Criteria for Smart City Identification: A Systematic Literature Review
Abstract
:1. Introduction
2. Materials and Method
2.1. Selection of Search Keywords
2.2. Selection of Search Databases and Definition of Search Parameters
2.3. Building the Initial Search String and Adapting It to Specific Databases
2.4. Conducting the Primary Search and Assessing the Abstract and Full Text for Eligibility
- Studies of longevity and health in SCs;
- Studies of societal inequality in SCs;
- Studies examining logistics and entrepreneurship in SCs;
- Studies of Big Data use in SCs;
- Studies of artificial intelligence (AI) in SCs;
- Studies on data protection and cyber security in SCs;
- Studies of navigation and urban topography;
- Studies of pricing in SCs;
- Studies of smartphone apps;
- Energy studies;
- Studies of social networks in SCs;
- Studies related to the physical parameters of urban space and patterns of land use;
- Studies related to specific ICT technologies, such as data collection, data storage, and data analysis.
2.5. Evaluation of Results
3. Results
3.1. PRISMA Flow Diagram
3.2. Database Split
3.3. Temporal Trends
3.4. Research Fields and Geographic Coverage
3.5. SC Categories and Metrics
4. Discussion
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
Appendix A
№ | Publication | Definition |
---|---|---|
1 | Louise [54] | Mentions that a smart city should “improve quality of life, environmental sustainability, efficient/wise use of resources” (Louise, 2011, [54], p. 2). |
2 | Yamagata and Seya [86] | A future smart city “is to combine appropriate land use (compact city with energy-efficient buildings and photovoltaic panels (PVs)), transportation (electric vehicles (EVs) and public transportation system) and energy systems (smart grid systems), because of the interaction between these elements” (Yamagata and Seya, 2013, [86], p. 1467). |
3 | Lee et al. [55] | The smart city concept “focuses on factors such as human capital and education as drivers of urban growth, rather than singling out the role of ICT infrastructure” (Lee et al., 2013, [55], p. 287). |
4 | Nanni and Mazzini [87] | “Development of value-added services, based on existing services, through the use of new technologies“ (Nanni and Mazzini, 2014, [87], p. 188). |
5 | Lee et al. [56] | Smart cities are “better, more sustainable cities, in which people’s quality of life is higher, their environment more livable and their economic prospects stronger” (Lee et al., 2014, [56], p. 82). |
6 | Ishkineeva et al. [57] | “Smart city is the city where investments in human and social capital and in traditional and modern infrastructure provide sustainable city development and high quality of life with wise use of natural resources and with smart use of the city potential (human, ecological, economic, management, absorption, and marketing) based on the participative management” (Ishkineeva et al., 2015, [57], p. 72). |
7 | Abellá-García et al. [88] | “Smart city is a public-private ecosystem providing services to citizens and their organizations with a strong support of technology” (Abellá-García et al., 2015, [88], p. 1076). |
8 | Marsal-Llacuna et al. [14] | “Smart Cities initiative seeks to improve urban performance by using data, information, and Information Technologies (IT) to provide more efficient services to citizens, to monitor and optimize existing infrastructure, to increase collaboration between different economic actors and to encourage innovative business models in both the private and public sectors” (Marsal-Llacuna et al., 2015, [14], p. 621). |
9 | Regalia et al. [47] | The vision of smart cities as “unifying sensor networks, cyber-infrastructures, interoperability, and predictive analytics research for the purpose of improving the quality of life” (Regalia et al., 2016, [47], p. 383). |
10 | Aelenei et al. [89] | “A Smart City … an answer for improving energy efficiency, human living, and environment, economy, and governance” (Aelenei et al., 2016, [89], p. 970). |
11 | Joshi et al. [90] | “Smart city is a futuristic approach to alleviate obstacles triggered by the ever-increasing population and fast urbanization which is going to benefit the governments as well as the masses” (Joshi et al., 2016, [90], p. 902). |
12 | Navarro [58] | A smart city is “a certain harmony between the quality of human life, economic activity and the exploitation of non-renewable resources, in other words economic, social and environmental sustainability” (Navarro, 2017, [58], p. 273). |
13 | Mundoli et al. [48] | “A smart city with its emphasis on technology is yet another static model of planning, which fails to recognize important aspects of city life especially the diversity of social and ecological relations that urban residents have with different spaces (spatial) in the city over different periods of time (temporal)” (Mundoli et al., 2017, [48], p. 118). |
14 | Stankovic et al. [91] | A smart city “is seen as a holistic process of redesigning urban areas, aimed at achieving sustainable urban growth, efficient service systems and increasing the citizens’ quality of life” (Stankovic et al., 2017, [91], p. 520). |
15 | Sampson [7] | “The “smart cities” movement aims to connect urban transportation, energy, disaster preparedness, health emergency, and other systems of urban service delivery” (Sampson, 2017, [7], p. 8957). |
16 | Aletà et al. [92] | “The Smart City concept differs from the others by emphasizing environmental and social capital and not only technology. It implies the use of ICT to provide sustainable economic development, tools for the judicious management of natural resources, and improvements to our quality of life, and offers an excellent opportunity to manage the urban future” (Aletà et al., 2017, [92], p. 164). |
17 | Afzalan et al. [18] | “Smart city approaches should contribute to innovation and enhance democratic decision making and transparency through public participation” (Afzalan et al., 2017, [18], p. 22). |
18 | Strzelecka et al. [93] | The smart city concept integrates aspects of “water, waste, energy, transport and ICT” (Strzelecka et al., 2017, [93], p. 610). |
19 | Lacinák and Ristvej [94] | “The Smart City by the integration of technology and natural environment increases the effectiveness of processes in every field of its functioning, in order to achieve sustainable development, safety and health of inhabitants with the aim for increasing the quality of life of citizens, near community and environment” (Lacinák and Ristvej, 2017, [94], p. 523). |
20 | Girardi and Temporelli [49] | “A smart city can be defined as a city able to facilitate and satisfy citizens, companies and organization needs, by an integrated and original use of Information and Communication Technologies (ICT), especially in communication, mobility, environment and energy efficiency fields” (Girardi and Temporelli, 2017, [49], p. 811). |
21 | Hassan and Awad, [50] | Smart cities are “places that depend on certain digital devices to facilitate city work” (Hassan and Awad, 2018, [50], p. 36435). |
22 | Nayak [95] | “A city that provides mobility, health, safety and productivity is important, but alongside sustainability must be taken into consideration” (Nayak, 2018, [95], p. 616). |
23 | Grubesa et al. [96] | Smart city “development provides added value of existing public services and improves the quality of citizens’ lives” (Grubesa et al., 2018, [96], p. 286). |
24 | Zaree and Honarvar et al. [97] | Smart cities are “promising solutions to future challenges for providing better services to all citizens and improving efficiency” (Zaree and Honarvar et al., 2018, [97], p. 1302). |
25 | Santos et al. [59] | Smart cities aim at improving “citizens’ quality of life by leveraging information about urban scale processes extracted from heterogeneous data sources collected on citywide deployments” (Santos et al., 2018, [59], p. 523). |
26 | Malik et al. [51] | “The term smart city comes from tasks involving ubiquitous and persistent computing with the use of digital devices planted and distributed in the environment of the city” (Malik et al., 2018, [51], p. 548) |
27 | Voda and Radu [52] | “Smart cities are urban regions very advanced in terms of technology, where people and organizations are ultra-connected” (Voda and Radu, 2018, [52], p. 110). |
28 | Honarvar and Sami [98] | A smart city is “a place, which integrates multiple technological solutions to manage the city assets” (Honarvar and Sami, 2019, [98], p. 56) |
29 | Solanki et al. [99] | “The term ‘smart’ city is given to a city that incorporates technology to make the lives of people living in the city better in terms of healthcare, transportation, urban governance, and waste management” (Solanki et al., 2019, [99], p. 718). |
30 | Patel and Doshi [60] | “A smart city is comprised of different viewpoints that incorporate residents, city authorities, nearby organizations and businesses and local gatherings” (Patel and Doshi, 2019, [60], p. 693). |
31 | Praharaj and Han [100] | “[T]he smart city is a part of contemporary language games around urban management and development that involves professionals, marketing authorities, consultants and so on” (Praharaj and Han, 2019, [100], p. 2). |
32 | Mark and Anya [24] | “A smart city is typically a city grounded on a drive towards technological innovation to improve the lives of city-dwellers” (Mark and Anya, 2019, [24], p. 3). |
33 | Dameri et al. [101] | “Smart city concept puts under the same umbrella several aspects of the urban strategies, such as the technological basis, the role of people in building smart communities, the aim of sustainable economic growth, the importance of the environmental preservation, and the final goal to deliver better quality of life” (Dameri et al., 2019, [101], p. 27). |
34 | Wang and Kong [102] | A smart city “is a good intelligent response to the needs of people’s livelihoods, environmental protection, public safety, etc.” (Wang and Kong, 2019, [102], p. 172892). |
35 | Ruohomaa et al. [103] | “The smart city concept brings together technology, government, and different layers of society, utilizing technological enablers, such as the internet of things (IoT) and artificial intelligence (AI). These enablers, in turn, facilitate development of various aspects of the smart city, including, e.g., transportation, governance, education, safety and communications” (Ruohomaa et al., 2019, [103], p. 5). |
36 | Trencher [61] | “Smart Cities 2.0 strategies … put people first and stresses technology as a tool to use predominantly in service of citizens” (Trencher, 2019, [61], p. 118). |
37 | Ameer et al. [16] | “A smart city is an urban municipality that utilizes information and communication technologies (ICT) to provide better health, transport and energy related facilities to its citizens and enables the government to make efficient use of its available resources, for the welfare of their people” (Ameer et al., 2019, [16], p. 325). |
38 | Haarstad and Wathne [104] | The smart city “consists of both a technological aspect as well as a managerial side and can potentially include an infinite number of policies, innovations, and targets” (Haarstad and Wathne, 2019, [104], p. 919). |
39 | Nagy et al. [62] | Smart cities “contribute to improving living standards, increasing urban competitiveness and overcoming obstacles such as poverty, social exclusion or environmental problems” (Nagy et al., 2019, [62], p. 93). |
40 | Barba-Sánchez et al. [105] | “A smart city is a concept that positively affects the development and growth of a city” (Barba-Sánchez et al., 2019, [105], p. 9). |
41 | Estrada et al. [53] | “Smart Cities concept is based on the use of information and communication technologies … in order to face the problems of diverse metropolises, such as reducing energy consumption or the negative impact of the city on the environment, the concept of Smart Cities has gained notoriety” (Estrada et al., 2019, [53], p. 1). |
Appendix B
Database Name | Suggested Query Strings for Search | № of Results |
---|---|---|
Scopus | TITLE-ABS-KEY (City OR “Urban area*” OR Settlement* OR “Urban region*” OR Metropoli* OR Township*) AND (Smart OR Sustainable OR Green) AND (Criteri* OR Measure* OR Index* OR Metric* OR Parameter*) AND NOT (Biodiversity OR Ecology OR Culture* OR Nation* OR Illumin* OR Polic* OR Design* OR Management OR Health OR Climate OR Educat*) AND DOCTYPE (ar OR re) AND (PUBYEAR > 1999 AND PUBYEAR < 2019) AND (LIMITTO (LANGUAGE,“English”)) | 2140 |
Web of Science Core Collections | #1 (TS = (City OR “Urban area*” OR Settlement* OR “Urban region*” OR Metropoli* OR Township*)) AND LANGUAGE: (English) AND DOCUMENT TYPES: (Article) #2 (TS=(Smart OR Sustainable OR Green)) AND LANGUAGE: (English) AND DOCUMENT TYPES: (Article) #3 #2 AND #1 #4 (TS = (Criteri* OR Measure* OR Index* OR Metric* OR Parameter*)) AND LANGUAGE: (English) AND DOCUMENT TYPES: (Article) #5 #4 AND #3 #6 (TS=(Biodiversity OR Ecology OR Culture* OR Nation* OR Polic* OR Design* OR Management OR Health OR Climate OR Educat*)) AND LANGUAGE: (English) AND DOCUMENT TYPES: (Article) #7 (#5 NOT #6) AND LANGUAGE: (English) AND DOCUMENT TYPES: (Article) | 2127 |
ScienceDirect | Find articles with these terms: (Smart OR Green OR Sustainable) AND (Criteria OR Measure OR Index OR Metric OR Parameter) | 3880 |
Year: 1999–2019 | ||
Title, abstract, keywords: NOT (Ecology OR Culture OR Nation OR Policy OR Design OR Management OR Health OR Climate) | ||
Title: (City OR “Urban area” OR Settlement OR “Urban region” OR Metropolitan OR Township) | ||
Article types: Review articles, Research articles |
Appendix C
Subgroup | Reference, Year | Focus | Keywords |
---|---|---|---|
Smart technology | Nanni and Mazzini, 2014 [87]; Ishkineeva et al., 2015 [57]; Nayak, 2018 [95]; Grubesa et al., 2018 [96]; Akande et al., 2019 [106]; Ameer et al., 2019 [16]; Yamauchi et al., 2014 [107]; Lin et al., 2019 [20]; Mundoli et al., 2017 [48]; Ruohomaa et al., 2019 [103]; Hassan and Awad, 2018 [50]; Praharaj and Han, 2019 [100]; Dameri et al., 2019 [101]; Trencher, 2019 [61]; Lee et al., 2014 [56]; Navarro, 2017 [58]; Patel and Doshi, 2019 [60]; Aletà et al., 2017 [92]; Jamil et al., 2015 [108]; Solanki et al., 2019 [99]; Alvarez-Campana et al., 2017 [109]; Santos et al., 2019 [15]; Zaree and Honarvar et al., 2018 [97]; Stankovic et al., 2017 [91]; Wang and Kong, 2019 [102]; Santos et al., 2018 [59]; Estrada et al., 2019 [53]; Malik et al., 2018 [51]; Lee et al., 2013 [55]; Haarstad and Wathne, 2019 [104]; Voda and Radu, 2018 [52]; Afzalan et al., 2017 [18]; Joshi et al., 2016 [90]; Mark and Anya, 2019 [24]; Sahu et al., 2019 [110]; Strzelecka et al., 2017 [93]; Kairui, 2018 [111]; Marsal-Llacuna et al., 2015 [14]; Walravens and Ballon, 2013 [112]; Barba-Sánchez et al., 2019 [105]; Lacinák and Ristvej, 2017 [94]; Girardi and Temporelli, 2017 [49]; Abellá-García et al., 2015 [88] | ICT, sensors, infrastructure, new technology, open data, artificial intelligence (AI), the internet of things (IoT), machine learning, smart building, big data, road mapping, smartphone app | city; urban area*; settlement*; urban region*; metropoli*; township*; smart; sustainable; criteria*; measure*; index*; metric*; parameter* |
Environmental sustainability | Ishkineeva et al., 2015 [57]; Louise, 2011 [54]; Akande et al., 2019 [106]; Honarvar and Sami, 2019 [98]; Dameri et al., 2019 [101]; Lee et al., 2014 [56]; Navarro, 2017 [58]; Aletà et al., 2017 [92]; Aelenei et al., 2016 [89]; Solanki et al., 2019 [99]; Yamagata and Seya, 2013 [86]; Alvarez-Campana et al., 2017 [109]; Santos et al., 2019 [15]; Zaree and Honarvar et al., 2018 [97]; Sampson, 2017 [7]; Stankovic et al., 2017 [91]; Wang and Kong, 2019 [102]; Estrada et al., 2019 [53]; Joshi et al., 2016 [90]; Sahu et al., 2019 [110]; Kairui, 2018 [111]; Nagy et al., 2019 [62]; Lacinák and Ristvej, 2017 [94]; Girardi and Temporelli, 2017 [49] | Sustainability, ecology, environmental preservation, environment, pollution, monitoring | city; urban area*; settlement*; urban region*; metropoli*; township*; smart; sustainable; green; criteria*; measure*; index*; metric*; parameter* |
Social capital | Ishkineeva et al., 2015 [57]; Nayak, 2018 [95]; Yamauchi et al., 2014 [107]; Mundoli et al., 2017 [48]; Honarvar and Sami, 2019 [98]; Praharaj and Han, 2019 [100]; Dameri et al., 2019 [101]; Trencher, 2019 [61]; Navarro, 2017 [58]; Patel and Doshi, 2019 [60]; Aletà et al., 2017 [92]; Zaree and Honarvar et al., 2018 [97]; Manchester and Cope, 2019 [19]; Stankovic et al., 2017 [91]; Lee et al., 2013 [55]; Voda and Radu, 2018 [52]; Joshi et al., 2016 [90]; Kairui, 2018 [111]; Walravens and Ballon, 2013 [112]; Barba-Sánchez et al., 2019 [105]; Lacinák and Ristvej, 2017 [94] | Education, society, investments in human and social capital, citizen needs | city; urban area*; settlement*; urban region*; metropoli*; township*; smart; sustainable; criteria*; measure*; index*; metric*; parameter* |
Smart government | Ishkineeva et al., 2015 [57]; Nayak, 2018 [95]; Ameer et al., 2019 [16]; Ruohomaa et al., 2019 [103]; Honarvar and Sami, 2019 [98]; Dameri et al., 2019 [101]; Patel and Doshi, 2019 [60]; Aletà et al., 2017 [92]; Aelenei et al., 2016 [89]; Solanki et al., 2019 [99]; Santos et al., 2019 [15]; Stankovic et al., 2017 [91]; Malik et al., 2018 [51]; Haarstad and Wathne, 2019 [104]; Afzalan et al., 2017 [18]; Joshi et al., 2016 [90]; Kairui, 2018 [111]; Barba-Sánchez et al., 2019 [105]; Lacinák and Ristvej, 2017 [94] | E-government, e-services, digital services, safety features, tracking, management, smart government, public amenities, corruption. | city; urban area*; settlement*; urban region*; metropoli*; township*; smart; sustainable; criteria*; measure*; index*; metric*; parameter* |
Economy | Ishkineeva et al., 2015 [57]; Ameer et al., 2019 [16]; Lin et al., 2019 [20]; Mundoli et al., 2017 [48]; Ruohomaa et al., 2019 [103]; Honarvar and Sami, 2019 [98]; Dameri et al., 2019 [101]; Trencher, 2019 [61]; Lee et al., 2014 [56]; Navarro, 2017 [58]; Aletà et al., 2017 [92]; Aelenei et al., 2016 [89]; Zaree and Honarvar et al., 2018 [97]; Sampson, 2017 [7]; Stankovic et al., 2017 [91]; Joshi et al., 2016 [90]; Kairui, 2018 [111]; Marsal-Llacuna et al., 2015 [14]; Barba-Sánchez et al., 2019 [105]; Lacinák and Ristvej, 2017 [94]; Girardi and Temporelli, 2017 [49]; Abellá-García et al., 2015 [88] | Sustainable city development, economy, production, welfare, economic prospects, employment, finance, income. | city; urban area*; settlement*; urban region*; metropoli*; township*; smart; sustainable; criteria*; measure*; index*; metric*; parameter* |
Quality of life | Nanni and Mazzini, 2014 [87]; Ishkineeva et al., 2015 [57]; Nayak, 2018 [95]; Louise, 2011 [54]; Grubesa et al., 2018 [96]; Ameer et al., 2019 [16]; Lin et al., 2019 [20]; Praharaj and Han, 2019 [100]; Dameri et al., 2019 [101]; Lee et al., 2014 [56]; Patel and Doshi, 2019 [60]; Aletà et al., 2017 [92]; Jamil et al., 2015 [108]; Aelenei et al., 2016 [89]; Solanki et al., 2019 [99]; Alvarez-Campana et al., 2017 [109]; Zaree and Honarvar et al., 2018 [97]; Manchester and Cope, 2019 [19]; Stankovic et al., 2017 [91]; Santos et al., 2018 [59]; Estrada et al., 2019 [53]; Lee et al., 2013 [55]; Mark and Anya, 2019 [24]; Sahu et al., 2019 [110]; Kairui, 2018 [111]; Marsal-Llacuna et al., 2015 [14]; Walravens and Ballon, 2013 [112]; Nagy et al., 2019 [62]; Barba-Sánchez et al., 2019 [105]; Lacinák and Ristvej, 2017 [94]; Girardi and Temporelli, 2017 [49]; Abellá-García et al., 2015 [88] | Civil society, safe city, high quality of life, smart health, smart transportation, citizen needs, smart mobility, public outdoor recreation spaces, life expectancy, social inequality. | city; urban area*; settlement*; urban region*; metropoli*; township*; smart; sustainable; green; criteria*; measure*; index*; metric*; parameter* |
Competitiveness | Nanni and Mazzini, 2014 [87]; Ishkineeva et al., 2015 [57]; Ruohomaa et al., 2019 [103]; Honarvar and Sami, 2019 [98]; Santos et al., 2019 [15]; Zaree and Honarvar et al., 2018 [97]; Manchester and Cope, 2019 [19]; Stankovic et al., 2017 [91]; Marsal-Llacuna et al., 2015 [14]; Walravens and Ballon, 2013 [112]; Nagy et al., 2019 [62]; | Economic development, smart manufacturing, economic prospects. | city; urban area*; settlement*; urban region*; metropoli*; township*; smart; sustainable; criteria*; measure*; index*; metric*; parameter* |
Resource saving | Ishkineeva et al., 2015 [57]; Nayak, 2018 [95]; Louise, 2011 [54]; Regalia et al., 2016 [47]; Ameer et al., 2019 [16]; Patel and Doshi, 2019 [60]; Aelenei et al., 2016 [89]; Yamagata and Seya, 2013 [86]; Alvarez-Campana et al., 2017 [109]; Strzelecka et al., 2017 [93]; Walravens and Ballon, 2013 [112]; Lacinák and Ristvej, 2017 [94]; Girardi and Temporelli, 2017 [49] | Smart use of resources, smart energy, availability of resources, waste management. | city; urban area*; settlement*; urban region*; metropoli*; township*; smart; sustainable; green; criteria*; measure*; index*; metric*; parameter* |
Recreation and leisure | Ishkineeva et al., 2015 [57]; Patel and Doshi, 2019 [60]; Lacinák and Ristvej, 2017 [94] | Leisure, recreation, society, quality of life. | city; urban area*; settlement*; urban region*; metropoli*; township*; smart; sustainable; green; criteria*; measure*; index*; metric*; parameter* |
Appendix D
№ | Publication | Topic | Data Sources | Assessment Criteria | Main Results |
---|---|---|---|---|---|
1 | Louise [54] | Smartening up the city | Data on Cagne-sur-mer, France (“A Smart City initiative” of PACA France Telecom-Orange, 2007–2011) | Smart cities concept, energy costs, CO2, NO2, and SO2 | As a result of the Smart City initiative focusing on setting up a data sensor collection network, local authorities expect to see a 20–30% reduction in energy costs, a 20–40% reduction in greenhouse gas emissions, and 20–40% energy savings on heating bills for public buildings. |
2 | Yamagata and Seya [86] | Simulating a future smart city | Data on the Tokyo metropolitan area (Japan), 2005 (Ministry of Land, Infrastructure, Transport and Tourism; Ministry of International Affairs and Communications; National Tax Agency) | Smart city, income, number of populations, land rent, land area | The concept of the “compact” urban form created for the smart city Tokyo is presented, which may contribute to a reduction in electricity demand and a reduction in CO2 emissions from the residential sector compared with normal “dispersion”. |
3 | Lee et al. [55] | Smart city development | Data on Smart City R&D project (South Korea), 2008 and 2013 (Korean Ministry of Construction and Transport) | Smart city, smart service, smart technology, roadmapping | A national roadmap for smart cities considering convergence of technology, devices, and services was presented; “different types of roadmap can be coordinated with each other to produce a clear representation of the technological changes and uncertainties.” (Lee et al., 2013, [55], p. 286). |
4 | Walravens and Ballon [112] | Platform Business Models for Smart Cities | Data on mobile services of smart cities worldwide (NYC311; Fixmystreet; Pulsepoint; Apps for Amsterdam; App Van’t Stad; London Bike App; Visit Brussels) | Smart city, digital services, business models | “The analysis of platform business models (mobile services) that involve public actors, and city governments in particular, in the value network”, was presented; These models are “important elements in a local government’s Smart city strategy as tools to help reach certain policy goals.” (Walravens and Ballon, 2013, [112], pp. 72, 78). |
5 | Lee et al. [56] | Towards an effective framework for building smart cities | Data on Seoul metropolitan area (Republic of Korea) and San Francisco City (USA), 2011–2012 (Interviews based in “City Hall”, media reports, relevant smart city project reports, smart-city-related international conference presentations, and city web pages) | City transformation, smart city, quality of life | “A smart city aims to resolve various urban problems (public service unavailability or shortages, traffic, environmental or sanitation shortcomings and other forms of inequality) through ICT-based technology connected up as urban infrastructure.” Smart cities are “creating a better, more sustainable city, in which people’s quality of life is higher, their environment more livable and their economic prospects stronger.” (Lee et al., 2014, [56], p. 82). |
6 | Nanni and Mazzini [87] | Pollution monitoring using the SensorNet system | Data on Emilia and Romagna region, Italy (“Telematic Regional Planning Framework 2011–2013”, SensorNet project) | Smart cities, environment monitoring (without determining the type of pollution) | The proposed system allows for merging different environmental monitoring tools using technology which is independent of the data transmission type. The system can thus form a basis for a smart city or smart community. |
7 | Yamauchi et al. [107] | Quantitative evaluation method regarding the value and environmental impact of cities | Data on the representative city in Japan (City A) with a population of 1.5 million | Smart city, CO2 | Was developed “a quantitative evaluation method (of the environmental impact of cities) focusing on the efficiency of a city (degree of smartness) and the effect that ICT has on a city”; “ICT not only reduces the environmental impact of a city but also improves its value.” (Yamauchi et al., 2014, [107], pp. 112, 119). |
8 | Ishkineeva et al. [57] | Major approaches towards understanding the smart cities concept | Laws and regulations on the use of information and communication technologies; data from periodical press | Smart cities concept | The smart city is defined as a partnership between the state and the private sector which is economically efficient in terms of new workplaces created, improving ecology, and decreasing energy waste. |
9 | Marsal-Llacuna et al. [14] | Urban monitoring to better address the Smart Cities initiative | Data on Barcelona city (Spain), 1999–2009 (Barcelona Local Agenda 21) | Smart city, urban indicators | The process of monitoring the Smart Cities initiative was presented—creating “a final index summarizing Smart Cities’ real-time set of indicators”. Using a final index can make it possible “to easily visualize a city’s steps towards “smartness”.” (Marsal-Llacuna et al., 2015, [14], pp. 611, 612). |
10 | Abellá-García et al. [88] | The Ecosystem of Services Around Smart Cities | Data from the EU “MEPSIR” final report on the exploitation of public sector information (2006) | Smart city, open data, apps | Smart cities data-driven ecosystems were explored: “Open collaboration between ecosystem’s actors (citizens, businesses, organizations, and the city managers) allows the development of new data-driven services; data of interest for the ecosystem’s actors is key for the reusability of the released information and could condition the degree of citizens final satisfaction.” (Abellá-García et al., 2015, [88], p. 1075). |
11 | Jamil et al. [108] | Smart Environment Monitoring System by Employing Wireless Sensor Networks on Vehicles | Data on industrial cities in Pakistan (Zigbee-based wireless sensor networks deployed on public transport vehicles) | Smart city, smoke, carbon oxides and other gases in the environment which cause air pollution | The model for evaluating indoor and outdoor hazardous gases was developed using wireless sensor networks; sensor nodes can directly communicate with the moving nodes deployed on public vehicles; the records can be read in the web application. |
12 | Regalia et al. [47] | Crowdsensing smart ambient environments and services | Data from the citizens-as-sensors platform (ambient mobile sensor readings from a network of volunteers) | Smart cities, humidity, illuminance, temperature, magnetic, pressure, and audio | A crowdsensing mobile-device platform (GeoTracer app) was developed that “empowers citizens to collect and share information about their surrounding environment via embedded sensor technologies”; the data can be read in either the web application or the mobile phone application (Regalia et al., 2016, [47], p. 382). |
13 | Aelenei et al. [89] | Smart City: Urban Transformation | Data on Lisbon city, Portugal (an MIT–Portugal research project “Suscity Project”; HOBO and Testo sensors; Chauvin Arnoux air quality meter) | Smart city, indoor temperature, relative humidity, CO2 emissions | The monitoring of houses as part of a smart buildings solution is one of the tasks presented in the SusCity project (project regarding urban transformation needs towards a smart city model); a sensor network was developed to measure indoor CO2 concentrations, temperature, and humidity in a real-time mode. |
14 | Joshi et al. [90] | Developing Smart Cities: An Integrated Framework | Data from research in public governance, information technology, e-governance, 2000–2013 | Smart cities, conceptual framework | Various aspects and dimensions of the concept of smart cities and its implementation were explored. The Sc framework (SMELTS) was developed which “would help better understand smart city initiatives, provide a managerial purview to the same” as well as help in reducing manpower for the long term. (Joshi et al., 2016, [90], p. 908). |
15 | Navarro [58] | The effect of ICT use and capability on knowledge-based cities | Data on 158 European cities (Eurostat’s Urban Audit database for 2009–2011) | Smart cities concept, ICT, quality of life | “The use and application of ICTs help provide citizens with an infrastructure that allows for an improvement in their quality of life, sustainable growth and efficient use of resources.” In other words, the concept of a “Smart City”—“a certain harmony between the quality of human life, economic activity and the exploitation of non-renewable resources.” (Navarro, 2017, [58], pp. 272, 273). |
16 | Mundoli et al. [48] | Urban ecosystems in smart cities | Data on Bengaluru city, India (Results of observations, interviews, and fieldwork carried out by the author from 2013 to 2015) | Smart city, environmental conditions | “A smart city with its emphasis on technology is a static model of planning” which ignores key elements of the environment. “It fails to recognize the diversity of social and ecological relations that urban residents have with different spaces (spatial) in the city over different periods of time (temporal).” (Mundoli et al., 2017, [48], p. 118). |
17 | Aletà et al. [92] | Smart Mobility and Smart Environment in the Spanish cities | Data on 62 Spanish Smart Cities (“Holistic Concept of Spanish Smart Cities Network”, 2015; “+CITIES” project and Competitiveness State Plan for Scientific and Technical Research and Innovation 2013–2016) | Smart city clusters | “Smart City projects are classified according to six axes: Mobility, Environment, Government, Economy, People and Living”. “Mobility and environmental issues, as two of the fundamental axes of Smart City development”. “Spanish smart cities have good results for mobility and quality-of-life factors, which people see as key aspects in a city. However, environment results require improvement.” (Aletà et al., 2017, [92], pp. 163, 169). |
18 | Stankovic et al. [91] | Evaluation of the European cities’ smart performance | Data on 23 Central and Eastern European cities, 2015 (EUROSTAT and the perception survey “How citizens perceive the quality of life in their home cities”) | Smart city, smart performance, quality of life | The comparison of QoL rankings (“regarding economic, social, political, or environmental aspects”) obtained by the constructed multi-criteria model indicates a rather weak relationship between quality of life and smart performance (Stankovic et al., 2017, [91], p. 539). |
19 | Sampson [7] | Urban sustainability | Data on three American cities—Boston, Chicago, and Los Angeles (community surveys, Google Street View, network analysis of community leaders and organizations, newspaper coding of collective civic events, and “lost letter” field experiments; archival records on crime, violence, health, community organizations, and population characteristics) | Smart city, well-being, inequality | “The explosion of Big Data and real-time monitoring devices are major features to enhance ecological challenges”. Smart cities are “integrating environmental sustainability with the promotion of human welfare, or social sustainability” (human well-being and environmental outcomes are “intertwined”) (Sampson, 2017, [7], p. 8957). |
20 | Alvarez-Campana et al. [109] | Smart CEI Moncloa: An IoT-based Platform for Environmental Monitoring | Data of sensor network based on the Smart Citizen Kit of Smart CEI Moncloa platform (Arduino motherboard including an array of sensors) | Smart city, temperature, humidity, light, noise, CO, and NO2 | The IoT-based Smart CEI Moncloa platform, integrated into the metropolis of Madrid, was presented. The platform offers service environmental monitoring by indoor and outdoor sensor networks; the data can be read in real-time mode. |
21 | Afzalan et al. [18] | Creating smarter cities | Data from theories of planning, organization, and information science | Smart cities, online participatory tools | “Various factors that cities and planning organizations should consider in deciding upon new online participatory tools was discussed”; “Slowing down and taking time to evaluate the planning context help cities with making more appropriate decisions in choosing”; “Smarter cities should adopt new technologies”, considering the capacities and needs of communities. (Afzalan et al., 2017, [18], pp. 21, 27). |
22 | Strzelecka et al. [93] | Integrating Water, Waste, Energy, Transport, and ICT Aspects into the Smart City Concept | Data on Leicester city (Great Britain), 2016 (Leicestershire City Council, EU BlueSCities project) | Smart city, trends and indicators for Leicester city | Partial results of the EU BlueSCities project were presented. Within the framework of the project and the concept of “Smart cities and communities”, a methodology for the integration of the water and waste sectors as well as the City Amberprint Framework for energy, transport, and ICT. |
23 | Lacinák and Ristvej [94] | Smart City, Safety and Security | Data from the Ministry of Environment of the Slovak Republic, Centre of Regional Science and European Commission (2016) | Smart city, safe city | Several ideas on how to define the concept of a Smart City was proposed. The main focus was on the question of safety and security in Smart cities. The definition of a Safe City was introduced. |
24 | Girardi and Temporelli [49] | A Methodology for Assessing the Sustainability of the Smart City | Data on Milan city (Italia), 2015 (Ricerca sul Sistema Energetico—RSE SpA; Expo Milano 2015) | Smart city, performance Indicators | A new methodological approach (Smartainability) for assessing the development of smart cities is presented. This methodology can provide decision makers with useful information about the benefits of implementing smart solutions (benefits are quantified; metrics are assessed before technology or solutions are introduced; benefits are associated with technology or solutions deployment). |
25 | Nayak [95] | Around-the-clock vehicle emission IoT monitoring system suitable for smart cities | Data from the 24/7 Vehicle Emissions Sensing System with an HC–CO (hydro carbon–carbon monoxide) tester. | Smart cities concept, carbon Monoxide (CO) | The prototype device is connected to the exhaust of a vehicle and the data collected are transferred to the cloud, helping to constantly monitor carbon emissions from the vehicle. The prototype can track the emission and warns the vehicle owner about timely performance of vehicle maintenance. |
26 | Santos et al. [59] | PortoLivingLab: An IoT-Based Sensing Platform for Smart Cities | Data on Porto city (Portugal), 2014–2016 (PortoLivingLab Smart Platform with UrbanSense sensors) | Smart city, O3, CO, NO2, humidity, and temperature | The PortoLivingLab platform was presented which “leverages IoT technology to achieve city-scale sensing of four phenomena: weather, environment, public transport, and people flow. The data is collected in a common backend”. “Received data is made publicly available in real-time.” (Santos et al., 2018, [59], pp. 523, 525). |
27 | Voda and Radu [52] | Artificial Intelligence and the Future of Smart Cities | Data on online survey “Importance and Benefits of AI” (112 respondents, during August to November 2017) | Smart cities, artificial intelligence | The public attitude regarding the influence of AI on smart city characteristics was analysed; respondents perceive AI as an important aspect that influences smart city development; gender and age group also influence public attitudes. |
28 | Grubesa et al. [96] | Mobile crowdsensing accuracy for noise mapping in smart cities | Data on Zagreb city (Croatia), 2017 (B&K 2250 sound level meter, iPhone 6S, and the MCS smartphone application) | Smart cities, noise pollution | The Mobile Crowdsensing measurement method of cities noise pollution (based on MCS application) is developed; it “can make noise mapping easier, cheaper and less time-consuming in terms of creating representative noise maps”; “citizens can engage in noise monitoring in urban areas and become aware of the noise pollution in their cities.” (Grubesa et al., 2018, [96], p. 286). |
29 | Zaree and Honarvar et al. [97] | Improvement of air pollution prediction in a smart city using metrological big data | Data on Brasov city in Romania (CityPulse open dataset) | Smart city, O3, PM2,5, PM10, CO, SO2, NO2, longitude, latitude, timestamp, humidity, wind speed, temperature, and air pressure | “A K-means clustering algorithm using the Mahout library is used as a big data mining tool”. Results “indicate the high efficiency and accuracy of the proposed method in predicting”; “the proposed method is applied in large cities to find polluted and cleanest areas in real-time” and which improves citizens’ quality of life (Zaree and Honarvar et al., 2018, [97], pp. 1302, 1312). |
30 | Malik et al. [51] | A methodology for real-time data sustainability in smart city | Data on the cities of Aarhus (Denmark) and Brasov (Romania), 2014 (weather IoT sensors of CityPulse) | Smart city, dew point, humidity, pressure, temperature, wind direction, and wind speed | Automated system monitoring and data modeling for a smart city was presented; information is colected from smart city sensors and transformed through data modeling into RDF and JSON data forms. Received data is made publicly available in real time. |
31 | Hassan and Awad [50] | Urban Transition in the Era of the Internet of Things | Data of the Hwaseong Dongtan project, the Republic of Korea (64 cities throughout Korea) | Smart city, IoT, ICT, quality of life | The U-city concept of a smart city “that operates based on ICTs embedded in the urban design” is described; “any citizen can use any service anywhere and anytime through ICT devices.” ICT provides “residents with high-quality environmental resources and saves energy using automatic water and air pollution monitoring systems”; it also reduces greenhouse gas emissions and generally improves the quality of life (Hassan and Awad, 2018, [50], p. 36430). |
32 | Kairui [111] | Intelligent evaluation approach for smart city based on DEA model | Data on Wuhan city (China), 2013 to 2016 (China Statistical Yearbook, China City Statistical Yearbook, China Statistical Yearbook on Science and Technology, Hubei Statistical Yearbook, and Wuhan Statistical Yearbook; Wuhan Municipal Government) | Smart city, evaluation index system, Malmquist productivity index | Evaluation index system of input–output of Smart City was established and presented, with the aim of intelligently evaluating research on the efficiency of construction and the work effectiveness of the government and the whole society in building a smart city in Wuhan. |
33 | Trencher [61] | Towards the smart city 2.0: using smartness as a tool for tackling social challenges | Data on Aizuwakamatsu Smart City (Japan), 2015–2017 (12 semi-structured interviews (involving 17 respondents); internal project documentation, media and think-tank reports, scholarly articles, and symposium presentation materials) | Smart city | “The first-generation of smart cities fail to advance social agendas and address resident needs”; the second-generation smart cities is “people-centric, using technologies to tackle social problems and resident needs.” (Trencher, 2019, [61], p. 117). |
34 | Akande et al. [106] | Assessing the Gap between Technology and the Environmental Sustainability of European Cities | Data on 129 EU cities (Organization for Economic Co-operation and Development, International Telecommunications Union, and Eurostat) | Smart city, CO2, two-dimensional ICT index | A single two-dimensional ICT index was developed; “there are four groups of cities with similar ICT (an indicator of smartness) and different CO2 levels (indicator of sustainability) characteristics”, i.e., it is possible for a city to be smart but not sustainable and vice versa. (Akande et al., 2019, [106], p. 596). |
35 | Solanki et al. [99] | Smart cities-A case study of Porto and Ahmedabad | Data on Porto and Ahmedabad cities (The GrowSmarter project; the URBACT program; the FIWARE community; Smartnet; MC Ahmedabad; SmartCitiesWorld’s mission) | Smart city, ICT, quality of life | “Both Porto and Ahmedabad are developing cities facing challenges like pollution, waste treatment, congestion, and traffic. The solutions to these problems can be provided with the help of smart cities”. “With smart cities (ICT), can get less traffic and reduce pollution which would lead to an increase in the overall quality of life of residents.” (Solanki et al., 2019, [99], p. 721). |
36 | Lin et al. [20] | Smart City Development and Well-Being | Data on 220 new smart cities in China, 2018 (Questionnaire survey data from 247 residents in China’s smart cities) | Smart city, well-being | The development of smart cities “pays attention to the general needs of urban residents and also satisfies their personalized needs”, which is improving the well-being of smart cities; “usefulness and convenience experiences of obtaining information, services and networks in smart cities all have positive impacts on subjective well-being” (Lin et al., 2019, [20], pp. 1,12). |
37 | Ameer et al. [16] | Predicting Air Quality in Smart Cities | Data on Guangzhou, Chengdu, Beijing, Shanghai, and Shenyang cities (China), 2010 to 2015 (Statistical Yearbooks of individual cities) | Smart cities concept, PM2,5, temperature, humidity, pressure, wind speed, precipitation | “A 4-layer architecture for predicting air pollution has been proposed”; “Random Forest regression was the best technique, performing well for air pollution prediction”; “PM2,5 has a negative correlation with temperature and also a negative correlation with wind speed.” (Ameer et al., 2019, [16], pp. 128329, 128330, 128336). |
38 | Dameri et al. [101] | Smart cities as a glocal strategy | Data on Bologna, Milan, Turin, Florence, Genoa, Shanghai, Beijing, Tianjin, Guangzhou, and Chengdu cities (ANCI Vademecum “about Italian Smart Cities” (2013); EU–China Smart and Green Cities Cooperation report “Comparative studies of smart cities in Europe and China” (2014); China National Bureau of Statistics) | Smart city | “A smart city is a glocal urban strategy, depending on both global, standard drivers and local contingencies”. “Italian and Chinese smart cities are both conceived like urban policies to face the environmental impact of the large metropolis and to spread new technologies, especially ICT, to deliver better services to the citizens.” (Dameri et al., 2019, [101], pp. 26, 37). |
39 | Santos et al. [15] | Air Quality Monitoring in Smart Cities | Data on Santander city, Spain, 2018 (a Spec Sensors network located on static points and installed on public vehicles) | Smart city, SO2, NO2, O3, and PM10 | The Smart Santander platform was presented. The platform offers a mobile air pollution remote monitoring system; data are available through the platform in real time; the system hardware architecture provides energy consumption savings rates up to 50% and an extra battery lifetime. |
40 | Honarvar and Sami [98] | Smart Particulate Matter Prediction Using Urban Big Data | Dataset of Aarhus city (Denmark), 2014 (Wunderground’s website, The Smart City Pulse project, Google Maps, Openstreetmap’s website) | Smart city, PM10, temperature, humidity, wind speed, sea level | “A predictive model for particulate matter prediction was developed”, which “integrate[s] heterogeneous multiple sources of urban data and predicts the particulate matter based on transfer learning perspective”. “The method can be used to infer the air quality of each road or region of cities in real-time.” (Honarvar and Sami, 2019, [98], pp. 56, 65). |
41 | Praharaj and Han [100] | Perception of a Smart city in India | Perception survey of urban development professionals in India who are implementing a massive “100 Smart Cities Mission”, 2018 | Smart city concept | Smart city discourse is predominantly corporate-driven and technology-focused. Smart city models should also engage with sustainability and community issues. India’s smart city concept is strongly associated with sustainable city and eco-city, which aim to improve the environmental conditions in the city. |
42 | Patel and Doshi [60] | Social implications of smart cities | Data from the United Nations agency “International Telecommunication Union”; the United Nations Population Fund; “Recode” website | City transformation, smart city | The main reason for the transformation of modern cities is the challenges associated with achieving goals related to quality of life and social development; smart cities are the result of knowledge-comprehensive and creative strategies aiming at reinforcing the socio-economic, ecological, and competitive performance of cities. |
43 | Ruohomaa et al. [103] | Smart City Concept in Small Cities | Data on small cities in Finland: Hämeenlinna, Riihimäki, and Forssa. (The smart mobility pilot project “Electronic bike service”, “Smart Green Forssa Region” project, “Industry 4.0 framework” EU) | City transformation, smart city, inequality | “The transition towards smarter cities involves not only technological development but also the changing and evolving roles of citizens, service providers and city authorities”. “Cities are platforms for smart city development projects, which enable inhabitants and other stakeholders to participate in his planning and development, thereby minimizing intra-city inequality.” (Ruohomaa et al., 2019, [103], pp. 5, 12). |
44 | Estrada et al. [53] | Smart cities big data algorithms for sensors location | Data on Guadalajara metropolitan zone (Mexico), 1996–2017 (Secretariat of the Environment and Territorial Development of Jalisco State) | Smart city, SO2, PM10, CO, NO2, O3 | A process for air quality monitoring through a system of city sensors was presented which integrates data into IoT to identify the “hot” zones and present their visualization in a geo-referenced map; the records can be read on the web application. |
45 | Wang and Kong [102] | Smart Air Quality Predictive Modeling | Data on Wuhan city (China), 2014–2018 | Smart city, air quality index (PM10, PM2.5, SO2, NO, NO2) | “A novel predictive-model-based decision tree method was proposed, based on the C4.5 decision tree”; an improved algorithm “is more efficient in addressing classification and prediction with a large amount of air quality data; it has a good prediction ability for future data.” (Wang and Kong, 2019, [102], pp. 172892, 172900) |
46 | Barba-Sánchez et al. [105] | Smart cities as a source for entrepreneurial opportunities | Data on 44 Spanish cities (National Statistics Institute (INE), 2016) | Smart city, economic growth | “The impact of smart city initiatives on the creation of new business opportunities” was studied; smart city movement encourages entrepreneurship—“ICT companies promote the creation of auxiliary companies, which leads to growth in local employment”; “ICT is major player in boosting the local economy” (Barba-Sánchez et al., 2019, [105], p. 2, p. 9). |
47 | Haarstad and Wathne [104] | Smart city projects catalyzing urban energy sustainability | Data on Stockholm (Sweden), Nottingham (United Kingdom), and Stavanger (Norway), 2015–2018 (interview of 27 informants across the three cities) | Smart city initiative, urban energy sustainability | Relations between smart city agenda and energy sustainability were studied. “Sustainability measures are not necessarily driven by advanced technology”; smartness agenda increases sustainability ambitions of cities (Haarstad and Wathne, 2019, [104], p. 1). |
48 | Sahu et al. [110] | Evaluating the variability, transport and periodicity of particulate matter over smart city | Data on Bhubaneswar (India), 2016–2016 (Monitoring of Atmospheric Pollutants and Network MAPAN program; an Air Quality Monitoring Station (AQMS) and Automatic Weather Station (AWS)) | Smart cities, PM10, PM2.5, humidity, pressure, temperature, wind | A process for monitoring and analyzing changes in particulate matter (PM) was presented using data from automatic monitoring stations and Environment S.A. optical analyzers; data are available through the website in real time, which helps to quickly identify areas of pollution sources. |
49 | Nagy et al. [62] | A link between Smart cities and successful cities | Data on 23 Hungarian towns (incl. Budapest), 2010–2015 (Hungarian Central Statistical Office) | Smart city, Theil index, energy use | Regional disparities and the spatial distribution of Hungarian urban energy use were examined; belonging to the smart groups of cities does not cause “significant changes in urban electricity and natural gas consumption patterns.” (Nagy et al., 2019, [62], p. 98) |
50 | Manchester and Cope [19] | Learning to be a smart citizen | Data on Bristol city, UK (Mimeo project, 2016–2021) | Smart city, inequality, quality of life | “The inequality is producing patterns of ownership (access and control of technologies) there are obstacles to city inhabitants finding routes to influence technology shaping the development of the city”. “Smart city initiatives to offer city inhabitants opportunities (to co-create smart city services with citizens) address the inequalities that constitute the contemporary city” and increase the quality of life for citizens (Manchester and Cope, 2019, [19], pp. 224, 227). |
51 | Mark and Anya [24] | Ethics of Using Smart City AI and Big Data | Data on Amsterdam (Netherlands), Copenhagen (Denmark), Hamburg (Germany), and Helsinki (Finland), 2018 (the websites, policy documents, and newspaper articles and interviews) | Smart cities, aartificial intelligence, big data, smart information systems | The effects of using and implementation Smart information systems within smart city projects were studied, which “will help for policy development in the areas of the ethical use of SIS in smart cities of the future.” (Mark and Anya, 2019, [24], p. 31). |
Appendix E
Section/Topic | Checklist Item | Reported on Page Number | |
---|---|---|---|
TITLE | |||
Title | 1 | Identify the report as a systematic review, meta-analysis, or both. | See p. 1 |
ABSTRACT | |||
Structured summary | 2 | Provide a structured summary including, as applicable: background; objectives; data sources; study eligibility criteria, participants, and interventions; study appraisal and synthesis methods; results; limitations; conclusions and implications of key findings; systematic review registration number. | See p. 1 |
INTRODUCTION | |||
Rationale | 3 | Describe the rationale for the review in the context of what is already known. | See pp. 1–4 |
Objectives | 4 | Provide an explicit statement of the questions being addressed with reference to participants, interventions, comparisons, outcomes, and study design (PICOS). | See p.3 |
METHODS | |||
Protocol and registration | 5 | Indicate if a review protocol exists, if and where it can be accessed (e.g., Web address), and, if available, provide registration information including registration number. | See pp. 4–5, The protocol is not registered |
Eligibility criteria | 6 | Specify study characteristics (e.g., PICOS, length of follow-up) and report characteristics (e.g., years considered, language, publication status) used as criteria for eligibility, giving rationale. | p. 4–5 |
Information sources | 7 | Describe all information sources (e.g., databases with dates of coverage, contact with study authors to identify additional studies) in the search and the date last searched. | p. 5 |
Search | 8 | Present full electronic search strategy for at least one database, including any limits used, such that it could be repeated. | pp. 4–6 |
Study selection | 9 | State the process for selecting studies (i.e., screening, eligibility, included in systematic review, and, if applicable, included in the meta-analysis). | See pp. 6–7 |
Data collection process | 10 | Describe the method of data extraction from reports (e.g., piloted forms, independently, in duplicate) and any processes for obtaining and confirming data from investigators. | See pp. 4–7 |
Data items | 11 | List and define all variables for which data were sought (e.g., PICOS, funding sources) and any assumptions and simplifications made. | Reported in Figure 3 |
Risk of bias in individual studies | 12 | Describe methods used for assessing risk of bias of individual studies (including specification of whether this was done at the study or outcome level), and how this information is to be used in any data synthesis. | |
Summary measures | 13 | State the principal summary measures (e.g., risk ratio, difference in means). | |
Synthesis of results | 14 | Describe the methods of handling data and combining the results of studies, if done, including measures of consistency (e.g., I2) for each meta-analysis. | Reported in Appendix D |
Risk of bias across studies | 15 | Specify any assessment of risk of bias that may affect the cumulative evidence (e.g., publication bias, selective reporting within studies). | |
Additional analyses | 16 | Describe methods of additional analyses (e.g., sensitivity or subgroup analyses, meta-regression), if done, indicating which were pre-specified. | |
RESULTS | |||
Study selection | 17 | Give numbers of studies screened, assessed for eligibility, and included in the review, with reasons for exclusions at each stage, ideally with a flow diagram. | Reported in Figure 4 |
Study characteristics | 18 | For each study, present the characteristics of the data that were extracted (e.g., study size, PICOS, follow-up period) and provide the citations. | See p. 5, Figure 3 |
Risk of bias within studies | 19 | Present data on the risk of bias of each study and, if available, any outcome level assessment (see item 12). | See p. 3 |
Results of individual studies | 20 | For all outcomes considered (benefits or harms), present, for each study: (a) simple summary data for each intervention group and (b) effect estimates and confidence intervals, ideally with a forest plot. | See p. 5 |
Synthesis of results | 21 | Present the results of each meta-analysis conducted, including confidence intervals and measures of consistency. | |
Risk of bias across studies | 22 | Present the results of any assessment of the risk of bias across studies (see Item 15). | |
Additional analysis | 23 | Give the results of additional analyses, if conducted (e.g., sensitivity or subgroup analyses, meta-regression (see Item 16)). | |
DISCUSSION | |||
Summary of evidence | 24 | Summarize the main findings including the strength of the evidence for each main outcome; consider their relevance to key groups (e.g., healthcare providers, users, and policy makers). | See pp. 7–14 |
Limitations | 25 | Discuss limitations at the study and outcome level (e.g., risk of bias) and at the review-level (e.g., incomplete retrieval of identified research, reporting bias). | See p. 3 |
Conclusions | 26 | Provide a general interpretation of the results in the context of other evidence, and implications for future research. | See pp. 14–15 |
FUNDING | |||
Funding | 27 | Describe sources of funding for the systematic review and other support (e.g., supply of data), as well as the role of funders in the systematic review. | See p. 15 |
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Main Category | Subgroup | Metric | Rank (1–3) * | City Grade (1–5) ** | |
---|---|---|---|---|---|
Dubai (UAE) | London (UK) | ||||
Economy and technology | Smart technology | Percentage of households with Internet access | 3 | 5 | 4 |
Access to public free Wi-Fi | 2 | 4 | 5 | ||
Economy | Hourly wage | 1 | 4 | 5 | |
Society | Social capital | Number of universities in the city (or number of students per 1000) | 2 | 4 | 3 |
Smart government | Online government services | 3 | 3 | 4 | |
Quality of life | Life expectancy | 1 | 4 | 5 | |
Environment | Environmental sustainability | Percentage of the city population that has door-to-door garbage collection with individual telemetering of household waste quantities | 1 | 1 | 3 |
Number of electric-vehicle charging stations per registered electric vehicle | 2 | 3 | 5 | ||
Density of real-time remote air quality monitoring stations per km2 | 3 | 1 | 4 | ||
Overall ranking: | 29 | 38 |
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Dashkevych, O.; Portnov, B.A. Criteria for Smart City Identification: A Systematic Literature Review. Sustainability 2022, 14, 4448. https://doi.org/10.3390/su14084448
Dashkevych O, Portnov BA. Criteria for Smart City Identification: A Systematic Literature Review. Sustainability. 2022; 14(8):4448. https://doi.org/10.3390/su14084448
Chicago/Turabian StyleDashkevych, Oleg, and Boris A. Portnov. 2022. "Criteria for Smart City Identification: A Systematic Literature Review" Sustainability 14, no. 8: 4448. https://doi.org/10.3390/su14084448
APA StyleDashkevych, O., & Portnov, B. A. (2022). Criteria for Smart City Identification: A Systematic Literature Review. Sustainability, 14(8), 4448. https://doi.org/10.3390/su14084448