What do New Yorkers Think about Impacts and Adaptation to Heat Waves? An Evaluation Tool to Incorporate Perception of Low-Income Groups into Heat Wave Adaptation Scenarios in New York City
Abstract
:1. Introduction
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- Contextual vulnerability (starting-point vulnerability)
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- Outcome vulnerability (end-point vulnerability)
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- What are the main differences across income groups in regards to their concerns about future impacts of heat waves?
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- What are the main differences across income groups in regards to their opinion about citizens’ responsibility in heat wave adaptation and urban sector(s) most in need of adaptation actions during future heat waves in NYC?
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- What are the main differences between different income groups’ cognitive maps in regards to impacts of heat waves in NYC?
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- How do prominent adaptation options affect different income groups in NYC, i.e. lower the impacts of heat waves for each group?
2. Materials and Methods
2.1. Data
2.2. Methods
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- People living in poverty
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- Low-income group
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- Middle-income group
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- High-income group
- Highest number of stated concepts (minimum 4 concepts must be stated)
- Equal distribution in different boroughs (according to database availability)
- Equal composition in age groups (according to database availability)
- Equal composition of gender (according to database availability)
- Investment in and development of the NYC public health sector
- Investment in and development of the NYC water and electricity system
- Investment in and development of the NYC transit sector
3. Results
3.1. Perceived Extent of Climate Change Impacts in the Future
- Personal life
- Family
- New York City in general
- Future generation
3.2. Perceived Responsibility of Citizens’ Regarding Heat Wave Adaptation
3.3. FCM Analysis Results
3.4. FCM Scenario Simulation Results
4. Discussion
5. Conclusions
Author Contributions
Conflicts of Interest
Appendix A. Detailed Information about Concepts’ Fixed Value in Scenario Simulation
Subject of Simulated Scenarios for in Poverty Group | |||||
Public Health Sector | Water and Electricity System | Transit Sector | |||
Concept | Value | Concept | Value | Concept | Value |
Anxiousness | 0.1 | Drought | 0.1 | Transportation usage | 1 |
Asthma | 0.1 | Water shortage | 0.1 | Intolerable subway/transit platforms | 0 |
Cardiac arrest | 0.1 | Blackout/Power shortage | 0 | Subway failures | 0 |
Death | 0.1 | Water line problem | 0 | ||
Fatigue | 0.1 | ||||
Children death | 0.1 | ||||
Elderly death | 0.1 | ||||
Heat stroke | 0.1 | ||||
Hyperthermia | 0.1 | ||||
Illness | 0.1 | ||||
Migraine | 0.1 | ||||
Skin cancer | 0.1 | ||||
Subject of Simulated Scenarios for Low Income Group | |||||
Public health Sector | Water and Electricity System | Transit Sector | |||
Concept | Value | Concept | Value | Concept | Value |
Anxiousness | 0.1 | Conserving water | 1 | Subway delays | 0 |
Asthma | 0.1 | Drought | 0.1 | Intolerable subway/transit platforms | 0 |
Harmful for children | 0.1 | Water shortage | 0.1 | Overheated cars | 0.1 |
Death | 0.1 | Blackout/Power shortage | 0 | ||
Depression | 0.1 | Non-functional elevators | 0 | ||
Fatigue | 0.1 | ||||
Harmful for disabled | 0.1 | ||||
Harmful for elderly | 0.1 | ||||
Heat stroke | 0.1 | ||||
Illness | 0.1 | ||||
Spread of infections | 0.1 | ||||
Subject of Simulated Scenarios for Middle Income Group | |||||
Public Health Sector | Water and Electricity System | Transit Sector | |||
Concept | Value | Concept | Value | Concept | Value |
Anxiousness | 0.1 | Water pollution | 0.1 | Asphalt melting | 0 |
Asthma | 0.1 | Water shortage | 0.1 | Transportation failure | 0 |
Cabin fever | 0.1 | Drought | 0.1 | More traffic | 0.1 |
Death | 0.1 | Low water pressure | 0 | Intolerable platforms | 0 |
Depression | 0.1 | Blackout/Power shortage | 0 | Delays | 0 |
Faint | 0.1 | Electronics damage | 0 | Overheated cars | 0.1 |
Fatigue | 0.1 | ||||
Health of elderly | 0.9 | ||||
Heat stroke | 0.1 | ||||
Illness | 0.1 | ||||
Pestilence | 0.1 | ||||
Skin cancer | 0.1 | ||||
Subject of Simulated Scenarios for High Income Group | |||||
Public Health Sector | Water and Electricity System | Transit Sector | |||
Concept | Value | Concept | Value | Concept | Value |
Asthma | 0.1 | Draught | 0.1 | Destroyed roads | 0 |
Death | 0.1 | Water shortage | 0.1 | Infrastructure damage | 0 |
Fatigue | 0.1 | Blackout/Power shortage | 0 | Intolerable subway/transit platforms | 0 |
Harmful for elderly | 0.1 | Decreased fire hydrant pressure | 0 | Less comfortable commute | 0 |
Cardiac arrest | 0.1 | More accidents | 0.1 | ||
Heat stroke | 0.1 | ||||
Hyperthermia | 0.1 | ||||
Illness | 0.1 | ||||
People and animals cooling off problem | 0.1 |
Appendix B. Perceived Extent of Climate Change Impacts in the Future
Appendix C. Importance of Different Urban Sector in Future Heat Wave Adaptation
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Approaches | Heat Wave Adaptation Measures |
---|---|
Risk management approaches | Identification and mapping of at-risk groups |
Communication strategy involving heat alerts | |
Promotion of behavioral modification | |
Education and awareness programs on minimizing harm from heat | |
Coordinated responses within and between agencies for preparedness planning and emergency response | |
Vulnerability approaches | Direct engagement with vulnerable people through support of social networks and partnerships |
Improve housing quality, for example, retrofitting | |
Improve access to healthcare and social services | |
Improve access to cool public and private spaces, for example, air-conditioning concessions | |
Integrate thermal considerations, shading, and vegetation into urban design and planning | |
Address access and mobility considerations, for example, shade at bus stops | |
Coordinated responses within and between agencies in planning and emergency and long-term responses |
Subject | Chi-Square | Asymp. Sig. |
---|---|---|
Personal life | 12.661 | 0.005 |
Family | 10.283 | 0.016 |
Community/neighborhood | 5.033 | 0.169 |
Borough | 5.033 | 0.169 |
NYC in general | 16.184 | 0.001 |
Future generations | 16.724 | 0.001 |
Plant and animal species | 16.782 | 0.001 |
Public property (e.g., roads, schools, public buildings) | 1.584 | 0.663 |
People’s private property (e.g., homes, cars, boats) | 5.082 | 0.166 |
Subject | Location of Significant Differences (between Income Groups) | Mann–Whitney-U | Z-Score | Asymp. Sig. | |
---|---|---|---|---|---|
Personal life | In poverty | Low Income Group | 9981.000 | −0.130 | 0.896 |
Middle Income Group | 14,616.500 | −2.154 | 0.031 | ||
High Income Group | 2751.500 | −1.862 | 0.063 | ||
Low Incomeguifen1 | Middle Income Group | 32,334.000 | −3.019 | 0.003 | |
High Income Group | 6085.000 | −2.214 | 0.027 | ||
Middle Income Group | High Income Group | 12,034.500 | −0.282 | 0.778 | |
Family | In poverty | Low Income Group | 9150.000 | −0.376 | 0.707 |
Middle Income Group | 14,061.500 | −2.104 | 0.035 | ||
High Income Group | 2348.500 | −2.380 | 0.017 | ||
Low Income | Middle Income Group | 31,587.000 | −2.154 | 0.031 | |
High Income Group | 5313.000 | −2.265 | 0.023 | ||
Middle Income Group | High Income Group | 10,291.000 | −1.067 | 0.286 | |
New York City in general | In poverty | Low Income Group | 9621.000 | −0.007 | 0.995 |
Middle Income Group | 13,882.000 | −2.612 | 0.009 | ||
High Income Group | 2490.000 | −2.500 | 0.012 | ||
Low Income | Middle Income Group | 31,329.500 | −3.175 | 0.001 | |
High Income Group | 5667.0008 | −2.555 | 0.011 | ||
Middle Income Group | High Income Group | 11,523.500 | −0.689 | 0.491 | |
Future generation | In poverty | Low Income Group | 7672.500 | −0.260 | 0.795 |
Middle Income Group | 11,739.500 | −2.502 | 0.012 | ||
High Income Group | 1906.500 | −2.924 | 0.003 | ||
Low Income | Middle Income Group | 28,845.500 | −2.898 | 0.004 | |
High Income Group | 4730.5 | −2.995 | 0.003 | ||
Middle Income Group | High Income Group | 10,084.0 | −1.284 | 0.199 | |
Plant and animal species | In poverty | Low Income Group | 8328.5 | −2.076 | 0.038 |
Middle Income Group | 12,830.5 | −3.782 | 0.000 | ||
High Income Group | 2445.0 | −2.803 | 0.005 | ||
Low Income | Middle Income Group | 32,844.0 | −2.178 | 0.029 | |
High Income Group | 6238.5 | −1.402 | 0.161 | ||
Middle Income Group | High Income Group | 12,071.0 | −0.077 | 0.938 |
Urban Sectors | Chi-Square | Asymp. Sig. |
---|---|---|
The water supply | 4.542 | 0.209 |
The public’s health | 6.561 | 0.087 |
The drainage and sewer system | 2.001 | 0.572 |
The subway and rail system | 2.683 | 0.443 |
The electricity system | 2.530 | 0.470 |
The building stock, e.g., through insulation | 1.782 | 0.619 |
Urban greenery and parks | 8.384 | 0.039 |
The road system | 7.675 | 0.053 |
Urban Sector | Location of Significant Differences (Between Income Groups) | Mann–Whitney-U | Z-Score | Asymp. Sig. | |
---|---|---|---|---|---|
Urban greenery and parks | In poverty | Low Income Group | 10,627.0 | −0.023 | 0.981 |
Middle Income Group | 16,054.5 | −1.773 | 0.076 | ||
High Income Group | 2999.5 | −1.473 | 0.141 | ||
Low Income | Middle Income Group | 34,670.0 | −2.462 | 0.014 | |
High Income Group | 6466.0 | −1.777 | 0.076 | ||
Middle Income Group | High Income Group | 12,256.5 | −0.305 | 0.761 |
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Matmir, S.; Reckien, D.; Flacke, J. What do New Yorkers Think about Impacts and Adaptation to Heat Waves? An Evaluation Tool to Incorporate Perception of Low-Income Groups into Heat Wave Adaptation Scenarios in New York City. ISPRS Int. J. Geo-Inf. 2017, 6, 229. https://doi.org/10.3390/ijgi6080229
Matmir S, Reckien D, Flacke J. What do New Yorkers Think about Impacts and Adaptation to Heat Waves? An Evaluation Tool to Incorporate Perception of Low-Income Groups into Heat Wave Adaptation Scenarios in New York City. ISPRS International Journal of Geo-Information. 2017; 6(8):229. https://doi.org/10.3390/ijgi6080229
Chicago/Turabian StyleMatmir, Sadra, Diana Reckien, and Johannes Flacke. 2017. "What do New Yorkers Think about Impacts and Adaptation to Heat Waves? An Evaluation Tool to Incorporate Perception of Low-Income Groups into Heat Wave Adaptation Scenarios in New York City" ISPRS International Journal of Geo-Information 6, no. 8: 229. https://doi.org/10.3390/ijgi6080229
APA StyleMatmir, S., Reckien, D., & Flacke, J. (2017). What do New Yorkers Think about Impacts and Adaptation to Heat Waves? An Evaluation Tool to Incorporate Perception of Low-Income Groups into Heat Wave Adaptation Scenarios in New York City. ISPRS International Journal of Geo-Information, 6(8), 229. https://doi.org/10.3390/ijgi6080229