可预测性
计算机科学
机器学习
人工智能
多重共线性
代表(政治)
预测建模
钥匙(锁)
数据挖掘
统计
数学
回归分析
计算机安全
政治
政治学
法学
作者
Shoobhangi Tyagi,Xiang Zhang,Dharmendra Saraswat,Sandeep Sahany,Saroj K. Mishra,Dev Niyogi
出处
期刊:Earth’s Future
[American Geophysical Union]
日期:2022-10-06
卷期号:10 (11)
被引量:72
摘要
Abstract This paper reviews the Flash Drought concept, the uncertainties associated with FD prediction, and the potential of Machine Learning (ML) and Deep learning (DL) for future applications. For this, 121 relevant articles covering different aspects of FD ‐ definitions, key indicators, distinguishing characteristics, and the current methods for FD assessment (i.e., ‐ monitoring, prediction, and impact assessment) are examined. FD is typically a short‐term drought event ‐ characterized by the rapid progression of heat waves and precipitation deficits, causing cascading impacts on the land and surface hydrology. FD prediction is constrained by the lack of consistent FD definitions, key indicators, the limited predictability of FD at the subseasonal‐ to‐seasonal (S2S) timescale, and uncertainties associated with the current prediction methods. Some of the uncertainties in the current methods are associated with a lack of our understanding of the physical processes. They are also related to the error in the input datasets (imperfect representation of indicators), parameter uncertainty (parameterization scheme adopted by the prediction model), multicollinearity, nonlinear, and non‐stationary interactions among different indicators. Combining traditional methods and multisource fusion data with ML and DL methods shows promise to better understand FD evolution and improves prediction.
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