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Inference of dynamic origin-destination matrices with trip and transfer status from individual smart card data

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dc.contributor.author Cerqueira, S. pt_BR
dc.contributor.author Arsénio, E. pt_BR
dc.contributor.author Henriques, R. pt_BR
dc.date.accessioned 2022-12-13T12:33:44Z pt_BR
dc.date.accessioned 2023-03-03T10:38:17Z
dc.date.available 2022-12-13T12:33:44Z pt_BR
dc.date.available 2023-03-03T10:38:17Z
dc.date.issued 2022-09-13 pt_BR
dc.identifier.citation https://doi.org/10.1186/s12544-022-00562-1 pt_BR
dc.identifier.uri https://repositorio.lnec.pt/jspui/handle/123456789/1015590
dc.description.abstract 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 assessment of the routing and scheduling vulnerabilities of (multimodal) public transport networks. The research presented in this paper aims at addressing the above challenges by proposing a novel approach that extends dynamic Origin-Destination (OD) matrix inference to dynamic OD matrix inference with aggregated statistics, highlighting vulnerabilities and multimodal mobility patterns from individual trip record data. Given specific spatial and temporal criteria, the proposed methodology extends dynamic Origin-Destination (OD) matrices with aggregated statistics, using smart-card validations gathered from (multimodal) public transport networks. More specifically, three major contributions are tackled; i) the data enrichment in the OD matrices with statistical information besides trip volume (e.g., transfer and trip features); ii) the detection of vulnerabilities on the network pertaining to walking distances and trip durations in a user-centric way and iii) the decomposition of traffic flows in accordance with calendrical rules and user (passenger) profiles. The set of contributions are validated on the bus-and-metro public transport network in the city of Lisbon. The proposed approach for inferring OD matrices yields four unique contributions. First, we allow inference to consider multimodal commuting patterns, detecting individual trips undertaken along with different operators. Second, we support dynamic matrices’ OD inference along with parameterizable time intervals and calendrical rules, and further support the decomposition of traffic flows according to the user profile. Third, we allow parameterization of the desirable spatial granularity and visualisation preferences. Fourth, our solution efficiently computes several statistics that support OD matrix analysis, helping with the detection of vulnerabilities throughout the transport network. More specifically, statistical indicators related to travellers’ functional mobility needs (commuters for working purposes, etc.), walking distances and trip durations are supported. The inferred dynamic OD matrices are the outcome of a developed software with strict guarantees of usability. Results from the case study using data gathered from the two main public transport operators (Bus and Metro) in the city of Lisbon show that 77.3% of alighting stops can be estimated with a high confidence degree from bus smart-card data. The inferred OD matrices (Bus and Metro) in the city of Lisbon reveal vulnerabilities along specific OD pairs, offering the bus public operators in Lisbon new knowledge and a means to better understand dynamics and validate OD assumptions. pt_BR
dc.language.iso eng pt_BR
dc.publisher Springer pt_BR
dc.relation DSAIPA/DS/0111/2018 FCT pt_BR
dc.rights openAccess pt_BR
dc.subject Public transport pt_BR
dc.subject Origin-destination matrices pt_BR
dc.subject Multimodality pt_BR
dc.subject Data science pt_BR
dc.subject Big data pt_BR
dc.subject Sustainable mobility pt_BR
dc.title Inference of dynamic origin-destination matrices with trip and transfer status from individual smart card data pt_BR
dc.type article pt_BR
dc.description.pages 18p pt_BR
dc.description.comments Estudo realizado no âmbito do projeto FCT “Integrative Learning from Urban Data and Situational Context for City Mobility Optimization”/ Aprendizagem avançada em dados urbanos com conteúdo situacional para otimização da mobilidade nas cidades, com o apoio da Câmara Municipal de Lisboa, CARRIS e Metro. pt_BR
dc.description.volume 14 pt_BR
dc.description.sector DT/CHEFIA pt_BR
dc.identifier.proc 0701/1101/2160201 pt_BR
dc.description.magazine European Transport Research Review pt_BR
dc.contributor.peer-reviewed SIM pt_BR
dc.contributor.academicresearchers SIM pt_BR
dc.contributor.arquivo SIM pt_BR


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