基于 K-means 方法的高频雷达误差分类和预测

IF 4.6 Q2 MATERIALS SCIENCE, BIOMATERIALS
Zhaoyi Wang, Marie Drevillon, Pierre De Mey-Frémaux, Elisabeth Remy, Nadia Ayoub, Dakui Wang, Bruno Levier
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引用次数: 0

摘要

本研究旨在利用基于改进的欧氏距离计算方法的 K-means 分类算法,对比斯开湾东南部(研究区域)的高频雷达和数值模拟的低频滤波海流进行特征描述。根据这种分类方法,对观测和模拟之间的误差进行了估计和预测。结果表明,冬季西班牙(法国)大陆架/斜坡上主要是向东(向北)的洋流,夏季西部和西南部的洋流变化较大。环流特征的模式分类结果与高频雷达结果相对吻合,尤其是西班牙(法国)大陆架/斜坡上的海流。此外,还探讨了观测到的海流与模式海流之间的概率关系,获得了每组观测到的海流出现时模式海流组出现的概率。最后,根据分类结果对模型和观测海流误差进行了预测,结果发现,基于所有数据分类的预测误差最小,比未分类的对照实验提高了 17%。这项研究为后续的模型误差测试、预报产品改进和数据同化奠定了基础。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
High frequency radar error classification and prediction based on K-means methods
This study aims to characterize the high frequency radar and numerically simulated low-frequency filtered currents in the south-eastern Bay of Biscay (study area) using a K-means classification algorithm based on an improved Euclidean Distance calculation method that does not take missing values. The errors between observations and simulations was estimated and predicted based on this classification method. Results indicate that predominantly eastward (northward) currents over the Spanish (French) continental shelf/slope in winter and more variable currents in the west and south-west in summer. The model classification results for circulation characteristics are in relatively good agreement with HF radar results, especially for currents on the Spanish (French) shelf/slope. In addition, the probabilistic relationship between observed and modeled currents was explored, obtaining the probability of occurrence of modeled current groups when each group of observed currents occurs. Finally, predictions of model and observed current errors were made based on the classification results, and it was found that the predictions based on the classification of all data had the smallest errors, with a 17% improvement over the unclassified control experiment. This study provides a foundation for subsequent model error testing, forecast product improvement and data assimilation.
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来源期刊
ACS Applied Bio Materials
ACS Applied Bio Materials Chemistry-Chemistry (all)
CiteScore
9.40
自引率
2.10%
发文量
464
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