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基于梯度依赖OI的全球多参数Argo数据集的构建与验证
作者:王丹阳1  张春玲1 2  卢少磊3 4  李兆钦3 4  刘增宏3 4 
单位:1. 上海海洋大学 海洋科学学院, 上海 201306;
2. 自然资源部海洋生态监测与修复技术重点实验室, 上海 201306;
3. 自然资源部第二海洋研究所, 浙江 杭州 310012;
4. 卫星海洋环境动力学国家重点实验室, 浙江 杭州 310012
关键词:梯度依赖最优插值 Argo 多参数 网格化数据集 客观分析 
分类号:P715.2
出版年·卷·期(页码):2023·40·第二期(77-88)
摘要:
利用Argo资料,基于梯度依赖最优插值客观分析系统,重构2004—2020年空间分辨率为1°×1°的全球多参数Argo网格化数据集,并通过置信区间估计、实测数据检验、与其他数据集对比等方式,对该数据集进行一系列的验证。结果表明:重构的Argo数据集在95%的统计概率下,90%以上的温度、盐度重构结果可信,且与实测数据的温度、盐度最大偏差不超过±1.0℃、±0.02。该数据集所反映的大尺度信号与现有数据集一致,并且可以保留较多中小尺度信号,分析结果与实际观测更接近。
Based on the gradient-dependent optimal interpolation objective analysis system, only, a global multiparameter Argo gridded dataset with a spatial resolution of 1°×1° from 2004 to 2020 is constructed using the Argo observation in this paper. A series of validations are made for this dataset including confidence interval estimation, observation inspection and comparison with other datasets. The results show that more than 90% of the reconstructed temperature and salinity are reliable under the statistical probability of 95% with the maximum bias from observations are less than ±1.0℃ and ±0.02, respectively. The large-scale signals reflected in this dataset are consistent with the existing datasets, and more small and medium-scale signals can be retained. The analysis results are closer to the observations.
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