Gap-filling techniques applied to the GOCI-derived daily sea surface salinity product for the Changjiang diluted water front in the East China Sea

IF 11.2 1区 地球科学 Q1 GEOSCIENCES, MULTIDISCIPLINARY Earth System Science Data Pub Date : 2024-07-10 DOI:10.5194/essd-16-3193-2024
Jisun Shin, Dae-Won Kim, So-Hyun Kim, Gi Seop Lee, B. Khim, Young-Heon Jo
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Abstract

Abstract. The spatial and temporal resolutions of contemporary microwave-based sea surface salinity (SSS) measurements are insufficient. Thus, we developed a gap-free gridded daily SSS product with higher spatial and temporal resolutions, which can provide information on short-term variability in the East China Sea (ECS), such as the front changes by Changjiang diluted water (CDW). Specifically, we conducted gap-filling for daily SSS products based on the Geostationary Ocean Color Imager (GOCI) with a spatial resolution of 1 km (0.01°), using a machine learning approach during the summer seasons from 2015 to 2019. The comparison of the Soil Moisture Active Passive (SMAP), Copernicus Marine Environment Monitoring Service (CMEMS), and Hybrid Coordinate Ocean Model (HYCOM) SSS products with the GOCI-derived SSS over the entire SSS range showed that the SMAP SSS was highly consistent, whereas the HYCOM SSS was the least consistent. In the < 31 psu range, the SMAP SSS was still the most consistent with the GOCI-derived SSS (R2=0.46; root mean squared error: RMSE = 2.41 psu); in the > 31 psu range, the CMEMS and HYCOM SSS products showed similar levels of agreement with that of the SMAP SSS. We trained and tested three machine learning models – the fine trees, boosted trees, and bagged trees models – using the daily GOCI-derived SSS as output, including the three SSS products, environmental variables, and geographical data. We combined the three SSS products to construct input datasets for machine learning. Using the test dataset, the bagged trees model showed the best results (mean R2=0.98 and RMSE = 1.31 psu), and the models that used the SMAP SSS as input had the highest level. For the dataset in the > 31 psu range, all the models exhibited similarly reasonable performances (RMSE = 1.25–1.35 psu). The comparison with in situ SSS data, time series analysis, and the spatial SSS distribution derived from models showed that all the models had proper CDW distributions with reasonable RMSE levels (0.91–1.56 psu). In addition, the CDW front derived from the model gap-free daily SSS product clearly demonstrated the daily oceanic mechanism during the summer season in the ECS at a detailed spatial scale. Notably, the CDW front in the zonal direction, as captured by the Ieodo Ocean Research Station (I-ORS), moved approximately 3.04 km d−1 in 2016, which is very fast compared with the cases in other years. Our model yielded a gap-free gridded daily SSS product with reasonable accuracy and enabled the successful recognition of daily SSS fronts at the 1 km level, which was previously not possible with ocean color data. Such successful application of machine learning models can further provide useful information on the long-term variation of daily SSS in the ECS. The gridded gap-free SSS dataset at 0.01°×0.01° spatial resolution is freely available at https://doi.org/10.22808/DATA-2023-2 (Shin et al., 2023).
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应用于东海长江稀释水前沿 GOCI 衍生日海面盐度产品的差距填补技术
摘要当代基于微波的海表盐度(SSS)测量的时空分辨率不足。因此,我们开发了一种时空分辨率更高的无间隙网格化日 SSS 产品,该产品可提供东海(ECS)的短期变化信息,如长江稀释水(CDW)的前沿变化。具体而言,我们在2015年至2019年的夏季采用机器学习方法对基于地球静止海洋颜色成像仪(GOCI)的空间分辨率为1千米(0.01°)的日SSS产品进行了差距填补。将土壤水分主动被动式(SMAP)、哥白尼海洋环境监测服务(CMEMS)和混合坐标海洋模式(HYCOM)的SSS产品与GOCI得出的SSS在整个SSS范围内进行比较后发现,SMAP的SSS高度一致,而HYCOM的SSS最不一致。在 31 psu 范围内,CMEMS 和 HYCOM SSS 产品与 SMAP SSS 的一致性水平相似。我们使用每日 GOCI 导出的 SSS 作为输出,包括三种 SSS 产品、环境变量和地理数据,训练和测试了三种机器学习模型--精细树模型、增强树模型和袋装树模型。我们将三种 SSS 产品结合起来,构建机器学习的输入数据集。使用测试数据集,袋装树模型显示出最佳结果(平均 R2=0.98 和 RMSE = 1.31 psu),使用 SMAP SSS 作为输入的模型水平最高。对于 >31 psu 范围内的数据集,所有模型都表现出类似的合理性能(RMSE = 1.25-1.35 psu)。与原位 SSS 数据、时间序列分析和模型得出的空间 SSS 分布的比较表明,所有模型的 CDW 分布合理,均方差均方根误差水平合理(0.91-1.56 psu)。此外,从模式无间隙日 SSS 产品推导出的 CDW 锋面在详细的空间尺度上清楚地展示了夏季 ECS 的日海洋机制。值得注意的是,2016 年伊江户海洋研究站(I-ORS)捕捉到的带状 CDW 锋面移动约为 3.04 km d-1,与其他年份相比速度非常快。我们的模型以合理的精度生成了无间隙的网格化日 SSS 产品,并成功识别了 1 千米级别的日 SSS 锋面,这在以前的海洋颜色数据中是不可能实现的。机器学习模型的成功应用可进一步提供有关 ECS 日 SSS 长期变化的有用信息。空间分辨率为 0.01°×0.01°的网格化无间隙 SSS 数据集可在 https://doi.org/10.22808/DATA-2023-2 上免费获取(Shin 等,2023 年)。
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来源期刊
Earth System Science Data
Earth System Science Data GEOSCIENCES, MULTIDISCIPLINARYMETEOROLOGY-METEOROLOGY & ATMOSPHERIC SCIENCES
CiteScore
18.00
自引率
5.30%
发文量
231
审稿时长
35 weeks
期刊介绍: Earth System Science Data (ESSD) is an international, interdisciplinary journal that publishes articles on original research data in order to promote the reuse of high-quality data in the field of Earth system sciences. The journal welcomes submissions of original data or data collections that meet the required quality standards and have the potential to contribute to the goals of the journal. It includes sections dedicated to regular-length articles, brief communications (such as updates to existing data sets), commentaries, review articles, and special issues. ESSD is abstracted and indexed in several databases, including Science Citation Index Expanded, Current Contents/PCE, Scopus, ADS, CLOCKSS, CNKI, DOAJ, EBSCO, Gale/Cengage, GoOA (CAS), and Google Scholar, among others.
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