Jin Bora, Herring Amy H, Dunson David
Department of Biostatistics, Johns Hopkins University.
Department of Statistical Science, Duke University.
Ann Appl Stat. 2024 Jun;18(2):1596-1617. doi: 10.1214/23-aoas1850. Epub 2024 Apr 5.
In this paper we predict sea surface salinity (SSS) in the Arctic Ocean based on satellite measurements. SSS is a crucial indicator for ongoing changes in the Arctic Ocean and can offer important insights about climate change. We particularly focus on areas of water mistakenly flagged as ice by satellite algorithms. To remove bias in the retrieval of salinity near sea ice, the algorithms use conservative ice masks, which result in considerable loss of data. We aim to produce realistic SSS values for such regions to obtain more complete understanding about the SSS surface over the Arctic Ocean and benefit future applications that may require SSS measurements near edges of sea ice or coasts. We propose a class of scalable nonstationary processes that can handle large data from satellite products and complex geometries of the Arctic Ocean. Barrier overlap-removal acyclic directed graph GP (BORA-GP) constructs sparse directed acyclic graphs (DAGs) with neighbors conforming to barriers and boundaries, enabling characterization of dependence in constrained domains. The BORA-GP models produce more sensible SSS values in regions without satellite measurements and show improved performance in various constrained domains in simulation studies compared to state-of-the-art alternatives. An R package is available at https://github.com/jinbora0720/boraGP.
在本文中,我们基于卫星测量数据预测北冰洋的海表面盐度(SSS)。海表面盐度是北冰洋当前变化的关键指标,能够为气候变化提供重要见解。我们特别关注那些被卫星算法误判为冰的水域区域。为了消除海冰附近盐度反演中的偏差,这些算法使用了保守的冰掩码,这导致了大量的数据丢失。我们旨在为这些区域生成逼真的海表面盐度值,以便更全面地了解北冰洋的海表面盐度情况,并惠及未来可能需要在海冰边缘或海岸附近进行海表面盐度测量的应用。我们提出了一类可扩展的非平稳过程,该过程能够处理来自卫星产品的大数据以及北冰洋复杂的几何形状。屏障重叠消除无环有向图高斯过程(BORA - GP)构建稀疏有向无环图(DAG),其邻域符合屏障和边界条件,从而能够刻画受限域中的依赖性。与现有最佳替代方法相比,BORA - GP模型在没有卫星测量的区域生成了更合理的海表面盐度值,并且在各种受限域的模拟研究中表现出了更好的性能。可通过https://github.com/jinbora0720/boraGP获取一个R包。