上层海洋热场测量数据集

C. Sampson, J. Cummings, J. Knaff, M. DeMaria, Efren A. Serra
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摘要

上层海洋通过一系列复杂的相互作用为热带气旋的发展和维持提供了热能来源。在这项工作中,我们开发了一个17年的上层海洋热场指标数据集,用于热带气旋研究和热带气旋强度预测模型的开发。这些指标包括地表温度,两种不同的垂直综合热含量测量,以及四种不同的垂直平均温度测量。一些指标已被用于研究热带气旋通过时的上层海洋能量响应,而另一些指标已被用于改进热带气旋强度预报模式。垂直积分海洋热含量已被美国热带气旋预报中心用于改善热带气旋强度预报,并且是几个业务强度预报模式的组成部分。一个静态的2005-2021年数据集,包括其中描述的所有12个指标,可在海军研究实验室网络服务器上获得,六个指标的子集已在舰队数值气象和海洋学中心实时生成,并自2021年以来通过GODAE服务器提供给公众。
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An Upper Ocean Thermal Field Metrics Dataset
The upper ocean provides a source of thermal energy for tropical cyclone development and maintenance through a series of complex interactions. In this work, we develop a seventeen-year dataset of upper ocean thermal field metrics for use in tropical cyclone studies and development of tropical cyclone intensity prediction models. These metrics include the surface temperature, two different measures of vertically integrated heat content, and four different measures of vertically averaged temperature. Some metrics have been used to study upper-ocean energy response to tropical cyclone passage, while others have been employed to improve operational tropical cyclone intensity prediction models. The vertically integrated ocean heat content has been used to improve tropical cyclone intensity forecasts at U.S. tropical cyclone forecast centers and is an integral part of several operational intensity forecast models. A static 2005–2021 dataset that includes all twelve metrics described within is available on the Naval Research Laboratory web server, and a subset of six metrics have been produced in real-time at Fleet Numerical Meteorology and Oceanography Center and provided to the public via the GODAE server since 2021.
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