基于规则的城市道路使用者出行行为模式预测模型

Prahaladhan Sivalingam, D. Asirvatham, K. Chinna
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引用次数: 0

摘要

世界人口迅速向城市地区迁移,人们更喜欢使用私家车而不是公共交通工具,这导致城市中汽车使用者的数量很大。在马来西亚,大多数与旅行行为相关的研究都是基于传统的数据收集方法,包括面对面的会议和问卷调查。然而,传统的方法导致人为错误,导致数据不准确和错误,从而产生模型。基于调查的数据收集是基于感知的,因为它不包括实际的旅行数据。在本研究中,我们提出了GPS数据采集方法,它代表了道路使用者的实际出行时间。此外,这些方法的准确性有限,而且除了昂贵和对参与者造成负担之外,还需要受访者的一致性。目前的情况需要一个模型,通过智能手机(GPS)应用程序收集数据等先进方法来预测和可视化出行行为。利用出行行为模型、GLT数据、机器学习算法和出行模式等关键词进行了广泛的文献检索,提出了一个可视化和预测模型。该模型以GLT数据和问卷为基础,使用基于规则的算法等数据挖掘技术对GPS数据集获得的原始数据进行预处理,并通过SPSS分析对获得的问卷细节进行验证和验证。所提出的模型的性能将与使用传统方法分析旅客数据的现有模型进行基准测试。这篇概念论文提供了进一步的机会来可视化旅行行为模式及其需求,以帮助政策制定者和路线规划者改善城市生活方式。
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A Travel Behaviour Model To Predict Travel Behaviour Pattern Of Urban Road User Using Rule-Based Approach
World’s population has rapidly migrated to urban areas and prefers to use private cars instead of public transport, which results in high volume of car users in urban cities. In Malaysia, most research related to travel behavior is based on traditional data collection methods which include face-to-face meetings and questionnaires. However, traditional methods lead to human errors ending in inaccurate data as well as false, resulting in models. Survey-based data collection is perception-based as it does not include the actual travel data. In this research, we have proposed GPS method of data collection, which represents the actual travel time of the road user. Moreover, these methods give confined accuracy and necessitate respondent conformity apart from being expensive and a burden towards participants. The current situation mandates a model that predicts and visualizes travel behaviour via advanced methods such as collecting data via smartphone (GPS) applications. An extensive literature search using the keywords travel behaviour model, GLT data, machine learning algorithms and travel patterns was to propose a visualization and prediction model. The proposed model is based on the GLT data and questionnaires which will be preprocessed using data mining techniques such as the rule-based algorithm to study the raw data obtained via GPS dataset and SPSS analysis to verify and validate the questionnaire details obtained. The performance proposed model will be benchmarked with existing models that use traditional methods to analyze data from travelers. This concept paper provides further opportunity to visualize travel behaviour patterns and its demand to assist policymakers and route planners to improve urban lifestyles.
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