Air Pollution and Climate Change Risk Perception among Residents in Three Cities of the Mexico Megalopolis
Abstract
:1. Introduction
2. Materials and Methods
2.1. Study Zone Description
2.1.1. Mexico City Metropolitan Area
2.1.2. Toluca Valley Metropolitan Area
2.1.3. Cuernavaca Metropolitan Area
2.2. Sample and Respondent Characteristics
2.3. Questionnaire
2.4. Air Quality Perception
2.5. Air Quality Risk Perception, Beliefs, and Attitudes
2.6. Air Pollution Causal Attributions
2.7. Perceived Air Pollution Consequences and Health Relationships
2.8. Statistical Analysis
3. Results
3.1. Air Quality Perception
3.2. Air Quality Risk Perception
3.3. Causal Attribution Perception
3.4. Air Quality Consequences and Health
4. Discussion
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Total | MCMA | TVMA | CMA | |
---|---|---|---|---|
Municipalities | 45 | 21 | 16 | 8 |
Respondents | 1750 | 900 | 530 | 320 |
Personal data | ||||
Men | 875 | 450 | 265 | 160 |
Women | 875 | 450 | 265 | 160 |
18–25 years old | 345 | 175 | 106 | 64 |
26–35 years old | 345 | 174 | 107 | 64 |
36–45 years old | 336 | 172 | 100 | 64 |
46–55 years old | 376 | 204 | 111 | 106 |
56–70 years old | 348 | 64 | 61 | 67 |
Highest education level | ||||
Elementary school | 176 | 36 | 88 | 52 |
Middle school or technical career | 505 | 251 | 161 | 93 |
High school | 582 | 327 | 156 | 99 |
Bachelor’s degree | 377 | 204 | 107 | 66 |
Graduate studies | 60 | 32 | 18 | 10 |
Highest socioeconomic level | 343 | 200 | 90 | 53 |
Middle-high socioeconomic level | 366 | 220 | 89 | 57 |
Middle socioeconomic level | 353 | 178 | 107 | 68 |
Middle-low socioeconomic level | 296 | 132 | 105 | 59 |
Low socioeconomic level | 213 | 100 | 68 | 45 |
Lowest socioeconomic level | 189 | 70 | 71 | 38 |
Uses car frequently | 443 | 235 | 100 | 108 |
Uses public transport frequently | 1124 | 595 | 336 | 193 |
Uses bicycle frequently | 183 | 70 | 94 | 19 |
Dependent Variable | Question | Response Categories |
---|---|---|
Air quality perception of the city/town | The air quality you breathe in the metropolitan area is: | Five answers from very bad to very good |
When compared to other cities in the country, the air in the metropolitan area is: | Three answers from much less polluted to more polluted | |
When comparing the current situation to 10 years ago, the air in the metropolitan area was: | ||
If we continue the same path, in 10 years, the air in the metropolitan area will be: |
Dependent Variable | Question | Response Categories |
---|---|---|
Level of risk perception | Thinking about the entire metropolitan area, air pollution is: | Four answers from Not at all risky to very risky |
Frequency of risk perception | Thinking about the entire metropolitan area, air pollution is: | Not at all frequent to very frequent |
Exposure to air pollution | In which month is there the greatest air pollution? | Multiple-choice answer with the 12 months of the year |
Beliefs | Taking care of air quality is: | Four answers from Unnecessary to very necessary |
Taking care of air quality is: | Four answers from Unhelpful to very helpful | |
Taking care of air quality is: | Four answers from Very difficult to very easy | |
How much does it influence air quality? List of 7 environmental phenomena | Four answers from None to A lot |
Factorial Analysis | % Variance Explained | Alpha | |
---|---|---|---|
Behavioral factor | |||
How much… | |||
can you protect yourself from climate change? | 0.800 | 21.706% | 0.739 |
can you protect yourself from air pollution? | 0.754 | ||
are you prepared to deal with climate change? | 0.644 | ||
are you prepared to deal with air pollution? | 0.572 | ||
Cognitive factor | 21.208% | 0.663 | |
How much do you… | |||
have an awareness of air quality? | 0.701 | ||
identify areas with better and worse air quality? | 0.668 | ||
know what to do to face climate change? | 0.635 | ||
know what to you if air quality is bad? | 0.634 | ||
Affective factor | 14.973% | 0.627 | |
How much… | |||
are you concerned about air quality? | 0.845 | ||
are you concerned about climate change? | 0.838 | ||
Total | 57.888% | 0.772 |
Factorial Analysis | % Variance Explained | Alpha | |
---|---|---|---|
Causal attribution to stationary sources | |||
How much do the following industrial activities pollute the air? | |||
Cement plant | 0.855 | 14.503% | 0.889 |
Brickyard | 0.837 | ||
Mine | 0.815 | ||
Factory | 0.741 | ||
Causal attribution to area sources | |||
How much do the following activities and services pollute the air? | |||
Construction | 0.677 | 13.291% | 0.768 |
Businesses | 0.651 | ||
Hotels and resorts | 0.649 | ||
Mechanical, carpentry, tinsmithing, and printing workshops | 0.636 | ||
Charcoal- or wood-fired restaurants | 0.540 | ||
Gas stations | 0.537 | ||
Agricultural sowing and harvest | 0.498 | ||
Dumpsters | 0.383 | ||
Causal attribution to natural sources | |||
How much do the following natural events pollute the air? | |||
Blowing dust | 0.810 | 10.354% | 0.813 |
Erosion | 0.802 | ||
Forest fires | 0.691 | ||
Causal attribution to mobile sources (public services) | |||
How much do the following vehicles pollute the air? | |||
Trailers and trucks | 0.772 | 10.184% | 0.722 |
Buses from other cities | 0.714 | ||
Public transport | 0.606 | ||
Delivery and service trucks (e.g., gas, garbage) | 0.561 | ||
Causal attribution to mobile sources (individual services) | |||
How much do the following vehicles pollute the air? | |||
Taxi, Uber, Didi | 0.741 | 9.604% | 0.647 |
Private cars and trucks | 0.728 | ||
Motorcycles | 0.678 | ||
Total | 57.937% | 0.870 |
Factorial Analysis | % Variance Explained | Alpha | |
---|---|---|---|
How much do the following people pollute the air? | |||
Causal attribution to people (in general) | |||
Inhabitants of Mexico City | 0.918 | 42.813% | 0.817 |
Inhabitants of the Mexico City metropolitan area | 0.910 | ||
Inhabitants of their municipality or city | 0.606 | ||
Causal attribution to people (in particular) | |||
You and your family | 0.877 | 35.628% | 0.679 |
Neighbors in your neighborhood | 0.813 | ||
Total | 78.441% | 0.780 |
Factorial Analysis | % Variance Explained | Alpha | |
---|---|---|---|
Consequences on health and environment | |||
How much does air pollution…? | |||
Harm the quality of life | 0.764 | 45.420% | 0.783 |
Have effects on health | 0.725 | ||
Decrease life expectancy | 0.702 | ||
Damage plants, animals, and crops | 0.687 | ||
Affect mood and performance | 0.684 | ||
Contribute to climate change | 0.627 | ||
Deteriorate the constructions | 0.494 |
Factorial Analysis | % Variance Explained | Alpha | |
---|---|---|---|
Consequences of air pollution on people | |||
How much do the following people suffer the consequences of air pollution? | |||
Neighbors in your neighborhood | 0.873 | 66.791% | 0.875 |
Inhabitants of their municipality or city | 0.863 | ||
You and your family | 0.832 | ||
Inhabitants of Mexico City | 0.772 | ||
Inhabitants of the Mexico City metropolitan area | 0.738 |
MCMA | TVMA | CMA | H (2) | p | ||
---|---|---|---|---|---|---|
Mobile sources: Private vehicles | ||||||
Cars and Vans | Nothing | 0.6% | 0.4% | 1.3% | 73.94 | 0.000 |
Little | 14.7% | 20.0% | 29.1% | |||
Something | 31.2% | 44.3% | 39.1% | |||
Much | 53.6% | 35.3% | 30.6% | |||
Motorcycles | Nothing | 2.4% | 4.5% | 5.3% | 63.58 | 0.000 |
Little | 27.6% | 39.4% | 38.8% | |||
Something | 34.4% | 37.4% | 35.9% | |||
Much | 35.6% | 18.7% | 20.0% | |||
Taxis, Uber | Nothing | 2.9% | 4.0% | 7.5% | 43.02 | 0.000 |
Little | 27.0% | 31.5% | 32.8% | |||
Something | 32.3% | 42.3% | 40.0% | |||
Much | 37.8% | 22.3% | 19.7% | |||
Mobile sources: Service vehicles | ||||||
Foreign Buses | Nothing | 12.6% | 4.9% | 6.3% | 2.14 | 0.343 |
Little | 23.0% | 21.7% | 23.1% | |||
Something | 20.3% | 33.0% | 33.1% | |||
Much | 44.1% | 40.4% | 37.5% | |||
Delivery and service trucks | Nothing | 1.7% | 0.9% | 1.3% | 36.02 | 0.000 |
Little | 16.7% | 18.9% | 26.6% | |||
Something | 29.3% | 42.1% | 37.5% | |||
Much | 52.3% | 38.1% | 34.7% | |||
Trailers and cargo trucks | Nothing | 4.1% | 3.4% | 8.8% | 2.48 | 0.290 |
Little | 13.3% | 13.2% | 12.8% | |||
Something | 17.3% | 18.9% | 16.6% | |||
Much | 65.2% | 64.5% | 61.9% | |||
Public transportation | Nothing | 1.9% | 2.6% | 3.8% | 32.22 | 0.000 |
Little | 12.1% | 11.3% | 15.3% | |||
Something | 19.8% | 29.6% | 33.4% | |||
Much | 66.2% | 56.4% | 47.5% | |||
Area sources: Services | ||||||
Construction | Nothing | 15.3% | 13.4% | 10.3% | 6.539 | 0.038 |
Little | 32.1% | 39.8% | 35.6% | |||
Something | 31.0% | 32.1% | 34.4% | |||
Much | 21.6% | 14.7% | 19.7% | |||
Businesses | Nothing | 8.9% | 8.3% | 12.2% | 9.282 | 0.010 |
Little | 32.8% | 40.4% | 39.7% | |||
Something | 41.2% | 36.2% | 32.5% | |||
Much | 17.1% | 15.1% | 15.6% | |||
Gas stations | Nothing | 6.4% | 5.5% | 10.9% | 7.772 | 0.021 |
Little | 22.9% | 23.2% | 23.8% | |||
Something | 35.6% | 31.9% | 34.1% | |||
Much | 35.1% | 39.4% | 31.3% | |||
Hotels and resorts | Nothing | 35.9% | 34.7% | 24.4% | 25.338 | 0.000 |
Little | 33.0% | 35.1% | 33.1% | |||
Something | 20.7% | 22.8% | 23.4% | |||
Much | 10.4% | 7.4% | 19.1% | |||
Charcoal- or wood-fired restaurants | Nothing | 10.4% | 8.7% | 12.2% | 8.193 | 0.017 |
Little | 21.7% | 24.5% | 28.4% | |||
Something | 33.9% | 35.5% | 32.5% | |||
Much | 34.0% | 31.3% | 26.9% | |||
Mechanical, carpentry, tinsmithing, and printing workshops | Nothing | 7.1% | 7.0% | 12.2% | 14.665 | 0.001 |
Little | 29.2% | 35.5% | 33.1% | |||
Something | 37.8% | 38.3% | 35.3% | |||
Much | 25.9% | 19.2% | 19.4% | |||
Agricultural sowing and harvest | Nothing | 56.9% | 35.8% | 30.3% | 75.721 | 0.000 |
Little | 22.1% | 36.6% | 35.9% | |||
Something | 13.0% | 18.3% | 21.6% | |||
Much | 8.0% | 9.2% | 12.2% | |||
Dumpsters | Nothing | 13.2% | 5.1% | 7.2% | 58.533 | 0.000 |
Little | 14.4% | 7.7% | 9.4% | |||
Something | 16.8% | 13.2% | 16.9% | |||
Much | 55.6% | 74.0% | 66.6% | |||
Stationary sources: | ||||||
Cement plants | Nothing | 54.7% | 23.0% | 22.8% | 157.962 | 0.000 |
Little | 13.8% | 18.3% | 14.7% | |||
Something | 12.3% | 29.6% | 27.2% | |||
Much | 19.2% | 29.1% | 35.3% | |||
Factories | Nothing | 36.2% | 11.5% | 23.1% | 127.361 | 0.000 |
Little | 10.8% | 8.9% | 12.2% | |||
Something | 13.1% | 12.1% | 11.3% | |||
Much | 39.9% | 67.5% | 53.4% | |||
Brickyards | Nothing | 56.3% | 20.9% | 27.2% | 167.627 | 0.000 |
Little | 13.7% | 21.1% | 21.6% | |||
Something | 12.3% | 24.9% | 25.0% | |||
Much | 17.7% | 33.0% | 26.3% | |||
Mines | Nothing | 67.9% | 30.4% | 31.9% | 232.553 | 0.000 |
Little | 9.7% | 16.0% | 13.4% | |||
Something | 8.9% | 22.6% | 16.9% | |||
Much | 13.6% | 30.9% | 37.8% | |||
Natural sources | ||||||
Erosion | Nothing | 26.0% | 11.5% | 9.7% | 90.078 | 0.000 |
Little | 25.8% | 19.1% | 24.4% | |||
Something | 23.7% | 27.9% | 28.1% | |||
Much | 24.6% | 41.5% | 37.8% | |||
Forest fires | Nothing | 31.7% | 7.0% | 5.3% | 254.376 | 0.000 |
Little | 18.1% | 8.9% | 10.9% | |||
Something | 14.4% | 15.5% | 13.1% | |||
Much | 35.8% | 68.7% | 70.6% | |||
Blowing dust | Nothing | 24.3% | 8.3% | 10.3% | 51.979 | 0.000 |
Little | 24.9% | 20.9% | 25.9% | |||
Something | 22.4% | 35.7% | 30.3% | |||
Much | 28.3% | 35.1% | 33.4% |
Attitudes About Air Quality | ||||||||
---|---|---|---|---|---|---|---|---|
City | C1 | C2 | C3 | C4 | ||||
Cognitive factor | ZMVM | 876.57 | 836.51 | 866.48 | 906.13 | |||
ZMVT | 862.05 | 896.82 | 859.86 | 838.28 | ||||
ZMC | 894.78 | 949.84 | 926.77 | 851.02 | ||||
H-statistic | 0.935 | 14.534 ** | 4.501 | 7.587 * | ||||
A1 | A2 | |||||||
Affective factor | ZMVM | 830.61 | 821.05 | |||||
ZMVT | 925.48 | 942.87 | ||||||
ZMC | 918.98 | 917.06 | ||||||
H-statistic | 19.629 *** | 30.385 *** | ||||||
B1 | B2 | B3 | B4 | |||||
Behavioral factor | ZMVM | 861.85 | 855.81 | 857.40 | 841.78 | |||
ZMVT | 870.32 | 866.94 | 882.45 | 908.90 | ||||
ZMC | 922.46 | 945.04 | 914.90 | 915.03 | ||||
H-statistic | 3.854 | 8.362 * | 3.571 | 9.185 * | ||||
Causal Attribution to Air Pollution | ||||||||
M1 | M2 | M3 | M4 | M5 | M6 | M7 | ||
Causal attribution to mobile sources | ZMVM | 883.74 | 863.33 | 926.86 | 937.64 | 946.35 | 965.10 | 964.15 |
ZMVT | 882.15 | 900.75 | 852.99 | 833.07 | 820.59 | 811.71 | 780.06 | |
ZMC | 841.31 | 867.91 | 768.34 | 771.01 | 767.20 | 729.14 | 784.24 | |
H-statistic | 2.478 | 2.139 | 32.222 *** | 36.021 *** | 43.016 *** | 73.943 *** | 63.576 * | |
AS1 | AS2 | AS3 | AS4 | AS5 | AS6 | AS7 | ||
Causal attribution to area sources | ZMVM | 888.47 | 907.39 | 850.46 | 916.66 | 896.64 | 877.12 | 782.51 |
ZMVT | 832.39 | 854.46 | 843.97 | 845.02 | 880.86 | 909.39 | 948.65 | |
ZMC | 910.44 | 820.64 | 998.16 | 810.22 | 807.18 | 814.82 | 1015.88 | |
H-statistic | 6.539 * | 9.282 * | 25.338 *** | 14.665 *** | 8.193 * | 0.021 * | 58.533 *** | |
N1 | N2 | N3 | ||||||
Causal attribution to natural sources | ZMVM | 795.42 | 768.40 | 703.42 | ||||
ZMVT | 978.17 | 999.09 | 1051.97 | |||||
ZMC | 930.68 | 972.01 | 1067.19 | |||||
H-statistic | 51.979 *** | 90.078 *** | 254.374 *** | |||||
S1 | S2 | S3 | S4 | |||||
Causal attribution to stationary sources | ZMVM | 735.17 | 732.80 | 709.78 | 763.22 | |||
ZMVT | 1009.87 | 1055.77 | 1044.52 | 1049.12 | ||||
ZMC | 1047.63 | 978.26 | 1061.65 | 903.75 | ||||
H-statistic | 157.962 *** | 167.727 *** | 232.553 *** | 127.361 *** | ||||
P1 | P2 | P3 | P4 | P5 | ||||
Causal attribution to people | ZMVM | 903.90 | 903.83 | 917.98 | 904.11 | 921.53 | ||
ZMVT | 914.76 | 912.53 | 848.43 | 865.34 | 844.07 | |||
ZMC | 730.61 | 734.49 | 800.87 | 811.86 | 798.09 | |||
H-statistic | 40.497 *** | 37.781 *** | 16.925 *** | 9.562 ** | 19.636 *** | |||
Perceived Air Pollution Consequences and Health | ||||||||
HE1 | HE2 | HE3 | HE4 | HE5 | HE6 | HE7 | ||
Consequences on health and environment | ZMVM | 876.97 | 862.68 | 901.25 | 887.29 | 908.67 | 868.83 | 908.22 |
ZMVT | 873.60 | 907.70 | 852.21 | 863.13 | 849.34 | 890.10 | 838.79 | |
ZMC | 874.50 | 858.23 | 841.66 | 862.84 | 825.54 | 870.07 | 844.29 | |
H-statistic | 0.026 | 5.441 | 6.892 * | 1.638 | 10.866 ** | 1.030 | 8.604 * | |
P1 | P2 | P3 | P4 | P5 | ||||
Consequences of air pollution on people | ZMVM | 918.81 | 939.56 | 940.50 | 890.27 | 892.34 | ||
ZMVT | 843.93 | 814.14 | 815.81 | 894.38 | 889.24 | |||
ZMC | 805.99 | 796.96 | 791.56 | 802.70 | 805.39 | |||
H-statistic | 16.610 *** | 35.048 *** | 35.219 *** | 11.348 ** | 10.670 ** |
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Landeros-Mugica, K.; Urbina-Soria, J.; Angeles-Hernández, D.I.; Gutiérrez-Arzaluz, M.; Mugica-Álvarez, V. Air Pollution and Climate Change Risk Perception among Residents in Three Cities of the Mexico Megalopolis. Atmosphere 2024, 15, 42. https://doi.org/10.3390/atmos15010042
Landeros-Mugica K, Urbina-Soria J, Angeles-Hernández DI, Gutiérrez-Arzaluz M, Mugica-Álvarez V. Air Pollution and Climate Change Risk Perception among Residents in Three Cities of the Mexico Megalopolis. Atmosphere. 2024; 15(1):42. https://doi.org/10.3390/atmos15010042
Chicago/Turabian StyleLanderos-Mugica, Karina, Javier Urbina-Soria, Diana Isabel Angeles-Hernández, Mirella Gutiérrez-Arzaluz, and Violeta Mugica-Álvarez. 2024. "Air Pollution and Climate Change Risk Perception among Residents in Three Cities of the Mexico Megalopolis" Atmosphere 15, no. 1: 42. https://doi.org/10.3390/atmos15010042
APA StyleLanderos-Mugica, K., Urbina-Soria, J., Angeles-Hernández, D. I., Gutiérrez-Arzaluz, M., & Mugica-Álvarez, V. (2024). Air Pollution and Climate Change Risk Perception among Residents in Three Cities of the Mexico Megalopolis. Atmosphere, 15(1), 42. https://doi.org/10.3390/atmos15010042