2022
DOI: 10.1186/s12544-022-00562-1
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Inference of dynamic origin–destination matrices with trip and transfer status from individual smart card data

Abstract: Background The provision of seamless public transport supply requires a complete understanding of the real traffic dynamics, comprising origin-to-destination multimodal mobility patterns along the transport network. However, most current solutions are centred on the volumetric analysis of passengers’ flows, generally neglecting transfer, walking, and waiting needs, as well as the changes in the mobility patterns with the calendar and user profile. These challenges prevent a comprehensive assess… Show more

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Cited by 9 publications
(4 citation statements)
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References 41 publications
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“…Nonetheless, advancements in monitoring individual movements within a network have allowed for the modeling of dynamic and more precise matrices depicting the state of urban traffic. This is made feasible through sensory data sources like mobile phone records, global positioning system trajectories, and smart card records [39].…”
Section: Trip Distributionmentioning
confidence: 99%
“…Nonetheless, advancements in monitoring individual movements within a network have allowed for the modeling of dynamic and more precise matrices depicting the state of urban traffic. This is made feasible through sensory data sources like mobile phone records, global positioning system trajectories, and smart card records [39].…”
Section: Trip Distributionmentioning
confidence: 99%
“…The neural network has the self-learning ability, the ability to adjust the connection between internal nodes, and the ability of fast adjustment and nonlinear mapping, so it is often combined with PID control. As shown in Figure 1, the PID control structure diagram of BP neural network is shown [7][8].…”
Section: Neural Network Pid Controller Designmentioning
confidence: 99%
“…Multiple contributions on multimodal traffic data analysis have been undertaken in the context of the ILU project, rooted on the interdisciplinary triaxial lens: data science and statistics-urban mobility planning-artificial intelligence. Cerqueira et al [13] proposed an approach for inferring dynamic and multimodal origindestination matrices using bus, tram and subways modes. Approximately 20% of journeys in the Lisbon's transportation network require one or more transfers.…”
Section: Multimodal Analysis Of Massive Traffic Datamentioning
confidence: 99%