Cargando…

An IoE and Big Multimedia Data Approach for Urban Transport System Resilience Management in Smart Cities

Today, the complexity of urban systems combined with existing and emerging threats constrains administrations to consider smart technologies and related huge amounts of data generated as a means to take timely and informed decisions. The smart city needs to be prepared for both expected and unexpect...

Descripción completa

Detalles Bibliográficos
Autores principales: Bellini, Emanuele, Bellini, Pierfrancesco, Cenni, Daniele, Nesi, Paolo, Pantaleo, Gianni, Paoli, Irene, Paolucci, Michela
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7827260/
https://www.ncbi.nlm.nih.gov/pubmed/33435451
http://dx.doi.org/10.3390/s21020435
_version_ 1783640719120924672
author Bellini, Emanuele
Bellini, Pierfrancesco
Cenni, Daniele
Nesi, Paolo
Pantaleo, Gianni
Paoli, Irene
Paolucci, Michela
author_facet Bellini, Emanuele
Bellini, Pierfrancesco
Cenni, Daniele
Nesi, Paolo
Pantaleo, Gianni
Paoli, Irene
Paolucci, Michela
author_sort Bellini, Emanuele
collection PubMed
description Today, the complexity of urban systems combined with existing and emerging threats constrains administrations to consider smart technologies and related huge amounts of data generated as a means to take timely and informed decisions. The smart city needs to be prepared for both expected and unexpected situations, and the possibility to mitigate the effect of the uncertainty behind the causes of disruptions through the analysis of all the possible data generated by the city open new possibility for resilience operationalization. This article aims at introducing a new conceptualization for resilience and presenting an innovative full stack solution to exploit Internet of Everything (IoE) and big multimedia data in smart cities to manage resilience of urban transport systems (UTS), which is one of the most critical infrastructures of the city. The approach is based on a novel data driven approach to resilience engineering and functional resonance analysis method (FRAM), to understand and model an UTS in the context of smart cities and to support evidence driven decision making. The paper proposes an architecture taking into account: (a) different kinds of available data generated in the smart city, (b) big data collection and semantic aggregation and enrichment; (c) data sense-making process composed by analytics of different data sources like social media, communication networks, IoT, user behavior; (d) tools for knowledge driven decisions able to combine different information generated by analytics, experience, and structural information of the city into a comprehensive and evidence driven decision model. The solution has been applied in Florence metropolitan city in the context of RESOLUTE H2020 research project of the European Commission.
format Online
Article
Text
id pubmed-7827260
institution National Center for Biotechnology Information
language English
publishDate 2021
publisher MDPI
record_format MEDLINE/PubMed
spelling pubmed-78272602021-01-25 An IoE and Big Multimedia Data Approach for Urban Transport System Resilience Management in Smart Cities Bellini, Emanuele Bellini, Pierfrancesco Cenni, Daniele Nesi, Paolo Pantaleo, Gianni Paoli, Irene Paolucci, Michela Sensors (Basel) Article Today, the complexity of urban systems combined with existing and emerging threats constrains administrations to consider smart technologies and related huge amounts of data generated as a means to take timely and informed decisions. The smart city needs to be prepared for both expected and unexpected situations, and the possibility to mitigate the effect of the uncertainty behind the causes of disruptions through the analysis of all the possible data generated by the city open new possibility for resilience operationalization. This article aims at introducing a new conceptualization for resilience and presenting an innovative full stack solution to exploit Internet of Everything (IoE) and big multimedia data in smart cities to manage resilience of urban transport systems (UTS), which is one of the most critical infrastructures of the city. The approach is based on a novel data driven approach to resilience engineering and functional resonance analysis method (FRAM), to understand and model an UTS in the context of smart cities and to support evidence driven decision making. The paper proposes an architecture taking into account: (a) different kinds of available data generated in the smart city, (b) big data collection and semantic aggregation and enrichment; (c) data sense-making process composed by analytics of different data sources like social media, communication networks, IoT, user behavior; (d) tools for knowledge driven decisions able to combine different information generated by analytics, experience, and structural information of the city into a comprehensive and evidence driven decision model. The solution has been applied in Florence metropolitan city in the context of RESOLUTE H2020 research project of the European Commission. MDPI 2021-01-09 /pmc/articles/PMC7827260/ /pubmed/33435451 http://dx.doi.org/10.3390/s21020435 Text en © 2021 by the authors. Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (http://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Bellini, Emanuele
Bellini, Pierfrancesco
Cenni, Daniele
Nesi, Paolo
Pantaleo, Gianni
Paoli, Irene
Paolucci, Michela
An IoE and Big Multimedia Data Approach for Urban Transport System Resilience Management in Smart Cities
title An IoE and Big Multimedia Data Approach for Urban Transport System Resilience Management in Smart Cities
title_full An IoE and Big Multimedia Data Approach for Urban Transport System Resilience Management in Smart Cities
title_fullStr An IoE and Big Multimedia Data Approach for Urban Transport System Resilience Management in Smart Cities
title_full_unstemmed An IoE and Big Multimedia Data Approach for Urban Transport System Resilience Management in Smart Cities
title_short An IoE and Big Multimedia Data Approach for Urban Transport System Resilience Management in Smart Cities
title_sort ioe and big multimedia data approach for urban transport system resilience management in smart cities
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7827260/
https://www.ncbi.nlm.nih.gov/pubmed/33435451
http://dx.doi.org/10.3390/s21020435
work_keys_str_mv AT belliniemanuele anioeandbigmultimediadataapproachforurbantransportsystemresiliencemanagementinsmartcities
AT bellinipierfrancesco anioeandbigmultimediadataapproachforurbantransportsystemresiliencemanagementinsmartcities
AT cennidaniele anioeandbigmultimediadataapproachforurbantransportsystemresiliencemanagementinsmartcities
AT nesipaolo anioeandbigmultimediadataapproachforurbantransportsystemresiliencemanagementinsmartcities
AT pantaleogianni anioeandbigmultimediadataapproachforurbantransportsystemresiliencemanagementinsmartcities
AT paoliirene anioeandbigmultimediadataapproachforurbantransportsystemresiliencemanagementinsmartcities
AT paoluccimichela anioeandbigmultimediadataapproachforurbantransportsystemresiliencemanagementinsmartcities
AT belliniemanuele ioeandbigmultimediadataapproachforurbantransportsystemresiliencemanagementinsmartcities
AT bellinipierfrancesco ioeandbigmultimediadataapproachforurbantransportsystemresiliencemanagementinsmartcities
AT cennidaniele ioeandbigmultimediadataapproachforurbantransportsystemresiliencemanagementinsmartcities
AT nesipaolo ioeandbigmultimediadataapproachforurbantransportsystemresiliencemanagementinsmartcities
AT pantaleogianni ioeandbigmultimediadataapproachforurbantransportsystemresiliencemanagementinsmartcities
AT paoliirene ioeandbigmultimediadataapproachforurbantransportsystemresiliencemanagementinsmartcities
AT paoluccimichela ioeandbigmultimediadataapproachforurbantransportsystemresiliencemanagementinsmartcities