美国干旱监测系统周尺度分类干旱预测的多重马尔可夫链

IF 2.6 3区 地球科学 Q3 METEOROLOGY & ATMOSPHERIC SCIENCES
Junjie Cao, Fu Guan, Xiang Zhang, Won-Ho Nam, G. Leng, Haoran Gao, Qingqing Ye, Xihui Gu, J. Zeng, Xu Zhang, Tailai Huang, D. Niyogi
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引用次数: 1

摘要

预测干旱严重程度对干旱管理和早期预警系统至关重要。尽管基于物理模型和数据驱动的干旱预测方法已经提出了许多,但其能力在很大程度上受到数据需求和建模复杂性的限制。有效预测分类干旱仍然是一项具有挑战性的任务,特别是对美国干旱监测(USDM)而言。针对这一问题,本文成功提出了基于USDM的多马尔可夫链分类干旱预测方法,并对其进行了评价。本研究特别关注了马尔可夫阶数、步长和训练集长度如何影响预测精度(PA)。根据2000年至2021年的实验,发现一步和一阶马尔可夫模型在预测未来4周的干旱方面具有最好的准确性。随着步长尺度的增加,PA逐渐下降,月尺度的平均准确率为88%。在季节变异上,夏季(7 ~ 8月)PA最低,冬季(1 ~ 2月)PA最高。与西部地区相比,美国东部的PA高25%。此外,训练集的长度对模型的PA有明显的影响。20年和5年的单步预测PA分别为87%和78%。研究结果表明,马尔可夫模型在短期内具有较高的分类干旱预测精度,但在时间和空间尺度上表现不同。适当使用马尔可夫模型将有助于灾害管理人员和决策者将减灾政策和措施付诸实践。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multiple Markov Chains for Categorial Drought Prediction on United States Drought Monitor at Weekly Scale
Predicting drought severity is essential for drought management and early warning systems. Although numerous physical model-based and data-driven methods have been put forward for drought prediction, their abilities are largely constrained by data requirements and modeling complexity. There remains a challenging task to efficiently predict categorial drought, especially for the United States Drought Monitor (USDM). Aiming at this issue, multiple Markov chains for USDM based categorial drought prediction are successfully proposed and evaluated in this paper. In particular, this study concentrated on how the Markov order, step size, and training set length affected prediction accuracy (PA). According to the experiments from 2000 to 2021, it was found the one-step and first-order Markov models had the best accuracy in predicting droughts up to 4 weeks ahead. The PA steadily dropped with increasing step scale, and the average accuracy at monthly scale was 88%. In terms of seasonal variability, summer (July-August) had the lowest PA while winter had the highest (January-February). In comparison to the western region, the PA in the eastern US is 25% higher. Moreover, the length of the training set had obvious impact on the PA of the model. The PA in one-step prediction was 87% and 78% under 20-year and 5-year training sets respectively. The results of the study showed that Markov models predicted categorical drought with high accuracy in the short term and showed different performances on time and space scales. Proper use of Markov models would help disaster managers and policymakers to put mitigation policies and measures into practice.
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来源期刊
Journal of Applied Meteorology and Climatology
Journal of Applied Meteorology and Climatology 地学-气象与大气科学
CiteScore
5.10
自引率
6.70%
发文量
97
审稿时长
3 months
期刊介绍: The Journal of Applied Meteorology and Climatology (JAMC) (ISSN: 1558-8424; eISSN: 1558-8432) publishes applied research on meteorology and climatology. Examples of meteorological research include topics such as weather modification, satellite meteorology, radar meteorology, boundary layer processes, physical meteorology, air pollution meteorology (including dispersion and chemical processes), agricultural and forest meteorology, mountain meteorology, and applied meteorological numerical models. Examples of climatological research include the use of climate information in impact assessments, dynamical and statistical downscaling, seasonal climate forecast applications and verification, climate risk and vulnerability, development of climate monitoring tools, and urban and local climates.
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