Probabilistic vs deterministic forecasts – interpreting skill statistics for the benefit of users

IF 1 4区 环境科学与生态学 Q4 WATER RESOURCES Water SA Pub Date : 2023-07-31 DOI:10.17159/wsa/2023.v49.i3.4058
W. Landman, M. Tadross, E. Archer, P. Johnston
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Abstract

Owing to probabilistic uncertainties associated with seasonal forecasts, especially over areas such as southern Africa where forecast skill is limited, non-climatologists and users of such forecasts frequently prefer them to be presented or distributed in terms of the likelihood (expressed as a probability) of certain categories occurring or thresholds being exceeded. Probabilistic forecast verification is needed to verify such forecasts. Whilst the resulting verification statistics can provide clear insights into forecast attributes, they are often difficult to understand, which might hinder forecast uptake and use. This problem can be addressed by issuing forecasts with some understandable evidence of skill, with the purpose of reflecting how similar forecasts may have performed in the past. In this paper, we present a range of different probabilistic forecast verification scores, and determine if these statistics can be readily compared to more commonly known and understood ‘ordinary’ correlations between forecasts and their associated observations – assuming that ordinary correlations are more intuitively understood and informative to seasonal forecast users. Of the range of scores considered, the relative operating characteristics (ROC) was found to be the most intrinsically similar to correlation.
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概率预测与确定性预测——为用户的利益解释技能统计数据
由于与季节预报有关的概率不确定性,特别是在预报技能有限的南部非洲等地区,非气候学家和这种预报的使用者往往倾向于以某些类别发生或超过阈值的可能性(以概率表示)来提出或分发预报。为了验证这种预测,需要进行概率预测验证。虽然结果验证统计数据可以为预测属性提供清晰的见解,但它们通常很难理解,这可能会阻碍预测的吸收和使用。这个问题可以通过发布带有一些可理解的技能证据的预测来解决,其目的是反映过去类似预测的表现。在本文中,我们提出了一系列不同的概率预测验证分数,并确定这些统计数据是否可以很容易地与更常见和理解的预测与其相关观测之间的“普通”相关性进行比较-假设普通相关性更直观地理解并为季节性预测用户提供信息。在考虑的评分范围内,相对操作特征(ROC)被发现与相关性最本质相似。
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来源期刊
Water SA
Water SA 环境科学-水资源
CiteScore
2.80
自引率
6.70%
发文量
46
审稿时长
18-36 weeks
期刊介绍: WaterSA publishes refereed, original work in all branches of water science, technology and engineering. This includes water resources development; the hydrological cycle; surface hydrology; geohydrology and hydrometeorology; limnology; salinisation; treatment and management of municipal and industrial water and wastewater; treatment and disposal of sewage sludge; environmental pollution control; water quality and treatment; aquaculture in terms of its impact on the water resource; agricultural water science; etc. Water SA is the WRC’s accredited scientific journal which contains original research articles and review articles on all aspects of water science, technology, engineering and policy. Water SA has been in publication since 1975 and includes articles from both local and international authors. The journal is issued quarterly (4 editions per year).
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