A daily reconstructed chlorophyll-a dataset in the South China Sea from MODIS using OI-SwinUnet

IF 11.2 1区 地球科学 Q1 GEOSCIENCES, MULTIDISCIPLINARY Earth System Science Data Pub Date : 2024-07-04 DOI:10.5194/essd-16-3125-2024
Haibin Ye, Chaoyu Yang, Yuan Dong, Shilin Tang, Chuqun Chen
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Abstract

Abstract. Satellite remote sensing of sea surface chlorophyll products sometimes yields a significant amount of sporadic missing data due to various variables, such as weather conditions and operational failures of satellite sensors. The limited nature of satellite observation data impedes the utilization of satellite data in the domain of marine research. Hence, it is highly important to investigate techniques for reconstructing satellite remote sensing data to obtain spatially and temporally uninterrupted and comprehensive data within the desired area. This approach will expand the potential applications of remote sensing data and enhance the efficiency of data usage. To address this series of problems, based on the demand for research on the ecological effects of multiscale dynamic processes in the South China Sea, this paper combines the advantages of the optimal interpolation (OI) method and SwinUnet and successfully develops a deep-learning model based on the expected variance in data anomalies, called OI-SwinUnet. The OI-SwinUnet method was used to reconstruct the MODIS chlorophyll-a concentration products of the South China Sea from 2013 to 2017. When comparing the performances of the data-interpolating empirical orthogonal function (DINEOF), OI, and Unet approaches, it is evident that the OI-SwinUnet algorithm outperforms the other algorithms in terms of reconstruction. We conduct a reconstruction experiment using different artificial missing patterns to assess the resilience of OI-SwinUnet. Ultimately, the reconstructed dataset was utilized to examine the seasonal variations and geographical distribution of chlorophyll-a concentrations in various regions of the South China Sea. Additionally, the impact of the plume front on the dispersion of phytoplankton in upwelling areas was assessed. The potential use of reconstructed products to investigate the process by which individual mesoscale eddies affect sea surface chlorophyll is also examined. The reconstructed daily chlorophyll-a dataset is freely accessible at https://doi.org/10.5281/zenodo.10478524 (Ye et al., 2024).
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利用 OI-SwinUnet 从 MODIS 获取的南海每日叶绿素-a 重建数据集
摘要由于天气条件和卫星传感器运行故障等各种变量,海面叶绿素产品的卫星遥感有时会产生大量零星的缺失数据。卫星观测数据的有限性阻碍了海洋研究领域对卫星数据的利用。因此,研究重建卫星遥感数据的技术,以获得所需区域内空间和时间上不间断的综合数据,是非常重要的。这种方法将扩大遥感数据的潜在应用范围,并提高数据的使用效率。针对这一系列问题,基于南海多尺度动态过程生态效应研究的需求,本文结合最优插值(OI)方法和 SwinUnet 的优势,成功开发了基于数据异常预期方差的深度学习模型,称为 OI-SwinUnet。OI-SwinUnet方法被用于重建2013年至2017年中国南海的MODIS叶绿素-a浓度产品。在比较数据插值经验正交函数(DINEOF)、OI和Unet方法的性能时,OI-SwinUnet算法的重建效果明显优于其他算法。我们使用不同的人工缺失模式进行了重建实验,以评估 OI-SwinUnet 的复原能力。最后,我们利用重建的数据集研究了南海不同区域叶绿素-a 浓度的季节变化和地理分布。此外,还评估了羽流前沿对上升流地区浮游植物扩散的影响。此外,还研究了利用重建产品研究单个中尺度漩涡对海面叶绿素影响过程的可能性。重建的每日叶绿素-a 数据集可在 https://doi.org/10.5281/zenodo.10478524 免费获取(Ye 等,2024 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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