School of Mathematics and Physics, Qingdao University of Science and Technology, Qingdao 266061, China.
CAS Key Laboratory of Ocean Circulation and Waves, Institute of Oceanology, Chinese Academy of Sciences, Qingdao 266071, China.
Sensors (Basel). 2022 Jul 26;22(15):5600. doi: 10.3390/s22155600.
The effective estimation of mixed-layer depth (MLD) plays a significant role in the study of ocean dynamics and global climate change. However, the methods of estimating MLD still have limitations due to the sparse resolution of the observed data. In this study, a hybrid estimation method that combines the K-means clustering algorithm and an artificial neural network (ANN) model was developed using sea-surface parameter data in the Indian Ocean as a case study. The oceanic datasets from January 2012 to December 2019 were obtained via satellite observations, Argo in situ data, and reanalysis data. These datasets were unified to the same spatial and temporal resolution (1° × 1°, monthly). Based on the processed datasets, the K-means classifier was applied to divide the Indian Ocean into four regions with different characteristics. For ANN training and testing in each region, the gridded data of 84 months were used for training, and 12-month data were used for testing. The ANN results show that the optimized NN architecture comprises five input variables, one output variable, and four hidden layers, each of which has 40 neurons. Compared with the multiple linear regression model (MLR) with a root-mean-square error (RMSE) of 5.2248 m and the HYbrid-Coordinate Ocean Model (HYCOM) with an RMSE of 4.8422 m, the RMSE of the model proposed in this study was reduced by 27% and 22%, respectively. Three typical regions with high variability in their MLDs were selected to further evaluate the performance of the ANN model. Our results showed that the model could reveal the seasonal variation trend in each of the selected regions, but the estimation accuracy showed room for improvement. Furthermore, a correlation analysis between the MLD and input variables showed that the surface temperature and salinity were the main influencing factors of the model. The results of this study suggest that the pre-clustering ANN method proposed could be used to estimate and analyze the MLD in the Indian Ocean. Moreover, this method can be further expanded to estimate other internal parameters for typical ocean regions and to provide effective technical support for ocean researchers when studying the variability of these parameters.
混合层深度(MLD)的有效估计在海洋动力学和全球气候变化研究中具有重要作用。然而,由于观测数据的分辨率稀疏,估计 MLD 的方法仍然存在局限性。本研究以印度洋海表参数数据为例,开发了一种将 K-means 聚类算法与人工神经网络(ANN)模型相结合的混合估计方法。利用卫星观测、Argo 现场数据和再分析数据获取了 2012 年 1 月至 2019 年 12 月的海洋数据集。这些数据集被统一到相同的时空分辨率(1°×1°,每月)。基于处理后的数据,应用 K-means 分类器将印度洋分为四个具有不同特征的区域。对于每个区域的 ANN 训练和测试,使用 84 个月的网格化数据进行训练,使用 12 个月的数据进行测试。ANN 结果表明,优化的神经网络结构由五个输入变量、一个输出变量和四个隐藏层组成,每个隐藏层有 40 个神经元。与均方根误差(RMSE)为 5.2248m 的多元线性回归模型(MLR)和 RMSE 为 4.8422m 的 HYbrid-Coordinate Ocean Model(HYCOM)相比,本研究提出的模型的 RMSE 分别降低了 27%和 22%。选择三个 MLD 变化较大的典型区域进一步评估 ANN 模型的性能。结果表明,该模型能够揭示所选区域的季节性变化趋势,但估计精度仍有改进空间。此外,MLD 与输入变量的相关分析表明,海面温度和盐度是模型的主要影响因素。研究结果表明,所提出的预聚类 ANN 方法可用于估计和分析印度洋的 MLD。此外,该方法可以进一步扩展到估计典型海洋区域的其他内部参数,为海洋研究人员研究这些参数的变化提供有效的技术支持。