A Proposed Framework for Identification of Indicators to Model High-Frequency Cities
Abstract
:1. Introduction
“In fact, the city is many times more complex than a single organism in that it is a collective of many pulses all firing at different rates but that are ultimately coordinated by our own human life cycles and rhythms. This we might think of as the ‘high-frequency city,’ in contrast to our traditional model of cities whose dynamics evolve and change over much longer time scales and at lower frequencies.”
2. The Concept of a High-Frequency City
“Despite all the hype about the smart city and the generation of big data from networks of sensors that are likely to be installed everywhere, none of this has resolved the basic problem that faces us in our understanding of cities and the means we have to predict and design their future.”
“A high-frequency city is a self-organised city that can regain its pulse, balance its urban functions and continue to thrive and show resilience by creating an environment that is conducive for residents to engage in their various activities at various times while maintaining sustainability as much as possible, which can be observed, modelled and optimised via analysis of available geo-big data collected through the sensors and techniques inherent to smart cities with a fine spatiotemporal resolution.”
3. Methodology
3.1. Review Methodology
- Database for Smart/Sustainability Assessment: This database has been constructed on methods, guidelines and procedures dealing with indicators for assessing mobility in smart and sustainable cities;
- Database for Exploring Human Mobility Pattern: This database has been constructed on robust existing methods and metrics used for human mobility and urban goods movement. Although there are indicators that cover the category of mobility in both approaches (i.e., sustainable and smart city), each indicator is examined from the specific concept of each orientation. For example, the goal of mobility indicators in the sustainable city reflects the extent to which the use of public transit systems is encouraged in order to maintain the sustainability of resources for future generations, even if it results in the city becoming inactive. This differs from our concept of the high-frequency city, where we look for indicators that reflect the extent of mobility and interaction of people within the city through time and space, as well as the monitoring frequency of these patterns within the city while respecting the principle of sustainability as much as possible;
- Database for Reviewing Metrics of the Selected Indicators: This database has been created to examine most existing metrics, methods and models for calculating the selected indicators, whether they are based on traditional methods or artificial intelligence methods such as machine learning or deep learning. Moreover, this database consists of literature related to the selected method in our proposed framework;
- Database for Understanding the Complexity of the City: This database has been created to understand the complexity of the city, as well as ways to represent this ever-changing complexity of dynamic systems in the city, such as the use of multilayer networks.
3.1.1. Literature Search Strategy
3.1.2. Studies Selection
- Relevant: The purpose of the selected articles compatible with the purpose of the database in which it is to be included. For example, the articles and reports included in the first database provide a set of indicators to assess sustainability or smart city;
- External validity: The framework or methods of the article can be applied in various cities around the world;
- Expertise: The selected article is peer-reviewed, and the reports have been prepared by experts in reliable international organisations and international academic institutions.
3.1.3. Which Criteria, for Which Indicators?
- Measurable with reasonable precision, depending on available data and high-frequency observations;
- Easy to understand and substantial;
- Benchmarkable (i.e., the indicator must reveal the performance of alternatives);
- Scalable (i.e., the indicator must be suitable for different spatiotemporal resolutions);
- Specific (i.e., the indicator must evaluate the exact mobility aspects).
3.2. Proposed Framework for Modelling High-Frequency Cities
3.2.1. Pre-Processing
Defining the Indicators
Pre-Processing Data Sources
3.2.2. High-Frequency City Analysis
Addressing Aggregation Strategies
Indicator Analysis
City Assessment and Ranking
4. Results: Indicators of High-Frequency City
4.1. Proposed Indicators for High-Frequency Cities
4.1.1. Human Mobility
Incoming/Outgoing Flows
Density Changes
Travel Distance
Radius of Gyration
Distance between Mean Centres (DMC)
4.1.2. Public Transit Systems
PTN Coverage
Transport System Diversity
Intermodal Connectivity
PT Reliability
Resilience to Disaster
Occupancy Rate
Active Vehicles
4.1.3. Road Network
Traffic Flow
Travel Time Uncertainty
Traffic Congestion
Road Safety
4.1.4. Urban Goods Movement
Freight Traffic Volume
Vehicle-Kilometres Travelled
Network Properties
4.1.5. Land Use
Transport Land Consumption
Land-Use Mix (LUM)
Vitality
4.2. Impact of COVID-19 and Driverless Mobility on the Frequency of the City
4.3. Limitations
- Limited data accessibility: The selection of indicators is the primary step of any benchmark. However, data for selected indicators are not always available or reliable in a significant number of countries or even the cities of the same country. The current era is undoubtedly data-driven, and the availability of big data has created unprecedented opportunities for various geographic information science studies. However, with such massive amounts of data at our disposal, other data that reveal human interaction, such as information transfer and money transfer, are lacking, and we hope that the availability of such data will open perspectives on the improvement of high-frequency city modelling.
- Spatial resolution: Since the level of data privacy protection varies due to different sources, some data are collected at different spatial resolutions and are not available at the same level of aggregation. If the data were collected with high spatial accuracy, the results of the indicator analysis could certainly be more accurate.
- Temporal scale: Unfortunately, due to limited data availability, some data can only be provided on a small-time scale. For example, point of interest data (POI) can only be collected once in a given time period (i.e., the data were collected infrequently), and it is difficult to obtain such data over a longer time scale. If such data were available over a longer time scale, we could monitor changes in land use over time, and the assessment results could be improved.
- Time reference: the variability in the time period of data collection is one of the main data limitations that could lead to outliers or bias in the assessment results, especially at the inter-city level.
5. Conclusions
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Method, Publication Year and References | Objective of Study | Orientation of the City | Type | Categories | Extent of Application | # of Indicators/Metrics | # of Applied Cities |
---|---|---|---|---|---|---|---|
Sustainability Assessment of Shared Automated Electric Vehicles, 2021 ([16]) | Measuring the impacts of shared automated electric vehicles on mobility. | Sustainable City | Indicator Set | Social, Environmental, Economic and Governance | International | 20 | - |
Mobility Performance Metrics (MPM), 2020 ([17]) | Measuring the extent to which the integrated public-private mobility system meets the needs of passengers, the performance of the system while meeting mobility on demand (MOD). | Sustainable City | Indicator Set | Connectivity, Financial Management, Planning, Environmental, Equity, Safety and Security, Customer Satisfaction, Organisational Excellence and State of Good Repair | International | 63 | 11 |
The Deloitte City Mobility Index (DCMI), 2019 ([18]) | Evaluating the performance of a city’s mobility network and its readiness to embrace the future. | Sustainable City | Composite Index | Performance and Resilience, Vision and Leadership, Service and Inclusion | International | 15 | 57 |
Smart Mobility Indicator (SMI), 2019 [19] | Developing an index to assess the level of "smart mobility" solutions implemented in cities. | Smart City | Composite Index | Technical infrastructure, Information infrastructure, Mobility methods and Legislation | International | 17 | - |
Urban Mobility Indicators for Walking and Public Transport, 2019 ([13]) | Investment promotion in more accessible, safe, efficient, affordable and sustainable infrastructure for walking and public transport. | Sustainable and Liveable City | Indicator Set | Comfort and Safety, Service Demand, Connecting Destinations, Support and Encouragement | European | 34 | 8 |
Urban Mobility Performance Indicators, 2019 ([20]) | Identifying the most used urban mobility metrics.1 | Sustainable and Smart City | Indicator Set | Accessibility, Environmental, Social, Economic, Infrastructure, Integrated Planning, Health and safety, Traffic Circulation, Urban Transportation System and Smart Mobility | International | 63 | - |
Transportation Sustainability Indices for a Liveable City, 2018 ([21]) | Developing sustainable transport indicators for a liveable city to predict its future dynamics and formulate sustainable urban transport strategies that take into account the time dependency of the indicators. | Sustainable and Liveable City | Indicator Set | Environment, Economic and Social | National | 18 | 1 |
Mobility Index Sustainable Urban (IMUS), 2017 ([22]) | Presenting an overview of different urban mobility indices and application of the Mobility Index Sustainable Urban (IMUS) for the public transport sector. 1 | Sustainable City | Composite Index | - | National | 22 | 1 |
Sustainable Cities Mobility Index, 2017 ([23]) | Comparison of global mobility systems in terms of sustainable urban mobility, which includes measures for the social, environmental and economic health of the city. | Sustainable City | Composite Index | People, Planet and Profit | International | 23 | 100 |
Indicators for Sustainable and liveable Transport Planning, 2017 ([24]) | Providing guidance on the use of indicators for sustainable and liveable transport planning. 1 | Sustainable and Liveable City | Indicator Set | Economic, Social, Environmental, Good Governance and Planning | International | 40 | - |
Citykeys Indicators For Smart Cities, 2017 ([25]) | Monitoring the evolution of a city towards an even smarter city. | Smart City | Indicator Set | People, Planet, Prosperity and Governance | European | 76 | - |
Sustainable Urban Mobility Indicators, 2017 ([26]) | Providing a literature review and selection of urban mobility indicators for Thessaloniki city. | Sustainable City | Indicator Set | Integration of Land Use, Accessibility, Mobility, Promotion of Non-Motorised Means, Encouragement Of PT, Environmental Concerns, Economic Welfare and Road Safety | National | 80 | 1 |
Sustainability Measures of Urban Public Transport, 2016 ([27]) | Assessing the sustainability of public transport systems. | Sustainable City | Indicator Set | Environment, Social, Economic and System Effectiveness | Middle East/Asia | 15 | 26 |
Sustainability Compound Index (SCI), 2012 ([28]) | Assessing and prioritising transportation sustainability strategies in Taipei city. | Sustainable City | Composite Index | Society, Economy, Environment, Energy and Finance | National | 10 | - |
Indicators for Sustainable Urban Mobility, 2012 ([29]) | Developing a set of urban mobility indicators to show the driving forces behind the evolution of transport volumes and modal split and to assess the performance of transport and environmental policies. | Sustainable City | Indicator Set | Population, Economy, Urban structure, Transport, Environment and Policy | National | 43 | 21 |
Transport Sustainability Index (TSI), 2011 ([30]) | Providing a hybrid approach based on the Analytical Hierarchy Process (AHP) and Dempster–Shafer theory to assess the impact of green transport measures on the sustainability of a city. | Sustainable City | Composite Index | Society, Transport, Environment, Energy and Economy | International | 19 | - |
Index of Sustainable Urban Mobility (I_SUM), 2010 ([31,32,33]) | Evaluating and comparing the mobility condition of cities. | Sustainable City | Composite Index | Accessibility, Environmental, Social, Political, Transport Infrastructure, Non-Motorised Modes, Integrated Planning, Urban Circulation Traffic and Urban Transport Systems. | National | 87 | 6 |
Journal Articles | Conference Papers | Books/Book Chapters | Reports | Theses | Total | |
---|---|---|---|---|---|---|
Database for Smart/Sustainability Assessment | 34 | 4 | 1 | 18 | 0 | 57 |
Database for Exploring Human Mobility Pattern | 56 | 8 | 0 | 0 | 0 | 64 |
Database for Reviewing metrics of the Selected Indicators | 96 | 8 | 3 | 9 | 1 | 117 |
Database for Understanding the Complexity of the City | 74 | 6 | 13 | 4 | 1 | 98 |
Total | 260 | 26 | 17 | 31 | 2 | 336 |
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Senousi, A.M.; Zhang, J.; Shi, W.; Liu, X. A Proposed Framework for Identification of Indicators to Model High-Frequency Cities. ISPRS Int. J. Geo-Inf. 2021, 10, 317. https://doi.org/10.3390/ijgi10050317
Senousi AM, Zhang J, Shi W, Liu X. A Proposed Framework for Identification of Indicators to Model High-Frequency Cities. ISPRS International Journal of Geo-Information. 2021; 10(5):317. https://doi.org/10.3390/ijgi10050317
Chicago/Turabian StyleSenousi, Ahmad M., Junwei Zhang, Wenzhong Shi, and Xintao Liu. 2021. "A Proposed Framework for Identification of Indicators to Model High-Frequency Cities" ISPRS International Journal of Geo-Information 10, no. 5: 317. https://doi.org/10.3390/ijgi10050317
APA StyleSenousi, A. M., Zhang, J., Shi, W., & Liu, X. (2021). A Proposed Framework for Identification of Indicators to Model High-Frequency Cities. ISPRS International Journal of Geo-Information, 10(5), 317. https://doi.org/10.3390/ijgi10050317