Analysis of the Multi-Dimensional Characteristics of City Weather Forecast Page Views and the Spatiotemporal Characteristics of Meteorological Disaster Warnings in China
Abstract
:1. Introduction
2. Study Domain and Data
2.1. Study Domain
2.2. Data
3. Results
4. Discussions
5. Conclusions
- (1)
- The prevalence of heat waves, typhoons, severe convective weather, and geological hazards triggered by heavy rainfall during the flood season has heightened public awareness and engagement with weather forecasts.
- (2)
- In contrast to weekends and holidays, weekdays witnessed a heightened focus on weather among the public. The disparity in city weather forecast page views between weekdays and national statutory holidays is even more pronounced.
- (3)
- Under various red meteorological disaster warnings, the public’s primary concerns were flash floods, typhoons, and geological risks. During orange alerts, flash floods, rainstorms, typhoons, snowstorms, and cold waves dominated the public’s attention. For yellow alerts, sandstorms were the most notable concern, while meteorological droughts remained relatively unheeded.
- (4)
- Examining the temporal dimension of meteorological warnings, it becomes evident that summer sees a notably higher issuance of such warnings compared to other seasons. Specifically, typhoons and rainstorms are the primary concerns in July, while August brings warnings for high temperatures and additional typhoons. Additionally, warnings for heavy sea surface winds, another highly seasonal phenomenon, are predominantly issued during winter.
- (5)
- Regionally, the most prevalent warnings were directed towards severe convection weather events in southern China, particularly affecting regions such as Jiangxi, Guangxi, and Hunan Province.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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No. | Meteorological Risk | No. | Meteorological Risk |
---|---|---|---|
1 | Agricultural drought | 13 | Low temperature |
2 | Cold wave | 14 | Low-temperature freezing risk |
3 | Continuously cloudy or rainy weather | 15 | Meteorological drought |
4 | Dense fog | 16 | Rainstorm |
5 | Dry and hot wind risk for winter wheat | 17 | Sandstorm |
6 | Flash flood risk | 18 | Severe convective weather |
7 | Geological risk | 19 | Snowstorm |
8 | Heavy sea surface wind | 20 | Strong wind |
9 | High temperature | 21 | Typhoon |
10 | High-risk forest fire | 22 | Waterlogging for summer corn |
11 | High-temperature risk for early-season rice | 23 | Waterlogging risk |
12 | High-temperature risk for single-season rice |
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Zhang, F.; Ding, J.; Chen, Y.; Yu, T.; Zhang, X.; Guo, J.; Liu, X.; Wang, Y.; Liu, Q.; Song, Y. Analysis of the Multi-Dimensional Characteristics of City Weather Forecast Page Views and the Spatiotemporal Characteristics of Meteorological Disaster Warnings in China. Atmosphere 2024, 15, 615. https://doi.org/10.3390/atmos15050615
Zhang F, Ding J, Chen Y, Yu T, Zhang X, Guo J, Liu X, Wang Y, Liu Q, Song Y. Analysis of the Multi-Dimensional Characteristics of City Weather Forecast Page Views and the Spatiotemporal Characteristics of Meteorological Disaster Warnings in China. Atmosphere. 2024; 15(5):615. https://doi.org/10.3390/atmos15050615
Chicago/Turabian StyleZhang, Fang, Jin Ding, Yu Chen, Tingzhao Yu, Xinxin Zhang, Jie Guo, Xiaodan Liu, Yan Wang, Qingyang Liu, and Yingying Song. 2024. "Analysis of the Multi-Dimensional Characteristics of City Weather Forecast Page Views and the Spatiotemporal Characteristics of Meteorological Disaster Warnings in China" Atmosphere 15, no. 5: 615. https://doi.org/10.3390/atmos15050615
APA StyleZhang, F., Ding, J., Chen, Y., Yu, T., Zhang, X., Guo, J., Liu, X., Wang, Y., Liu, Q., & Song, Y. (2024). Analysis of the Multi-Dimensional Characteristics of City Weather Forecast Page Views and the Spatiotemporal Characteristics of Meteorological Disaster Warnings in China. Atmosphere, 15(5), 615. https://doi.org/10.3390/atmos15050615