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Getting the best of both worlds: a framework for combining disaggregate travel survey data and aggregate mobile phone data for trip generation modelling

机译:获得最佳世界:一个组合分解旅行调查数据的框架和跳闸生成建模的聚合移动电话数据

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Traditional approaches to travel behaviour modelling primarily rely on household travel survey data, which is expensive to collect, resulting in small sample sizes and infrequent updates. Furthermore, such data is prone to reporting errors which can lead to biased parameter estimates and subsequently incorrect predictions. On the other hand, mobile phone call detail records (CDRs), which report the timestamped locations of mobile communication events, have been successfully used in the context of generating travel patterns. However, due to their anonymous nature, such records have not been widely used in developing mathematical models establishing the relationship between the observed travel behaviour and influencing factors such as the attributes of the alternatives and the decision makers. In this paper, we propose a joint modelling framework that utilises the advantages offered by both travel survey data and low-cost CDR data to optimise the prediction capacity of traditional trip generation models. In this regard, we develop a model that jointly explains the reported trips for each individual in the household survey data and ensures that the aggregated zonal trip productions are close to those derived from CDR data. This framework is tested using data from Dhaka. Bangladesh consisting of household survey data (65,419 persons in 16,750 households), mobile phone CDR data (over 600 million records generated by 6.9 million users), and aggregate census data. The model results show that the proposed framework improves the spatial and temporal transferability of the joint models over the base model which relies on household travel survey data alone. This serves as a proof-of-concept that augmenting travel survey data with mobile phone data holds significant promise for the travel behaviour modelling community, not only by saving the cost of data collection, but also improving the prediction capability of the models.
机译:旅行行为建模的传统方法主要依赖于家庭旅游调查数据,这是收集昂贵的,导致小型样本大小和不常见的更新。此外,这些数据容易报告可能导致偏置参数估计和随后不正确的预测的错误。另一方面,在生成旅行模式的上下文中成功地使用了报告移动通信事件的时间戳的时间戳位置的移动电话详细信息记录(CDR)。然而,由于其匿名性质,这种记录尚未广泛用于开发建立观察到的旅行行为与影响因素之间关系的数学模型,例如替代方案的属性和决策者。在本文中,我们提出了一种联合建模框架,利用旅行调查数据和低成本CDR数据提供的优势,以优化传统旅行生成模型的预测能力。在这方面,我们开发了一个模型,该模型共同解释了家庭调查数据中的每个人的报告的旅行,并确保了聚合的区域旅行制作接近来自CDR数据的那些。使用Dhaka的数据测试此框架。孟加拉国由家庭调查数据组成(16,750家户65,419人),手机CDR数据(超过600万令吉产生690万用户),并汇总人口普查数据。模型结果表明,该框架在基础模型上提高了联合模型的空间和时间可转换性,依赖于家庭旅游调查数据。这是一个概念验证,使用移动电话数据增强旅行调查数据对旅行行为建模社区具有重要的承担,而不仅仅是通过节省数据收集的成本,而且还提高了模型的预测能力。

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