analysing user behaviour and thus travel mode choice is an important task in transport planning and policy-making in order to understand and predict travel demand. Recent pandemic events have challenged the modal choices of European users by reducing the use of public transport at various times and favouring walking and/or the use of electric bikes and scooters for last-mile travel. A number of studies have focused on analysing how the pandemic affected workers' choice of transport mode, with particular reference to local public transport, by developing multinomial logistic regression and artificial neural network models to analyse travellers' choice of transport mode before and after COVID-19. Particularly in non-European contexts, studies have been conducted on the relationship between socio-economic factors and the duration of e-scooter trips before and during the health crisis caused by the pandemic. in these contexts, a general increase in the duration of e-scooter trips after the pandemic was shown. Few studies, however, have analysed the European context. 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.
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来源期刊
Transactions on Transport Sciences
Transactions on Transport Sciences Environmental Science-Management, Monitoring, Policy and Law
CiteScore
1.40
自引率
0.00%
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0
审稿时长
13 weeks
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