Innovating Metrics for Smarter, Responsive Cities
Abstract
:1. Introduction
2. Perspectives on Challenges for Big Data and Smart Cities
2.1. Big Data—Efficiencies, Effectiveness, Privacy, Reliability, and the 5Vs
2.1.1. Big Data and Small Data
2.1.2. Efficiencies, Effectiveness, Reliability, and the 5Vs
2.1.3. Data Types, Data Uses, and Privacy
2.1.4. Data Context, Theory, and Approaches
2.2. Smart Cities—Theories and Future Potentials
2.2.1. Urban Theory
2.2.2. Future Potential
2.3. Summary
3. Metrics and Smart Cities
3.1. Metrics
3.2. Algorithms
3.3. Urban Indicators, Performance, Measurements, and Standards
3.4. Unmeasurability and Meaningfulness
3.5. Performative Metrics
3.6. Metrics for Practical Smart City Use: Examples
3.7. Summary
4. Urban Level Explorations for Innovating Metrics
4.1. Theoretical Perspective, Research Design, and Methods
- (1)
- Regarding your inner body awareness in your city, would you agree that you can feel your body tighten up when you are angry?
- (2)
- Regarding your comfort body awareness in your city, would you agree that you feel comfortable in your city most of the time?
- (3)
- Regarding your body awareness in your city, would you agree that your body lets you know when your environment is safe?
4.2. Study Results
4.2.1. Awareness
4.2.2. Learning
4.2.3. Openness
4.2.4. Engagement
5. Discussion
5.1. Interpretation of Results
- (a)
- Evolution of Theory for Urban Metrics. The invisible dimension of smart cities is articulated in a variety of ways in terms of the availability of wifi and other technological developments with data elements such as a bike app with citizen input that informs city staff influencing responsiveness and eTownHall meetings incorporating live video and social media in support of documented engagement. The role of education programs as one of several mechanisms for generating and improving awareness about smart cities points to the importance of learning opportunities and intersections for learning and awareness. The observation by a community member and educator that the smart cities idea and concept has both theoretical and practical value is perhaps an affirmation of the importance of urban theory generally, and of the evolving of urban theory to accommodate emergent understandings of smart city thinking and practice.
- (b)
- Explorations of Big and Small Data Approaches for Understanding Emergent Urban Metrics. The data implications of experiences of urban elements such as a fountain or benches in public spaces and their interactional effects gives rise to the potential for enriched data generation and use for urban planning and design. Uncertainty associated with the future generally gives rise to a rethinking of learning and education programs for contemporary and everyday urban environments. As such, the need for greater adaptability and responsiveness, in the moment, calls for more dynamic forms of awareness, learning, openness, and engagement. Further, potential for data analytics emerges in relation to the opportunities for figuring out “how to sort out the data that is constantly being made, built” so that “we will know more what to do with it”. This potential highlights the value and opportunity of the variable identified by Joshi and When [14] of “citizen discussion via social media”. This variable may also be an important mechanism for Coletta and Kitchin’s [81] notion of algorithms and actors (algorhythmic) and keeping people in the loop as well as an important mechanism for navigating new potential for innovating urban metrics. Regarding openness, this concept is associated with smart cities to varying degrees, depending upon the city, although some neutrality in response occurred. Recognizing the value of public data, city IT staff expressed a high degree of openness in terms of sharing this data in support of urban improvements and unintended usage. The augmentative value of technology was acknowledged by a city councilor in terms of the generation and sharing of information from a bike share app that can be translated into data to assist city staff in responding to needs for fixes on the one hand and the enhancing of safety on the other.
- (c)
- People Dimension of Smart Cities. “Documented engagement” enabled by social media and other ICTs was said to contribute to the potential for more immediate awareness and action in support of experimental, improvisational, and performative spaces. While documented engagement emerges in the engagement section of the results for this work, this element encompasses potentially all four constructs in that the mechanisms and mindsets fostering such engagement serve to support awareness, learning, and openness. Also of note is the finding in Section 4.2.1 that feelings of anger, comfort, and safety in the city are dependent upon the particular city and urban contextual elements pointing to the variability of manifestations and understandings of smart cities.
- (d)
- BIS for Application in Urban Environments. In the context of explorations of awareness conducted in this work using Anderson’s BIS, it is worth noting that Fakhrhosseini and Jeon [99] describe the role of emotion in relation to people interacting with technologies in terms of a variety of “methods for inducing temporary mood states” and imagination is described as “one of the simplest emotion induction techniques” [99] involving mood related “situations and memories”. This is of note because imagination is invoked in this work through inviting people to think about their experiences of smart cities and the emotion of anger is explored in this work in relation to urban environments that are being increasingly embedded with aware technologies. Furthermore, building on the work of Gross and Levenson [100], Fakhrhosseini and Jeon [99] include “neutral” as one of eight emotional states and this work includes “neutral” as position 4 on the 7-point scale for the adapted BIS exploration in this study which emerged as a data point in response to anger in urban contexts and to perceptions of openness and smart cities. It is perhaps important to note that although explored already by McKenna [4] in the context of augmenting the quantified experience and in terms of sensing, sensors, and the IoT and public sector implementation challenges [101], BIS explorations in this work extend to, and focus upon, the potential for the innovation of urban metrics more generally and considerations of reliability of the scale for urban environments through use of confidence interval and Cronbach’s Alpha calculations.
5.2. Implications and Limitations
5.3. Future Research and Practice Directions
6. Conclusions
Funding
Conflicts of Interest
References
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Challenges | #Author | Big Data | Small Data | Smart Cities |
---|---|---|---|---|
Algorithms | 14/21 | ✓ | ✓ | |
Approaches and Methods | 19/16 | ✓ | ✓ | ✓ |
Context | 12/19 | ✓ | ✓ | ✓ |
Sensing | 5/10 | ✓ | ✓ | ✓ |
Synthetic | 8/11 | ✓ | ✓ | |
Value–Variety–Velocity–Veracity-Volume | 7/14 | ✓ | ✓ | ✓ |
Institute | Indices | Indicators | Parameters |
---|---|---|---|
BSI | Standards | Smart cities | Issues |
CityKeys VTT/AIT/EU | Smart City | Project success | Performance |
CIVITAS/EC | Famework | Cities/Projects | Vitality |
EIU | GLI | Living conditions | Livability |
IESE | CIMI | Development | 9 key areas |
ISO | 37120:2018 | Performance | Services/QoL |
Mercer | QoLR | Living conditions | Livability |
Monocle | MLCI | Livability | QoL |
Framework Elements | Author(s) |
---|---|
Aware People + Aware Technologies | McKenna [4]; Chauhan, Agarwal and Kar [11]; Jara, Bocchi & Genoud [12] |
Constructs | |
Awareness | Estrin [10]; Han, Guizani, Lloret, Chan, Wan and Guibene [18]; Ang, Seng, Zungeru, and Ijemaru [45]; IESE [67]; Patel [77] |
Learning | Han, Guizani, Lloret, Chan, Wan & Guibene [17]; Wise and Shaffer [31] |
Openness | Joshi and When [14]; Pink, Ruckenstein, Willim and Dugue [30]; Zygiaris [32] |
Engagement | Pink, Ruckenstein, Willim and Dugue [30]; Dotti [44]; Joss [46] |
Metrics | Caprotti, Cowley, Datta, Brot, Gao, Georgeson, Herrick, Odeandaal and Joss [2]; Bell, Banetti, Edwards, Laney, Morse, Picollo, and Zanetti [5]; Marsal-Llacuna [54]; Marsal-Llacuna [78] |
Standards/Indicators | Al-Nasrawi, Adams and El-Zaart [1]; WCCD [50]; ISO [51]; Cohen [52]; Bosch, Jongeneel, Rovers, Neumann, Airaksinen and Huovila [65] |
Indices | Mollá-Sirvent et al. [42]; Caird, Hudson and Kortuem [63]; IESE [67]; EIU [73]; Monocle [76]; Bonduel [88] |
Dynamic | Al Nuaimi, Al Neyadi, Mohamed and Al-Jaroodi [15] |
Contextual | Batty [9]; Han, Guizani, Lloret, Chan, Wan and Guibene [18]; Smith [26]; Zygiaris [32]; Hunter [79]; Dourish [83] |
Continuous | Chauhan, Agarwal and Kar [11]; Jara, Bocchi and Genoud [12]; Bosch, Jongeneel, Rovers, Neumann, Airaksinen, and Huovila [65] |
Improvisatory | Pink, Ruckenstein, Willim and Dugue [30] |
Meaningful | Bell, Banetti, Edwards, Laney, Morse, Picollo, and Zanetti [5]; Thakuriah, Tilahun, and Zellner [20]; Joss [46]; Baumer [80]; |
Performative & Performance | Zook [23]; Parmiggiani, Monteiro & Østerlie [55]; Caird, Hudson and Kortuem [63]; Bosch, Jongeneel, Rovers, Neumann, Airaksinen, and Huovila [65] |
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McKenna, H.P. Innovating Metrics for Smarter, Responsive Cities. Data 2019, 4, 25. https://doi.org/10.3390/data4010025
McKenna HP. Innovating Metrics for Smarter, Responsive Cities. Data. 2019; 4(1):25. https://doi.org/10.3390/data4010025
Chicago/Turabian StyleMcKenna, H. Patricia. 2019. "Innovating Metrics for Smarter, Responsive Cities" Data 4, no. 1: 25. https://doi.org/10.3390/data4010025
APA StyleMcKenna, H. P. (2019). Innovating Metrics for Smarter, Responsive Cities. Data, 4(1), 25. https://doi.org/10.3390/data4010025