Scientometric Analysis-Based Review for Drought Modelling, Indices, Types, and Forecasting Especially in Asia
Abstract
:1. Introduction
2. Methodology
3. Results and Discussion on Scientometric Analysis
3.1. Subject Area and Annual Publication Pattern of Articles
3.2. Keywords Mapping
3.3. Co-Authorship Mapping
3.4. Countries
4. Types of Drought
4.1. Agricultural Drought
4.2. Hydrological Drought
4.3. Meteorological Drought
4.4. Socio-Economic Drought
5. Drought Indices
5.1. Palmer Drought Severity Index
5.2. Surface Water Supply Index
5.3. Percent of Normal Precipitation Index (PNPI)
5.4. Crop Moisture Index
5.5. Standard Precipitation Index
5.6. Evaporative Stress Index
5.7. Vegetation Drought Response Index
5.8. Process-Based Accumulated Drought Index
6. Drought Modelling and Forecasting
6.1. Dynamic Modelling
6.2. Probabilistic Modelling
6.3. Stochastic Modelling
7. Case Study of Asia
7.1. Case Study of China
7.2. Case Study of India
7.3. Case Study of Pakistan
7.4. Case Study Iran
8. Summary and Future Recommendation
- Scientometric analysis of data retrieved from the Scopus database revealed that the top three fields in terms of document count were Environmental Science, Agriculture and Biological Science, and Earth and Planetary Science, accounting for 28 percent, 28 percent, and 27 percent, respectively, of total documents. Up until 2019–2020, a small rise in the number of articles about drought was seen. Moreover, for 2021, data were collected from January -June, which indicate a significant decline in the publications. However, it may be improved in the remaining months of 2021.
- Drought, Asia, climate change, and China are the top four most-occurring terms. Additionally, China, Germany, and the United States supplied the greatest number of papers to the present subject of research. Additionally, with 856 citations, Li j. was the most referenced author.
- Meteorological droughts occur when there is a cumulative deficit of atmospheric precipitation, followed by agricultural droughts, social economic droughts, and hydrological droughts.
- The drought index categorizes droughts based on their meteorological, agricultural, socioeconomic, and hydrological characteristics. It is critical to establish a clear connection between agricultural, meteorological, social economic droughts, and hydrological droughts to reveal transmission patterns and threshold criteria. Additionally, it is critical to carefully monitor droughts and provide early notice when one occurs.
- There is a never-ending endeavor to create resourceful drought indices with the goal of enhancing drought monitoring and creating more accurate drought metrics. Drought indices can only characterize drought conditions using hydrometeorological variables and cannot quantify economic damages, according to the authors.
- Drought research in China continues to confront many obstacles. Drought creation is unique in China, and global warming and fast societal change have exacerbated the issue’s complexity. Drought monitoring using the SPI is widely recognized in Pakistan. In arid and rainfed areas, the SPI frequently does not sufficiently represent drought conditions (such as their onset). Research shows that the GDP has been reduced in India due to a large decrease in food grain production, which corresponds to a large deficit in monsoon rainfall. The geographic analysis of Iran showed that there was a severe drought in the country’s east, southwest, west, and center for many months.
- Three types of modelling techniques, dynamic, probabilistic, and stochastic, are discussed in this study. In drought forecasting, dynamic modelling for real-time forecasting is well-known. Remote-sensing data are often used as an input for dynamic modelling. Another method used probabilistic modelling and Markov chains to predict future drought occurrences based on the likelihood. Similarly, the ARIMA model was discovered for forecasting time series with short lead periods with reasonable accuracy.
Future Recommendations
- Future drought predictions should strive to include the benefits of dynamic modelling, probabilistic, and stochastic forecasting techniques. Due to its ability to identify direct drought effects while filtering out indirect drought effects and their consequences, big data systems are expected to be a future trend in drought modelling.
- In the long run, there should be an emphasis on the relationship between hydrological and meteorological factors, not the time lag between them, which needs further study.
- The method employed and the models used do not take into account the important details of local climates, watershed features, and human influences that are typically needed for drought forecasting in Asia.
- The connection between meteorological, hydrological, soil moisture, and vegetation drought will be investigated in the future with additional quantitative characteristics.
- A basic agent-based drought risk model for smallholder farmers in semi-arid areas will be established.
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
References
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Keyword | Occurrences | Total Link Strength |
---|---|---|
Drought | 920 | 2257 |
Asia | 398 | 1310 |
Climate change | 513 | 1263 |
China | 320 | 978 |
Eurasia | 153 | 648 |
Article | 189 | 629 |
Precipitation | 187 | 621 |
Far east | 151 | 586 |
Rain | 137 | 496 |
Seasonal variation | 115 | 450 |
Monsoon | 132 | 435 |
Drought stress | 173 | 412 |
Southeast Asia | 136 | 403 |
Droughts | 111 | 398 |
Rainfall | 109 | 396 |
Forestry | 120 | 380 |
Water supply | 110 | 369 |
El Nino-southern oscillation | 111 | 363 |
South Asia | 119 | 338 |
Central Asia | 154 | 330 |
Author | Documents | Citations | Total Link Strength |
---|---|---|---|
dai a | 5 | 2527 | 19 |
cook e.r. | 11 | 1384 | 27 |
anchukaitis k.j. | 9 | 1383 | 18 |
buckley b.m. | 9 | 1311 | 17 |
randerson j.t. | 7 | 1010 | 5 |
darrigo r.d | 5 | 1009 | 10 |
liu y. | 35 | 906 | 67 |
li j. | 26 | 856 | 72 |
chen j. | 17 | 855 | 32 |
li y. | 32 | 846 | 71 |
chen y. | 21 | 837 | 28 |
kumar a. | 21 | 809 | 15 |
zhou t. | 10 | 798 | 61 |
zhang j. | 29 | 783 | 15 |
li s. | 17 | 633 | 32 |
zhang q. | 15 | 610 | 27 |
li x. | 27 | 560 | 57 |
chen x. | 21 | 600 | 43 |
Country | Documents | Citations | Total Link Strength |
---|---|---|---|
China | 668 | 14,396 | 227,494 |
United states | 482 | 19,625 | 203,129 |
Germany | 192 | 5693 | 103,144 |
United Kingdom | 161 | 5555 | 78,391 |
Australia | 140 | 3795 | 66,910 |
India | 242 | 5152 | 58,147 |
Japan | 153 | 3494 | 55,803 |
Sweden | 49 | 1521 | 44,583 |
South Korea | 82 | 940 | 34,951 |
France | 65 | 2206 | 33,035 |
Italy | 54 | 3676 | 32,569 |
Spain | 37 | 1426 | 32,306 |
Netherlands | 52 | 2598 | 30,520 |
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Wu, D.; Li, Y.; Kong, H.; Meng, T.; Sun, Z.; Gao, H. Scientometric Analysis-Based Review for Drought Modelling, Indices, Types, and Forecasting Especially in Asia. Water 2021, 13, 2593. https://doi.org/10.3390/w13182593
Wu D, Li Y, Kong H, Meng T, Sun Z, Gao H. Scientometric Analysis-Based Review for Drought Modelling, Indices, Types, and Forecasting Especially in Asia. Water. 2021; 13(18):2593. https://doi.org/10.3390/w13182593
Chicago/Turabian StyleWu, Dan, Yanan Li, Hui Kong, Tingting Meng, Zenghui Sun, and Han Gao. 2021. "Scientometric Analysis-Based Review for Drought Modelling, Indices, Types, and Forecasting Especially in Asia" Water 13, no. 18: 2593. https://doi.org/10.3390/w13182593
APA StyleWu, D., Li, Y., Kong, H., Meng, T., Sun, Z., & Gao, H. (2021). Scientometric Analysis-Based Review for Drought Modelling, Indices, Types, and Forecasting Especially in Asia. Water, 13(18), 2593. https://doi.org/10.3390/w13182593