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Evaluation of Drought Severity with a Bayesian Network Analysis of Multiple Drought Indices
- Kim, Soojun;
- Parhi, Pradipta;
- Jun, Hwandon;
- Lee, Jiho
WEB OF SCIENCE
26SCOPUS
27초록
Drought indices assimilate meteorological and/or hydrological information to come up with a comprehensible index. Over the last few decades, hundreds of drought indices have been developed in order to improve monitoring and impact assessment. For a particular drought event, these multiple indices sometimes indicate different levels of drought severity, creating confusion among stakeholders and posing challenges for decision making. To overcome the problem, this study suggests a novel methodology using a Bayesian network. There are several advantages of this proposed method: (1)it pools information from multiple drought indices and comes up with a better estimate for drought severity; (2)instead of a deterministic drought-severity outcome from the individual indices, it offers probabilistic estimates for drought severity; and (3)it reduces the uncertainty of the individual drought indices. The robustness of the methodology is further checked with a case study of an actual drought event in South Korea.
키워드
- 제목
- Evaluation of Drought Severity with a Bayesian Network Analysis of Multiple Drought Indices
- 저자
- Kim, Soojun; Parhi, Pradipta; Jun, Hwandon; Lee, Jiho
- 발행일
- 2018-01
- 유형
- Article
- 권
- 144
- 호
- 1