可持续交通、公交导向发展与出行行为:出行模式分析

A. AlKhereibi
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引用次数: 0

摘要

本研究提出了一个包容性的出行模式分类模型,以支持可持续的流动性和以交通为导向的发展,为卡塔尔的劳动者样本开发同质的活动群体。所研究的模型旨在将活动数据分类为均匀的旅行模式。运用模式识别模型对1051名劳动者的旅游日记进行了显性偏好调查。在分析的第一阶段,应用了原始数据预处理算法和异常值数据检测和过滤算法,因此,为每个家庭开发了基于活动的位移矩阵。本研究中开始的研究方法包括几种机器学习(ML)技术的集成,主要利用聚类和分类方法。采用bagging聚类算法对聚类数量进行识别,然后采用实现的CMeans算法和Pamk算法对结果进行验证。同时,使用交叉分析检查了所得聚类与家庭社会人口特征之间的相互依赖关系。研究结果发现,集群间在出行目的、出行方式分割、目的地选择和职业等方面存在显著差异。基于这三个属性的聚类技术产生了相似的结果,但是基于职业的聚类产生的聚类与基于其他属性的聚类产生的聚类明显不同。将这种模式识别模型应用于大型和复杂的活动数据集,可以帮助交通规划者更好地了解不同人群的出行需求,并制定更明智的策略,从而折衷可持续移动和交通导向发展的最佳实践。分别应用于揭示居民在旅行目的、方式选择和目的地方面的活动模式。本研究的结果证明上述三种聚类方法是可信的,可以更好地理解居民的转移模式。然而,CMeans和Pamk聚类技术比bagging聚类技术表现出更好的效率和代表性。该研究使用机器学习技术将从旅行日记中收集的大量活动聚集到有意义的集群中,以最好地支持交通系统不同要素的预测模型的进一步开发。已经确定的旅行模式有助于在交通导向的发展规划和不同策略的评估中开发有效的决策支持系统。研究结果表明,聚类分析技术在数学上是有效的,可以将居民分类,从而分析出行行为。通过应用聚类技术,详细分析出行者特征
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SUSTAINABLE MOBILITY, TRANSIT-ORIENTED DEVELOPMENT, AND TRAVEL BEHAVIOR: A TRAVEL PATTERN ANALYSIS
This research proposes an inclusive travel pattern classification model, in support of sustainable mobility and transit oriented development to develop homogeneous activity groups for a sample of laborers in the State of Qatar. The investigated model aims to classify the activity data into a homogenous travel pattern. A pattern recognition model is applied to a revealed preference (RP) survey for the travel diary of 1,051 laborers. In the first phase of the analysis, raw data preprocessing algorithms and outliers data detection and filtering algorithms were applied and, therefore, an activity-based displacement matrix was developed for each household. The research methodology commenced in this research encompasses the integration of several machine learning (ML) techniques, mainly utilizing clustering and classification methods. A bagged clustering algorithm was used to recognize the clusters’ number, and then the implemented CMeans algorithm and Pamk algorithm were used to validate the results. Meanwhile, the interdependencies between the resulting clusters and the socio-demographic characteristics of the household were examined using cross-analysis. The results of the study found that there was a notable diversity between clusters in terms of trip purpose, modal split, choice of destination, and occupation. Clustering techniques on all three attributes produced similar results, but clustering based on occupation yielded clusters that differed significantly from those based on other attributes. Applying such pattern recognition models to large and complex activity datasets could help transportation planners better understand the travel needs of segments of the population and formulate more informed strategies that compromise the best practices of sustainable mobility and transit-oriented development. applied separately to uncover patterns of residents’ activity in terms of trip purpose, mode choice and destination. The findings from this research study prove that the above three clustering methods are credible and could provide a better understanding of the residents’ shift pattern. However, the CMeans and Pamk clustering technique show better efficiency and representativeness than the bagged clustering technique. The study clustered a large number of activities collected from travel diaries into meaningful clusters using machine learning techniques to best support the further development of predictive models for diverse elements of the transportation system Travel patterns have been identified which help to develop effective decision support systems in transit-oriented development planning and evaluation of different strategies. The results of the study showed that cluster analysis techniques are mathematically efficient and can classify residents into groups and, therefore, analyze travel behavior. By applying clustering techniques, detailed traveler characteristics
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