Estimating Fine-Scale Heat Vulnerability in Beijing Through Two Approaches: Spatial Patterns, Similarities, and Divergence
Abstract
:1. Introduction
2. Materials and Methods
2.1. Study Area
2.2. Data Sources
2.2.1. Land Surface Temperature and Normalized Difference Vegetation Index
2.2.2. Jiedao Socioeconomic Conditions
2.3. Heat Vulnerability Index
2.4. Analytic Methods
3. Results
3.1. Spatial Pattern of Heat Vulnerability in Beijing
3.2. Comparing PCA and EWI
4. Discussion
4.1. Spatial Patterns, Similarities, and Divergence of Heat Vulnerability in Beijing
4.2. Reasons for Differences between the PCA Approach and the EWI Approach
4.3. Limitations of This Study
4.4. The Implications for Future Research and Urban Planning
5. Conclusions
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
References
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Literature | Index | Approach | Principal Component/Factor | Variables |
---|---|---|---|---|
Reid et al. [13] | Heat vulnerability index | Principal components analysis (PCA) | Social/environmental vulnerability | Below poverty line |
Race other than white | ||||
Less than a high school (HS) diploma | ||||
No green space | ||||
Social isolation | Live alone | |||
Age ≥ 65 living alone | ||||
Prevalence of no air conditioning (AC) | No central AC | |||
No AC of any kind | ||||
Proportion of elderly/diabetes | Diabetes | |||
Age ≥ 65 years | ||||
Johnson et al. [14] | Extreme heat vulnerability index | PCA | 1 | Females age 65 and up |
Males age 65 and up | ||||
Females age 65 and up living alone | ||||
White population | ||||
Females head of household | ||||
Males age 65 and up living alone | ||||
Mean family income in 1989 | ||||
Per capita income in 1989 | ||||
Mean household income in 1989 | ||||
Population 25 and older with less than high school education | ||||
Asian population | ||||
Population age 65 and older in group living | ||||
2 | Other race population | |||
Hispanic population | ||||
Population 25 and older with a high school education | ||||
3 | Normalized difference built-up index (NDBI) | |||
Normalized difference vegetation index (NDVI) | ||||
4 | Black population | |||
Land surface temperature (LST) | ||||
Reid et al. [15] | Heat vulnerability index | PCA | Social/environmental Vulnerability | Below poverty line |
Race other than white | ||||
Less than a high school diploma | ||||
No green space | ||||
Social isolation | Live alone | |||
Age ≥ 65 living alone | ||||
Prevalence of no AC | No central AC | |||
No AC of any kind | ||||
Proportion of elderly/diabetes | Diabetes | |||
Age ≥ 65 years | ||||
Harlan et al. [18] | Heat vulnerability index | PCA | Socioeconomic vulnerability | Ethnic minority |
Latino immigrant | ||||
< Poverty line | ||||
No HS diploma | ||||
No central AC/cooler | ||||
Elderly/isolation | ≥ 65 years of age | |||
≥ 65 years of age × living alone | ||||
Living alone | ||||
Unvegetated area | Unvegetated area (mean) | |||
Unvegetated area (SD) | ||||
Bai et al. [16] | Heat vulnerability index | PCA | Poverty | Low income |
Low income among seniors | ||||
Low income households | ||||
Elderly/fragile health/illiterate | Age ≥ 60 | |||
Loss of labor ability | ||||
Illiterate | ||||
Social isolation | Living alone | |||
Age ≥ 60 living alone | ||||
Small dwelling | Households with only one room | |||
Households ≤ 8 m2 living spaces | ||||
Zhang et al. [25] | Heat risk index | Crichton’s Risk Triangle (a function of hazard, exposure, and vulnerability) | Hazard index | Daytime temperature |
Nighttime temperature | ||||
High temperature days | ||||
Air quality | ||||
Exposure index | Elderly population | |||
Elderly with disability | ||||
Low income elderly | ||||
Vulnerability index | Vegetation | |||
Water bodies | ||||
Terrain condition | ||||
Housing condition | ||||
Traffic convenience | ||||
Medical facilities | ||||
Hu et al. [26] | Excessive heat events (EHEs) | Total population exposed to the diurnal heat | Temperature | Near-surface air temperature |
Population | Commute-adjusted diurnal population |
Category | Independent Variable | Mean (range) | STD | Data Source |
---|---|---|---|---|
Demographic variables | Percentage of population ≥ 65 years of age (≥ 65) | 10.06 (2.13–24.54) | 3.98 | Tabulation on the Population Census of Beijing Municipality (2010) |
Percentage of population < 5 years of age (< 5) | 3.16 (1.32–5.72) | 0.86 | ||
Percentage of the population below high school education (below HS) | 35.98 (11.28–77.38) | 12.59 | ||
Percentage of population with a college education or above (college or above) | 37.23 (4.82–79.63) | 13.76 | ||
Percentage of illiterate population (illiteracy) | 1.18 (0.32–2.88) | 0.58 | ||
Percentage of population who live alone (living alone) | 9.36 (3.95–23.50) | 3.60 | ||
Percentage of unhealthy population over 60 (unhealthy seniors) | 15.51 (12.52–20.23) | 2.96 | ||
Average income 1 (income) | 29,340.01 (10,278.27–48,459.39) | 8540.04 | ||
Air conditioners | Number of air conditioners per 100 households (AC) | 0.56 (0.00–1.00) | 0.36 | Beijing Area Statistical Yearbook 2011 |
Land cover | The mean pixel-level (1 km*1 km) value of normalized difference vegetation index (NDVI) | 0.28 (0.03–0.70) | 0.13 | NDVI from Moderate-resolution imaging spectroradiometer (MODIS 2) data (July 2010) |
Land surface temperature | The mean of pixel-level (1 km*1 km) land surface temperature (LST) value of each jiedao | 38.33 (32.95–40.77) | 1.18 | LST from MODIS data (July 2010) |
Range | Assigned Value |
---|---|
< −1.25 | −3 |
−1.25 to −0.75 | −2 |
−0.75 to −0.25 | −1 |
−0.25 to 0.25 | 0 |
0.25 to 0.75 | 1 |
0.75 to 1.25 | 2 |
> 1.25 | 3 |
Factor 1: Illiteracy/Unhealthy/AC/Income | Factor 2: LST/NDVI | Factor 3: Living Alone/Below HS/College or Above | Factor 4: <5/≥ 65 | The Absolute Value of the Variable Weight | The Absolute Value of the Normalized Variable Weight | |
---|---|---|---|---|---|---|
Illiteracy | 0.387 (0.903) | −0.147 (−0.174) | 0.056 (0.009) | 0.131 (0.02) | 0.427 | 0.119 |
Unhealthy seniors | 0.286 (0.683) | 0.146 (0.403) | −0.005 (0.108) | 0.122 (0.19) | 0.549 | 0.153 |
AC | −0.193 (−0.574) | −0.205 (−0.33) | −0.009 (0.056) | 0.188 (0.271) | 0.219 | 0.061 |
Income | −0.193 (−0.531) | 0.162 (0.407) | −0.055 (0.188) | 0.158 (0.423) | 0.072 | 0.020 |
LST | −0.043 (−0.009) | 0.486 (0.911) | −0.021 (0.155) | −0.177 (0.008) | 0.245 | 0.068 |
NDVI | −0.017 (−0.084) | −0.431 (−0.866) | 0.112 (−0.079) | −0.022 (−0.224) | 0.358 | 0.099 |
Living alone | −0.126 (−0.268) | 0.07 (−0.049) | −0.546 (−0.81) | 0.273 (0.126) | 0.329 | 0.091 |
Below HS | 0.09 (0.346) | 0.014 (−0.226) | −0.334 (−0.743) | −0.044 (−0.387) | 0.274 | 0.076 |
College or above | −0.18 (−0.544) | −0.027 (0.146) | 0.352 (0.723) | −0.045 (0.274) | 0.099 | 0.028 |
< 5 | −0.035 (0.12) | 0.074 (−0.121) | 0.227 (−0.021) | −0.655 (−0.909) | 0.389 | 0.108 |
≥ 65 | 0.224 (0.365) | −0.11 (0.125) | 0.166 (0.5) | 0.358 (0.609) | 0.638 | 0.177 |
Total Variance Explained | |||||||||
---|---|---|---|---|---|---|---|---|---|
Com-ponent | Initial Eigenvalues | Extraction Sums of Squared Loadings | Rotation Sums of Squared Loadings | ||||||
Total | % of Variance | Cumulative % | Total | % of Variance | Cumulative % | Total | % of Variance | Cumulative % | |
1 | 3.61 | 32.80 | 32.80 | 3.61 | 32.80 | 32.80 | 2.54 | 23.05 | 23.05 |
2 | 2.50 | 22.70 | 55.50 | 2.50 | 22.70 | 55.50 | 2.15 | 19.56 | 42.61 |
3 | 1.38 | 12.57 | 68.07 | 1.38 | 12.57 | 68.07 | 2.06 | 18.74 | 61.35 |
4 | 1.04 | 9.44 | 77.50 | 1.04 | 9.44 | 77.50 | 1.78 | 16.15 | 77.50 |
5 | 0.70 | 6.40 | 83.90 | ||||||
6 | 0.52 | 4.71 | 88.62 | ||||||
7 | 0.48 | 4.41 | 93.02 | ||||||
8 | 0.30 | 2.71 | 95.73 | ||||||
9 | 0.24 | 2.17 | 97.90 | ||||||
10 | 0.20 | 1.83 | 99.73 | ||||||
11 | 0.03 | 0.27 | 100.00 |
Indicator | The Absolute Value of the EWI Coefficient | The Absolute Value of the Normalized PCA Coefficient | The Absolute Value of the PCA Coefficient | Percentage of Change |
---|---|---|---|---|
Education | 0.111 | 0.222 | 0.800 | 1.001 |
Population ≥ 65 | 0.111 | 0.177 | 0.638 | 0.595 |
Unhealthy seniors | 0.111 | 0.153 | 0.549 | 0.373 |
Population < 5 | 0.111 | 0.108 | 0.389 | −0.027 |
NDVI | 0.111 | 0.099 | 0.358 | −0.105 |
Living alone | 0.111 | 0.091 | 0.329 | −0.177 |
LST | 0.111 | 0.068 | 0.245 | −0.387 |
AC | 0.111 | 0.061 | 0.219 | −0.452 |
Income | 0.111 | 0.020 | 0.072 | −0.820 |
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Guo, X.; Huang, G.; Jia, P.; Wu, J. Estimating Fine-Scale Heat Vulnerability in Beijing Through Two Approaches: Spatial Patterns, Similarities, and Divergence. Remote Sens. 2019, 11, 2358. https://doi.org/10.3390/rs11202358
Guo X, Huang G, Jia P, Wu J. Estimating Fine-Scale Heat Vulnerability in Beijing Through Two Approaches: Spatial Patterns, Similarities, and Divergence. Remote Sensing. 2019; 11(20):2358. https://doi.org/10.3390/rs11202358
Chicago/Turabian StyleGuo, Xuan, Ganlin Huang, Peng Jia, and Jianguo Wu. 2019. "Estimating Fine-Scale Heat Vulnerability in Beijing Through Two Approaches: Spatial Patterns, Similarities, and Divergence" Remote Sensing 11, no. 20: 2358. https://doi.org/10.3390/rs11202358