从海洋再分析产品评估北印度洋海面温度

IF 4.6 Q2 MATERIALS SCIENCE, BIOMATERIALS
Raheema Rahman, Hasibur Rahaman
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引用次数: 0

摘要

海洋和海冰再分析(ORAs 或 ocean syntheses)是通过数据同化方法,利用受大气表面强迫和海洋观测数据制约的海洋模式集成,重建海洋和海冰状态。海洋再分析是监测和了解深海长期海洋变化的重要工具,主要是因为这部分海洋在很大程度上仍未被观测到。海面温度(SST)是在不同时间尺度上驱动海气相互作用过程的关键变量。尽管模式和再分析方案有所改进,但海洋再分析在与独立观测数据进行评估时仍存在误差。对印度洋海洋再分析得出的 SST 进行的独立评估研究非常有限。在这项研究中,我们评估了 10 种再分析产品(ECCO、BRAN、SODA、NCEP-GODAS、GODAS-MOM4p1、ORAS5、CGLORS、GLORYS2V4、GLOSEA 和 GREP)和 5 种合成观测产品(COBE、ERSST、OISST、OSTIA 和 HadISST),以及 2012-2017 年阿拉伯海和孟加拉湾纯观测产品 AMSR2 和 12 个原位浮标观测数据(OMNI)。尽管再分析和观测产品在开阔海域表现非常出色,但在海岸和岛屿附近表现较差。再分析产品的性能相对优于大多数观测产品。在北印度洋的合成观测产品中,COBE 和 OISST 表现较好。在再分析产品中,GODAS-MOM4p1 和 GREP 性能最好,经常超过观测产品。ECCO 在孟加拉湾的表现较差,偏差较大。比较孟加拉湾的日海温和月海温,再分析的月海温性能优于日时间尺度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Evaluation of sea surface temperature from ocean reanalysis products over the North Indian Ocean
Ocean and sea ice reanalyses (ORAs or ocean syntheses) are reconstructions of the ocean and sea ice states using an ocean model integration constrained by atmospheric surface forcing and ocean observations via a data assimilation method. Ocean reanalyses are a valuable tool for monitoring and understanding long-term ocean variability at depth, mainly because this part of the ocean is still largely unobserved. Sea surface temperature (SST) is the key variable that drives the air–sea interaction process on different time scales. Despite improvements in model and reanalysis schemes, ocean reanalyses show errors when evaluated with independent observations. The independent evaluation studies of SST from ocean reanalysis over the Indian Ocean are limited. In this study, we evaluated the SST from 10 reanalysis products (ECCO, BRAN, SODA, NCEP-GODAS, GODAS-MOM4p1, ORAS5, CGLORS, GLORYS2V4, GLOSEA, and GREP) and five synthetic observation products (COBE, ERSST, OISST, OSTIA, and HadISST) and from the pure observation-based product AMSR2 for 2012–2017 with 12 in-situ buoy observations (OMNI) over the Arabian Sea and Bay of Bengal. Even though the reanalysis and observational products perform very well in the open ocean, the performance is poorer near the coast and islands. The reanalysis products perform comparatively better than most of the observational products. COBE and OISST perform better among the synthetic observational products in the northern Indian Ocean. GODAS-MOM4p1 and GREP performs best among the reanalysis products, often surpassing the observational products. ECCO shows poorer performance and higher bias in the Bay of Bengal. Comparing the BRAN daily and monthly SST, the monthly SST performance of reanalysis is better than the daily time scale.
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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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