Future Climate Data from RCP 4.5 and Occurrence of Malaria in Korea
Abstract
:1. Introduction
2. Malaria Occurrence in Korea
2.1. Trend of Malaria Occurrence
2.2. Data Collection
3. Methodology
3.1. Spectral Analysis
3.2. Brock-Dechert-Scheinkman(BDS) Statistic
3.3. Principal Components Regression
4. Modeling of Malaria and Climate Variables
4.1. Nonlinear Regression Analysis
Test method | Test statistic | 95% C. I. | Randomness Check | |
---|---|---|---|---|
Run Test | −7.3261 | [−1.96, +1.96] | X | |
Anderson | 0.1741 | [−1.65. +1.65] | O | |
Spearman | 0.5760 | [−1.96, +1.96] | O | |
Turning Point | −11.9868 | [−1.96, +1.96] | X | |
BDS(2) | 10.5150 | [−1.96, +1.96] | X | |
BDS(3) | 9.7895 | [−1.96, +1.96] | X | |
BDS(4) | 9.2964 | [−1.96, +1.96] | X | |
BDS(5) | 8.9231 | [−1.96, +1.96] | X |
4.2. PCA-Regression Analysis
4.3. Validation of Malaria Model
5. Malaria Occurrence under Climate Change
5.1. Climate Change Scenario
Senarios | Description | CO density (ppm) |
---|---|---|
RCP 2.6 | Peak in radiative forcing at ~3 W/m before 2100 year and then decline | 490 |
RCP 4.5 | Stabilization without overshoot pathway to ~4.5 W/m at stabilization after 2100 year | 650 |
RCP 6.0 | Stabilization without overshoot pathway to ~6 W/m at stabilization after 2100 year | 850 |
RCP 8.5 | Rising radiative forcing pathway leading to 8.5 W/m by 2100 year | 1370 |
5.2. Future Malaria Simulation and Analysis
6. Conclusions
- Correlation between malaria occurrence and monthly average temperature, relative humidity and precipitation data is analyzed with time lag effect between malaria occurrence and climate variables using spectral analysis between each variable. A strong coherency between each climate variable data is clear, thus regression model is analyzed under the influence of multicollinearity. To resolve this issue, principal component regression analysis based on PCA is used to establish a regression model. Using the regression model, malaria infection occurrences from 2009–2011 are tested and coefficient of determination is 0.852, NRSE is 0.117 and RE is 0.026, which clearly accounts for malaria infection.
- By applying climate data between 2011 and 2100 using the RCP 4.5 climate change scenario and the CNCM3 climate model to the regression model, future malaria occurrence is simulated. Analysis of simulated data shows the malaria occurrence trend in general will gradually increase. Also, in the future, the occurrence period will diminish and it shows an increase of malaria occurrence before the rainy season in summer; thus, adaptation in the malaria occurrence response plan of Korea is needed.
Acknowledgments
Author Contributions
Conflicts of Interest
References
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Kwak, J.; Noh, H.; Kim, S.; Singh, V.P.; Hong, S.J.; Kim, D.; Lee, K.; Kang, N.; Kim, H.S. Future Climate Data from RCP 4.5 and Occurrence of Malaria in Korea. Int. J. Environ. Res. Public Health 2014, 11, 10587-10605. https://doi.org/10.3390/ijerph111010587
Kwak J, Noh H, Kim S, Singh VP, Hong SJ, Kim D, Lee K, Kang N, Kim HS. Future Climate Data from RCP 4.5 and Occurrence of Malaria in Korea. International Journal of Environmental Research and Public Health. 2014; 11(10):10587-10605. https://doi.org/10.3390/ijerph111010587
Chicago/Turabian StyleKwak, Jaewon, Huiseong Noh, Soojun Kim, Vijay P. Singh, Seung Jin Hong, Duckgil Kim, Keonhaeng Lee, Narae Kang, and Hung Soo Kim. 2014. "Future Climate Data from RCP 4.5 and Occurrence of Malaria in Korea" International Journal of Environmental Research and Public Health 11, no. 10: 10587-10605. https://doi.org/10.3390/ijerph111010587
APA StyleKwak, J., Noh, H., Kim, S., Singh, V. P., Hong, S. J., Kim, D., Lee, K., Kang, N., & Kim, H. S. (2014). Future Climate Data from RCP 4.5 and Occurrence of Malaria in Korea. International Journal of Environmental Research and Public Health, 11(10), 10587-10605. https://doi.org/10.3390/ijerph111010587