With the continuous increasing of urban growth, the definition and application of innovative, sustainable, smart, and green mobility solutions is nowadays of paramount importance. However, what-if analysis for planning and mitigating problems require huge amount of data and precise representation in order to be effective as decision support tools. For this reason, Big Data and IoT/IoE technologies are exploited to collect and manage a large range of mobility and transport information, e.g., traffic to people flow, heatmaps, origin destination, sensor data, and their complex relationships. In this paper a clear model for collecting and producing them in the context of what-if analysis is presented. Analytic processes, based on advanced statistics and artificial intelligence, can provide predictions and simulations to show the impact of specific scenarios on the urban mobility and that have to be represented on the user interface in seamless manner. In addition, in this paper, data handling and analytics to perform 3D City Digital Twin for What-If analysis on the Snap4City platform is described, offering an immediate and realistic visualization to help decision-makers.
Mobility and Transport Data for City Digital Twin Modeling and Exploitation / Bellini, P.; Bilotta, S.; Collini, E.; Fanfani, M.; Nesi, P.. - ELETTRONICO. - (2023), pp. 0-0. (Intervento presentato al convegno 9th IEEE International Smart Cities Conference, ISC2 2023 tenutosi a Bucharest nel 24 - 27 September 2023) [10.1109/isc257844.2023.10293300].
Mobility and Transport Data for City Digital Twin Modeling and Exploitation
Bellini, P.;Bilotta, S.;Collini, E.;Fanfani, M.;Nesi, P.
2023
Abstract
With the continuous increasing of urban growth, the definition and application of innovative, sustainable, smart, and green mobility solutions is nowadays of paramount importance. However, what-if analysis for planning and mitigating problems require huge amount of data and precise representation in order to be effective as decision support tools. For this reason, Big Data and IoT/IoE technologies are exploited to collect and manage a large range of mobility and transport information, e.g., traffic to people flow, heatmaps, origin destination, sensor data, and their complex relationships. In this paper a clear model for collecting and producing them in the context of what-if analysis is presented. Analytic processes, based on advanced statistics and artificial intelligence, can provide predictions and simulations to show the impact of specific scenarios on the urban mobility and that have to be represented on the user interface in seamless manner. In addition, in this paper, data handling and analytics to perform 3D City Digital Twin for What-If analysis on the Snap4City platform is described, offering an immediate and realistic visualization to help decision-makers.I documenti in FLORE sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione.